Data-Driven Technologies for Energy Optimization in Smart Buildings: A Scoping Review
Abstract
:1. Introduction
- Synthesize current research on data-driven technologies for energy optimization in smart buildings.
- Identify the factors influencing the adoption of these technologies.
- Examine supporting business models that facilitate their implementation.
- Energy Management Systems: emphasize energy-saving, optimization, and control mechanisms.
- Building Energy Efficiency: implement strategies for enhancing energy performance.
- User Behavior and Social Factors: emphasize the influence of occupant behavior on energy use.
- Data-Driven Approaches: employ the use of advanced analytics and AI for predictive insights.
- Renewable Energy and Smart Grids: integrate renewables and smart grid interactions.
2. Background
Buildings | Sub-Type | References |
---|---|---|
Advanced Buildings | Cognitive buildings | [36] |
Smart buildings Smart homes | [1,37,38,39,40,41,42,43,44,45,46,47,48,49,50,51,52,53,54,55] | |
Residential Buildings | Home or house | [16,17,18,19,20,21,22] |
Multi-dwelling buildings | [23] | |
Home-based small businesses | [25] | |
Passive house | [24] | |
Flats or apartments | [17] | |
Commercial Buildings | Offices | [15,17,26,27,28,29] |
University, campus or school | [3,7,17,30,31] | |
Public or government buildings | [32,33] | |
Library buildings | [8] | |
Research and development building | [34] | |
Airport | [28] | |
Hotels | [17,28] | |
Banks | [17] | |
Restaurants | [17] | |
Hospitals | [17] | |
Retail shops | [15] | |
Industrial Buildings | Data center | [35] |
Warehouse | [14] |
3. Materials and Methods
3.1. Protocol and Registration
3.2. Eligibility Criteria
3.3. Information Sources
3.4. Search Strategy
3.5. Study Selection
3.6. Data Charting, Management, and Items
3.7. Data Synthesis
4. Fundamental Technologies and System Integration in Smart Buildings
4.1. Data-Driven Technologies in Smart Buildings
4.1.1. Big Data Analytics
4.1.2. Artificial Intelligence and Machine Learning
- Artificial Neural Networks (ANNs) and Deep Learning: ANNs and Deep Learning models, such as Deep Neural Networks (DNNs) and Deep Reinforcement Learning, are applied for complex pattern recognition and predictive analytics in energy management.
- Deep Neural Networks (DNNs): DNNs build on ANNs by incorporating multiple hidden layers and enabling the modeling of complex patterns and relationships in high-dimensional datasets. They are especially effective for advanced applications like image recognition, non-linear energy demand forecasting, and natural language processing [2,41,52,67].
4.1.3. Internet of Things (IoT) and Wireless Sensor Networks
- By integrating IoT and WSN technologies, smart buildings can achieve enhanced operational efficiency, improved occupant comfort, and reduced energy consumption through data-driven decision-making and automation.
4.1.4. Edge and Cloud Computing
4.1.5. Blockchain Technologies
4.1.6. Digital Twin Technologies
- Real-Time Monitoring: this provides a comprehensive view of building systems’ status, allowing the immediate detection of issues and informed decision-making [62,66]. Methodologies for real-time monitoring often leverage IoT sensors and data acquisition tools to feed accurate and continuous updates into Digital Twin platforms, ensuring up-to-date system representations.
- Predictive Maintenance: data analytics are utilized to predict equipment failures or maintenance needs, reducing downtime and maintenance costs [66]. Machine Learning algorithms such as Long Short-Term Memory (LSTM) networks or ARIMA models are commonly used for forecasting failures, enabling proactive interventions.
- Optimization of Building Performance: Different scenarios are simulated to improve energy efficiency, occupant comfort, and operational strategies [62]. Simulation tools, such as MATLAB Simulink or EnergyPlus, are often integrated with Digital Twins to test and refine system responses under varying conditions.
4.1.7. Information Systems and Geographic Information Systems (GIS)
- Energy Distribution Management: energy distribution networks are managed by performing real-time monitoring, maintenance, and outage response [19]. Advanced GIS platforms integrate real-time sensor data with spatial models to enhance the accuracy of monitoring and facilitate automated responses during outages.
- Energy Consumption Mapping: visual representations are created of energy consumption across buildings or regions, facilitating the identification of high-consumption areas and opportunities for efficiency improvements [32,67]. These visualizations often rely on heatmaps or choropleth maps generated through tools like ArcGIS, which allow for the easy identification of energy usage patterns.
- Solar Energy Potential Analysis: the solar energy that rooftops can capture is estimated while considering shading effects from nearby structures [67]. Methodologies for this analysis frequently include 3D-GIS modeling and LiDAR-based data integration to enhance accuracy.
4.2. Energy Resources and Systems in Smart Buildings
4.2.1. Renewable Energy Resources and Technologies
- Solar Thermal Systems with Storage: These systems capture solar energy for heating applications, such as water heating and space heating. Incorporating thermal storage allows excess heat to be stored for use during periods without sunlight, enhancing energy availability and efficiency [24].
- Ground-Source Heat Pump (GSHP) Systems: GSHPs utilize the stable temperatures beneath the Earth’s surface to provide heating and cooling for buildings. By exchanging heat with the ground, these systems offer higher efficiency compared to traditional HVAC systems [24].
- Mechanical Ventilation with Heat Recovery (MVHR): MVHR systems improve energy efficiency by recovering heat from outgoing stale air and transferring it to incoming fresh air. This process reduces the energy required for heating or cooling incoming air, enhancing indoor air quality and comfort [24].
4.2.2. Energy Management and Automation Systems
Home Energy Management and Monitoring Systems
Building Energy Management and Monitoring Systems
Smart and Automated Systems for Homes and Offices
Specialized Control and Data Management Systems
4.2.3. Energy Modeling and Fault Detection
Building Energy Modeling and Simulation
- EnergyPlus
- ○
- Conduction Transfer Function (CTF) Method for Opaque Walls and Roofs: by default, EnergyPlus uses a CTF-based approach for most conventional building envelopes (walls and roofs). This method balances computational speed with acceptable accuracy for standard construction materials.
- ○
- Finite Difference Method (FDM) for Advanced Materials: for walls or roofs incorporating complex materials (e.g., Phase Change Materials), EnergyPlus employs an FDM approach, allowing a more detailed layer-by-layer temperature profile.
- ○
- Moisture Transfer and Room Air: some EnergyPlus modules incorporate additional solvers for moisture transfer within walls. Meanwhile, room air (zone) temperature is solved with iterative heat balance methods that couple radiative and convective processes in the zone air.
- TRNSYS
- ○
- Differential-Algebraic Equation (DAE)-Based Approach with Modular Components: TRNSYS is known for its DAE-solving capabilities and its flexible, modular setup. However, for building simulations, TRNSYS employs specific approaches for each component, including the walls and zone air.
- ○
- Component-Level Solvers for Walls: each wall, roof, or other envelope component (often referred to as a “Type” in TRNSYS) has its own solver strategy to handle heat conduction and sometimes mass transfer.
- ○
- Room/Zone Air: the zone temperature is updated using a separate solver that couples convective, radiative, and (if necessary) latent (moisture) heat flows at the zone boundary.
- ○
- Renewable or Specialized Systems: while TRNSYS can simultaneously solve renewable energy systems (e.g., solar thermal) in the same simulation environment, this flexibility lies outside the scope of the wall, roof, and room-air solvers discussed here.
- DesignBuilder: this provides a user-friendly interface for EnergyPlus, supporting parametric analyses to optimize energy performance.
- OpenStudio: this integrates with EnergyPlus and enables advanced customizations of simulation parameters for specialized projects.
- IDA ICE: this focuses on indoor climate and energy analysis, using modular simulations and advanced equation solvers for precise calculations.
- IES VE: this combines 3D modeling with dynamic simulations, supporting detailed environmental and energy assessments.
Fault Detection and Diagnosis (FDD)
- Supervised Learning involves training models on labeled datasets where known fault patterns are identified. The model learns to recognize these patterns and can detect similar faults in new, unlabeled data.
- Unsupervised Learning does not require labeled data. Instead, the algorithm identifies normal operational patterns and flags any deviations from these patterns as potential anomalies, making it effective for detecting new or unexpected faults.
- Semi-Supervised Learning combines elements of both supervised and Unsupervised Learning. It utilizes a small amount of labeled data along with a larger set of unlabeled data to improve detection accuracy, especially when labeled data are scarce.
- Energy Efficiency: By identifying and correcting inefficiencies, FDD systems reduce unnecessary energy consumption and lower operational costs. Detecting faults early prevents the wastage of energy that occurs when systems operate sub-optimally.
- System Reliability: The early detection of faults prevents minor issues from escalating into major equipment failures. This proactive approach extends the lifespan of building systems and minimizes disruptions to building operations.
- Occupant Comfort: Maintaining optimal system performance ensures that indoor environmental conditions remain within the desired comfort levels. Effective FDD contributes to consistent temperature control, air quality, and lighting, enhancing occupant satisfaction.
5. Influential Factors for the Adoption and Business Models of Data-Driven Technologies
5.1. Factors Influencing the Adoption of Data-Driven Technologies
5.1.1. Social Factors
5.1.2. Individual Perceptions
5.1.3. Cost Considerations
5.1.4. Security and Privacy Concerns
5.1.5. Data Quality and Relevance
5.2. Business Models Supporting the Adoption of Data-Driven Technologies
5.2.1. Case Studies of Business Models
- AI in Energy Conservation for Government Buildings
- AI-Enabled Platform Business Models in Smart Buildings
- IoT-Driven Business Models for Smart Building Management Systems
5.2.2. Analysis of Business Model Components
5.2.3. Implications for Adoption
6. Discussion
6.1. Key Findings
6.2. Implications for the Smart Building Industry
- Enhanced Energy Efficiency and Sustainability: Integrating advanced technologies enables buildings to consume energy more efficiently, reduce greenhouse gas emissions, and contribute to sustainability goals. Renewable energy integration and intelligent management systems support the transition to low-carbon buildings.
- Improved Operational Performance: Real-time monitoring, predictive analytics, and automated control systems enhance operational efficiency. Facility managers can make informed decisions, anticipate maintenance needs, and respond proactively to issues, reducing downtime and operational costs.
- Occupant Comfort and Well-being: Personalized and adaptive environments enhance occupant satisfaction. Technologies that adjust to user preferences and environmental conditions improve comfort and productivity, making buildings desirable spaces.
- Market Competitiveness: Buildings equipped with advanced technologies may have a competitive edge in the real estate market. Energy-efficient and intelligent buildings can attract tenants and buyers who prioritize sustainability and technological sophistication.
- Data-Driven Decision-Making: The abundance of data generated facilitates evidence-based decisions in building design, operation, and policymaking. Stakeholders can leverage insights to optimize resource allocation and strategic planning.
6.3. Challenges and Limitations
- Cost Barriers: High initial investment costs for technology implementation and upgrades can deter stakeholders. Return on investment may not be immediately apparent, especially when retrofitting existing buildings.
- Technical Complexity and Integration: Integrating diverse technologies requires technical expertise and may face interoperability issues. Legacy systems might not be compatible with new technologies, necessitating significant modifications.
- Security and Privacy Risks: Increased connectivity and data exchange expose buildings to cybersecurity threats. Ensuring robust security measures and addressing privacy concerns are paramount to maintaining trust among users.
- Data Quality and Management: Reliable operation depends on accurate and high-quality data. Challenges include sensor accuracy, data processing capabilities, and managing large volumes of data effectively.
- User Acceptance and Behavior: Social factors and individual perceptions influence adoption. Resistance to change, a lack of awareness, or negative attitudes toward technology can impede implementation.
- Regulatory and Standardization Issues: The absence of standardized protocols and regulations can create uncertainties. Compliance with varying regional regulations adds complexity to implementation.
6.4. Future Research Directions
- Cost Reduction Strategies: Studies should investigate ways to lower the costs of technology adoption, such as scalable solutions, modular designs, and leveraging economies of scale. Research into financing models and incentives can also facilitate adoption.
- Interoperability and Standardization: Studies should develop standardized protocols and frameworks that enable the seamless integration of diverse technologies. Collaboration among industry stakeholders can promote interoperability.
- Enhanced Security Measures: Studies should advance cybersecurity solutions tailored for smart buildings, including encryption methods, intrusion detection systems, and secure communication protocols. Research into privacy-preserving data analytics can mitigate privacy concerns.
- Data Management and Analytics: Studies should improve data processing algorithms and storage solutions to handle big data efficiently. This includes emphasizing the development of AI and ML models that can operate with limited or imperfect data.
- User-Centric Design: Studies should incorporate user preferences and behaviors into technology design and conduct studies on user engagement strategies, training programs, and interfaces that enhance usability and acceptance.
- Policy and Regulatory Frameworks: Researchers should engage with policymakers to establish regulations that support technological innovation while protecting user interests. Research into the impact of regulations on the adoption of technology can inform policy development.
- Longitudinal Studies on Impact: Long-term studies should be conducted to assess the actual impact of data-driven technologies on energy consumption, operational costs, and occupant satisfaction. Empirical evidence can validate the benefits and guide future implementation.
- Value Proposition Refinement: Studies should clearly articulate the benefits of technologies to different stakeholders. Value propositions can also be tailored to address specific needs and concerns, such as cost savings for building owners or enhanced comfort for occupants.
- Collaborative Ecosystems: Partnerships among technology providers should be fostered among building managers, researchers, and policymakers. Collaborative ecosystems can facilitate resource sharing, innovation, and market penetration.
- Flexible and Scalable Models: Business models should be developed that can adapt to changing technological landscapes and market conditions. Flexibility in offerings and scalability of solutions can cater to a broader range of customers.
- Emphasis on User Experience: User experience should be prioritized in service delivery. Providing seamless interfaces, responsive customer support, and continuous updates can enhance customer relationships and loyalty.
- Transparent Cost Structures and ROI: Clear information should be offered on costs and expected returns. Demonstrating tangible benefits and payback periods can alleviate financial concerns and justify investments.
7. Conclusions
Author Contributions
Funding
Acknowledgments
Conflicts of Interest
Appendix A
Article Title | Ref. | Energy Aspect Elements | Building Aspect Elements | Data and AI Aspect Elements |
---|---|---|---|---|
Smart Building Skins for Urban Heat Island Mitigation: A Review | [95] | Energy efficiency | Building in general | N/A |
Smart Home Energy Management Systems: A Systematic Review of Architecture, Communication, and Algorithmic Trends | [96] | Energy Management system; Energy consumption; Energy efficiency | Residential building | Internet of Things; Machine Learning; AI |
Examining Energy Efficiency Practices in Office Buildings through the Lens of LEED, BREEAM, and DGNB Certifications | [97] | Energy efficiency | Commercial building (Office buildings) | N/A |
An overview of reinforcement learning-based approaches for smart home energy management systems with energy storages | [98] | Energy Management system; Energy consumption; Energy efficiency | Residential building | Machine Learning (Reinforcement Learning); AI |
Application of Deep Learning and Intelligent Sensing Analysis in Smart Home | [99] | Energy efficiency (implied) | Residential building | Artificial Intelligence; Machine Learning; Sensor network |
Systematic review on capacity building through renewable energy enabled IoT-unmanned aerial vehicle for smart agroforestry | [76] | Renewable energy | Not directly related to buildings | Internet of Things |
Smart home energy management systems in India: a socio-economic commitment towards a green future | [77] | Energy Management system; Energy efficiency | Residential building | N/A |
Optimizing building energy consumption in office buildings: A review of building automation and control systems and factors influencing energy savings | [100] | Energy consumption; Energy efficiency; Energy Management system | Commercial building (Office buildings) | N/A |
General Overview and Proof of Concept of a Smart Home Energy Management System Architecture | [101] | Energy Management system; Energy consumption | Residential building | Internet of Things |
A review of data-driven smart building-integrated photovoltaic systems: Challenges and objectives | [102] | Renewable energy; Energy efficiency | Building in general | Big data; Artificial Intelligence; Digital Twin and simulation |
A review on adaptive thermal comfort of office building for energy-saving building design | [103] | Energy efficiency; Energy consumption | Commercial building (Office buildings) | N/A |
A review of non-residential building renovation and improvement of energy efficiency: Office buildings in Finland, Sweden, Norway, Denmark, and Germany | [104] | Energy efficiency | Commercial building (Office buildings) | N/A |
Energy Efficiency Improvement and Strategies in Malaysian Office Buildings (Tropical Climate): A Review | [63] | Energy efficiency | Commercial building (Office buildings) | N/A |
A survey of smart home energy conservation techniques | [105] | Energy consumption; Energy efficiency; Energy Management system | Residential building | Internet of Things; Artificial Intelligence |
Building Occupants, Their Behavior and the Resulting Impact on Energy Use in Campus Buildings: A Literature Review with Focus on Smart Building Systems | [106] | Energy consumption; Energy efficiency | Building in general; Commercial buildings | N/A |
Artificial Intelligence Based Smart Home Energy Management System: A Review | [107] | Energy Management system; Energy efficiency | Residential building | Artificial Intelligence |
Performance and energy optimization of building automation and management systems: Towards smart sustainable carbon-neutral sports facilities | [108] | Energy efficiency; Energy Management system | Commercial building (Sports facilities) | N/A |
Smart home tracking: A smart home architecture for smart energy consumption in a residence with multiple users | [109] | Energy consumption; Energy Management system | Residential building | Internet of Things; Information system |
Closed-loop home energy management system with renewable energy sources in a smart grid: A comprehensive review | [110] | Energy Management system; Renewable energy; Smart grid integration | Residential building | N/A |
A review of deep reinforcement learning for smart building energy management | [111] | Energy Management system; Energy efficiency | Building in general | Machine Learning (Deep Reinforcement Learning); Artificial Intelligence |
Smart home energy management: state of the art | [112] | Energy Management system; Energy efficiency | Residential building | Internet of Things; Artificial Intelligence |
Geothermal energy R&D: an overview of the US Department of Energy’s geothermal technologies office | [113] | Renewable energy | Not specifically building-related | N/A |
Smart Home Energy Management Systems in Internet of Things networks for green cities demands and services | [114] | Energy Management system; Energy efficiency | Residential building | Internet of Things |
Systematic mapping study on energy optimization solutions in smart building structure: Opportunities and challenges | [115] | Energy efficiency; Energy consumption | Building in general | Internet of Things; Artificial Intelligence |
Coordination of smart home energy management systems in neighborhood areas: A systematic review | [116] | Energy Management system; Energy efficiency | Residential building | Internet of Things; Information system |
A review on intelligent process for smart home applications based on IoT: coherent taxonomy, motivation, open challenges, and recommendations | [117] | Energy efficiency (implied) | Residential building | Internet of Things; Artificial Intelligence |
Home energy management system concepts, configurations, and technologies for the smart grid | [118] | Energy Management system; Smart grid integration | Residential building | Internet of Things |
Analysing Smart-Home Energy Management under the Aspects of Organic Computing | [119] | Energy Management system; Energy efficiency | Residential building | Artificial Intelligence |
An overview of the building energy management system considering the demand response programs, smart strategies and smart grid | [120] | Energy Management system; Energy efficiency; Smart grid integration | Building in general | N/A |
Review on design strategies of energy saving office building with evaporative cooling in tropical region | [121] | Energy efficiency | Commercial building (Office buildings) | N/A |
Atria, Roof-space Solar Collectors and Windows for Low-energy New and Renovated Office Buildings: a Review | [122] | Energy efficiency; Renewable energy | Commercial building (Office buildings) | N/A |
Of impacts, agents, and functions: An interdisciplinary meta-review of smart home energy management systems research | [123] | Energy Management system; Energy efficiency | Residential building | N/A |
Smart Home Energy Management-the Future of Energy Conservation: A Review | [124] | Energy Management system; Energy efficiency | Residential building | Internet of Things |
Appendix B
Appendix B.1. Search Strategy
- Keyword Selection: keywords reflected the review’s focus areas, such as “smart buildings”, “energy optimization”, “Big Data”, “Artificial Intelligence”, and “adoption barriers.”
- Boolean Operators: logical operators (e.g., AND, OR) were used to create structured and efficient search strings.
- Filters: language- (English) and document-type (journal articles and conference papers) filters were applied to ensure relevance and manageability.
- Database Syntax Adaptation: search strings were adapted to meet the requirements and functionalities of each database.
Appendix B.2. Study Selection
- (1)
- Identification
- (2)
- Screening
- (3)
- Eligibility Assessment
- (4)
- Final Inclusion:
- (5)
- Reviewer Consensus:
Inclusion Criteria | Exclusion Criteria |
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Appendix B.3. Data Charting, Management, and Items
- Study focus: the main topics and objectives of the study were identified, such as specific data-driven technologies implemented in smart buildings, energy optimization strategies, or aspects of business models and adoption factors.
- Methodology: the research design and methods used were documented during the study, including data collection techniques (e.g., experiments, simulations, case studies, surveys), analytical approaches, and any models or frameworks applied.
- Key findings: the principal results, conclusions, and recommendations were extracted relating to data-driven technologies, energy optimization, business models, and influential factors affecting their adoption in smart buildings.
Stage | Details |
Development of the Data Charting Form |
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Reviewer Preparation |
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Charting Process |
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Iterative Refinement |
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Data Management |
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Quality Assurance |
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Category | Sub-Category | Details |
---|---|---|
Study Characteristics | Publication Details | Author(s), year of publication, and journal or conference title. |
Type of Study | Classification of studies as review articles or primary research papers. | |
Geographical Context | The region or country where the study was conducted or focused. | |
Focus of the Study | Targeted Building Types | Categorization of buildings (e.g., residential, commercial, industrial). |
Data-Driven Technologies | Types of technologies: the types of technologies discussed (e.g., big data analytics, Artificial Intelligence, Internet of Things, Digital Twins). | |
Integration approaches: integration approaches and specific use cases in smart building systems. | ||
Adoption Factors | Influencing factors: social, technical, and economic factors influencing the adoption of data-driven technologies. | |
Barriers: the identification of barriers (e.g., high costs, security concerns, technical complexities). | ||
Key Findings | Principal Results | Principal results and conclusions, including the observed benefits and limitations of data-driven technologies in energy optimization. |
Research Gaps | Highlighted research gaps and future directions. | |
Methodological Details | Research Design | Research design and methods (e.g., case studies, experiments, or surveys). |
Analytical Frameworks | Analytical frameworks and the models employed. |
Appendix C
Title | Ref. | Energy Aspect Elements | Building Aspect Elements | Data and AI Aspect Elements |
---|---|---|---|---|
Effective power utilization and conservation in smart homes using IoT | [1] | Energy consumption; Energy cost or saving; Energy efficiency | Residential building | Internet of Things |
Anomaly Detection of Energy Consumption in Cloud Computing and Buildings Using Artificial Intelligence as a Tool of Sustainability: A Systematic Review of Current Trends, Applications, and Challenges | [2] | Energy consumption; Fault detection and diagnosis; Energy efficiency | Building in general | Artificial Intelligence; Cloud Computing; Machine Learning |
Accuracy of different machine learning algorithms and added-value of predicting aggregated-level energy performance of commercial buildings | [3] | Building energy modeling; Energy consumption; Energy efficiency | Commercial building | Machine Learning |
Energy-efficiency-oriented occupancy space optimization in buildings: A data-driven approach based on multi-sensor fusion considering behavior–environment integration | [4] | Energy efficiency | Building in general | Sensor network; Big data |
An End-to-End Implementation of a Service-Oriented Architecture for Data-Driven Smart Buildings | [5] | Energy Management system (implied) | Building in general | Information system; Big data; Cloud Computing |
Facilitating Energy-Efficient Operation of Smart Building using Data-driven Approaches | [6] | Energy efficiency; Energy Management system | Building in general | Big data; Machine Learning |
Collaborative data analytics for smart buildings: opportunities and models | [7] | Energy Management system (implied) | Building in general | Big data; Cloud Computing; Information system |
Analysis of the opportunities and costs of energy saving in lighting system of library buildings with the aid of building information modelling and Internet of things | [8] | Energy cost or saving; Energy efficiency | Building in general; Commercial building | Digital twin and simulation; Internet of Things |
Application of Digital Twin Technology in Intelligent Building Energy Efficiency Management System | [9] | Energy efficiency; Energy Management system | Building in general | Digital twin and simulation |
The Contribution of Data-Driven Technologies in Achieving the Sustainable Development Goals | [10] | Energy efficiency (implied) | Building in general (implied) | Big data |
Simulation and big data challenges in tuning building energy models | [14] | Building energy modeling | Building in general | Big data; Digital twin and simulation |
IoT—An intelligent design and implementation of agent based versatile sensor data acquisition and control system for industries and buildings | [15] | Energy Management system (implied) | Industrial building; Building in general | Internet of Things; Sensor network |
Design and Implementation of a Cloud-IoT-Based Home Energy Management System | [16] | Energy Management system | Residential building | Internet of Things; Cloud Computing |
A comparative analysis of patterns of electricity use and flexibility potential of domestic and non-domestic building archetypes through data mining techniques | [17] | Energy consumption; Energy efficiency | Residential building; Commercial building | Big data; Machine Learning |
IoT-Based Home Energy Management System to Minimize Energy Consumption Cost in Peak Demand Hours | [18] | Energy consumption; Energy cost or saving; Energy Management system | Residential building | Internet of Things |
Design and Implementation of an Internet-of-Things-Enabled Smart Meter and Smart Plug for Home-Energy-Management System | [19] | Energy Management system; Energy consumption | Residential building | Internet of Things; Sensor network |
Design and Implementation of an IoT-Based Home Energy Monitoring System | [20] | Energy consumption; Energy Management system | Residential building | Internet of Things |
Design and Prototype Implementation of a Renewable Energy-Powered Home with Home Automation System Using Internet of Things (IoT) | [21] | Renewable energy; Energy Management system | Residential building | Internet of Things |
Implementation of Realtime Database for IoT Home Automation and Energy Monitoring Apps based on Android | [22] | Energy consumption; Energy Management system | Residential building | Internet of Things; Cloud Computing; Information system |
Communication challenges and blockchain in building energy efficiency retrofits: Croatia case | [23] | Energy efficiency | Building in general | Blockchain |
Data-driven building energy modelling—An analysis of the potential for generalisation through interpretable machine learning | [24] | Building energy modeling | Building in general | Machine Learning; Big data |
Creating a Dataset Used for Applying Machine Learning Techniques to Accurately Forecast the Energy Cost in Home-Based Small Businesses | [25] | Energy cost or saving; Energy consumption | Residential building | Machine Learning; Big data |
Deploying data driven applications in smart buildings: Overcoming the initial onboarding barrier using machine learning | [26] | Energy Management system (implied) | Building in general | Machine Learning; Big data |
Issues concerning IoT adoption for energy and comfort management in intelligent buildings in India | [27] | Energy Management system; Energy efficiency | Building in general | Internet of Things |
Big Data Architecture for Building Energy Management Systems | [28] | Energy Management system | Building in general | Big data; Information system |
Artificial intelligence implementation framework development for building energy saving | [29] | Energy cost or saving; Energy efficiency | Building in general | Artificial Intelligence |
Design and implementation of an office standby-power management system through physical and virtual management by user-device habitual pattern analysis in energy-Internet of Things environments | [30] | Energy Management system; Energy consumption; Energy efficiency | Commercial building | Internet of Things; Sensor network; Machine Learning |
Self-updating machine learning system for building load forecasting-method, implementation and case-study on COVID-19 impact | [31] | Energy consumption; Energy Management system (implied) | Building in general | Machine Learning |
Identifying buildings with rising electricity consumption and those with high energy-saving potential for government’s management by data mining approaches | [32] | Energy consumption; Energy cost or saving; Energy efficiency | Building in general | Big data; Machine Learning |
Barriers to use of artificial intelligence on energy conservation in government buildings: Awareness as a moderating function of technology acceptance | [33] | Energy cost or saving; Energy efficiency | Building in general | Artificial Intelligence |
Design and implementation of an AI-based & IoT-enabled Home Energy Management System: A case study in Benguerir—Morocco | [34] | Energy Management system; Energy consumption; Energy efficiency | Residential building | Artificial Intelligence; Internet of Things |
Application of Computer Artificial Intelligence Control Technology in the Comprehensive Utilization of Green Building Energy | [35] | Energy efficiency; Renewable energy; Energy Management system | Building in general | Artificial Intelligence |
Integration of IoT in building energy infrastructure: A critical review on challenges and solutions | [36] | Building energy modeling; Energy consumption; Energy efficiency; Energy Management system | Building in general | Internet of Things |
Implementation of M2M-IoT Smart Building System Using Blynk App | [37] | Energy Management system (implied) | Building in general | Internet of Things; Information system |
Energy Community Management Based on Artificial Intelligence for the Implementation of Renewable Energy Systems in Smart Homes | [38] | Renewable energy; Energy Management system | Residential building | Artificial Intelligence |
Design and Implementation RESTful API for IoT Based Smart Home Systems | [39] | Energy Management system (implied) | Residential building | Internet of Things; Information system |
Design and Implementation of an IoT-based Smart Home with the Ability to Communicate with the Smart Grid | [40] | Smart grid integration; Energy Management system | Residential building | Internet of Things |
Design and Implementation of a Smart Home Energy Management System Using IoT and Machine Learning | [41] | Energy Management system; Energy efficiency | Residential building | Internet of Things; Machine Learning |
Enhancing Smart Home Design with AI Models: A Case Study of Living Spaces Implementation Review | [42] | Energy efficiency | Residential building | Artificial Intelligence |
Energy Management of Smart Homes with Electric Vehicles Using Deep Reinforcement Learning | [43] | Energy Management system; Energy consumption; Energy cost or saving | Residential building | Machine Learning |
Real time implementation of Demand Side Management scheme for IoT enabled PV integrated smart residential building | [44] | Energy Management system; Renewable energy; Smart grid integration | Residential building | Internet of Things |
The challenge for energy saving in smart homes: Exploring the interest for IoT devices acquisition in Romania | [45] | Energy cost or saving; Energy efficiency | Residential building | Internet of Things |
A Multi-Protocol IoT Gateway and WiFi/BLE Sensor Nodes for Smart Home and Building Automation: Design and Implementation | [46] | Energy Management system (implied) | Residential building; Building in general | Internet of Things; Sensor network |
The Implementation of Smart Home Power Management: Integration of Internet of Things and Cloud Computing | [47] | Energy Management system; Energy consumption | Residential building | Internet of Things; Cloud Computing |
Design, development and implementation of an iot-based intelligent ambient controller for lvdc enabled green buildings | [48] | Energy efficiency; Energy Management system | Building in general | Internet of Things |
Design and implementation of cloud analytics-assisted smart power meters considering advanced artificial intelligence as edge analytics in demand-side management for smart homes | [49] | Energy consumption; Energy Management system; Energy efficiency | Residential building | Artificial Intelligence; Cloud Computing; Edge computing; Internet of Things |
Design and implementation of an iot-based energy monitoring system for managing smart homes | [50] | Energy consumption; Energy Management system | Residential building | Internet of Things; Edge computing |
Design and implementation of an IoT-oriented energy management system based on non-intrusive and self-organizing neuro-fuzzy classification as an electrical energy audit in smart homes | [51] | Energy Management system; Energy consumption; Energy efficiency | Residential building | Internet of Things; Artificial Intelligence; Machine Learning |
Design and Implementation of a Power Consumption Management System for Smart Home Over Fog cloud Computing | [52] | Energy consumption; Energy Management system | Residential building | Cloud Computing; Edge computing; Internet of Things |
Implementation of Smart Optimal and Automatic Control of Electrical Home Appliances (IoT) | [53] | Energy consumption; Energy Management system; Smart grid integration | Residential building | Internet of Things |
An IoT Ecosystem for the Implementation of Scalable Wireless Home Automation Systems at Smart City Level | [54] | Energy Management system (implied); Energy efficiency (implied) | Residential building; Building in general | Internet of Things; Sensor network; Information system |
Design and implementation of a cloud-based IoT platform for data acquisition and device supply management in smart buildings | [55] | Energy consumption; Energy Management system | Building in general | Internet of Things; Cloud Computing; Information system |
Big Data in Building Energy Efficiency: Understanding of Big Data and Main Challenges | [57] | Energy efficiency | Building in general | Big data |
Unlocking the potential of “big data” and advanced analytics in ATE | [58] | Not directly related | Not specified | Big data; Machine Learning |
AI-driven smart homes: Challenges and opportunities | [59] | Energy consumption (implied); Energy efficiency (implied) | Residential building | Artificial Intelligence; Internet of Things |
Practical issues in implementing machine-learning models for building energy efficiency: Moving beyond obstacles | [60] | Energy efficiency | Building in general | Machine Learning |
Smart Office System with Face Detection at the Edge | [61] | Not directly related | Commercial building | Artificial Intelligence; Edge computing |
Trusted DBL: A Blockchain-based Digital Twin for Sustainable and Interoperable Building Performance Evaluation | [62] | Energy efficiency; Building energy modeling | Building in general | Blockchain; Digital twin and simulation |
The design and implementation of energy-aware data gathering techniques (EDGE) for in-building wireless sensor networks | [64] | Energy consumption; Energy efficiency | Building in general | Sensor network; Edge computing |
Blockchain enhanced price incentive demand response for building user energy network in sustainable society | [65] | Energy consumption; Energy cost or saving; Energy Management system; Smart grid integration | Building in general | Blockchain; Information system |
Unlocking potentials of building energy systems’ operational efficiency: Application of digital twin design for HVAC systems | [66] | Energy efficiency; Fault detection and diagnosis; Energy Management system | Building in general | Digital twin and simulation |
A novel 3D-geographic information system and deep learning integrated approach for high-accuracy building rooftop solar energy potential characterization of high-density cities | [67] | Renewable energy; Energy efficiency | Building in general; Residential building; Commercial building | Artificial Intelligence; Machine Learning; Digital twin and simulation |
Automated Data Mining Methods for Identifying Energy Efficiency Opportunities Using Whole-Building Electricity Data | [69] | Energy efficiency; Energy consumption | Building in general | Big data; Machine Learning |
Design and Implementation of a Leader–Follower Smart Office Lighting Control System Based on IoT Technology | [70] | Energy consumption; Energy efficiency; Energy Management system | Commercial building | Internet of Things; Sensor network; Edge computing |
Design and Implementation of Building Energy Monitoring and Management System based on Wireless Sensor Networks | [71] | Energy consumption; Energy Management system | Building in general | Sensor network; Internet of Things |
Implementation of an adaptive intelligent home energy management system using a wireless ad-hoc and sensor network in pervasive environments | [72] | Energy consumption; Energy Management system; Energy efficiency | Residential building | Sensor network; Internet of Things; Artificial Intelligence |
Artificial intelligence-based fault detection and diagnosis methods for building energy systems: Advantages, challenges and the future | [68] | Fault detection and diagnosis; Energy efficiency | Building in general | Artificial Intelligence; Machine Learning |
Consumer Readiness for Adoption of IOT-Smart Homes (CRA-IOT-SH) in South Africa Gauteng | [78] | Energy efficiency (implied) | Residential building | Internet of Things |
Home, sweet home: How well-being shapes the adoption of artificial intelligence-powered apartments in smart cities | [79] | Energy efficiency (implied) | Residential building | Artificial Intelligence |
Analysis of Affecting Technology Adoption Factors for Smart Home Services in Jabodetabek, Indonesia | [80] | Energy efficiency (implied) | Residential building | Internet of Things |
Patients’ Behavioral Intentions toward Using WSN Based Smart Home Healthcare Systems: An Empirical Investigation | [81] | Not directly related | Residential building | Sensor network; Internet of Things |
An Empirical Assessment of Wireless Communication Technology Issues in the Smart Home | [82] | Energy efficiency (implied) | Residential building | Sensor network; Internet of Things |
Patients’ Adoption of WSN-Based Smart Home Healthcare Systems: An Integrated Model of Facilitators and Barriers | [83] | Not directly related | Residential building | Sensor network; Internet of Things |
A study on the adoption of IoT smart home service: using Value-based Adoption Model | [84] | Energy efficiency (implied) | Residential building | Internet of Things |
Comprehensive Approaches to User Acceptance of Internet of Things in a Smart Home Environment | [85] | Energy efficiency (implied) | Residential building | Internet of Things |
IoTFuzz: Automated Discovery of Violations in Smart Homes With Real Environment | [86] | Not directly related | Residential building | Internet of Things |
Understanding the adoption and usage of data analytics and simulation among building energy management professionals: A nationwide survey | [87] | Energy Management system; Energy efficiency | Building in general | Big data; Digital twin and simulation; Information system |
Platform-Based Business Models: Insights from an Emerging AI-Enabled Smart Building Ecosystem | [93] | Energy efficiency (implied) | Building in general | Artificial Intelligence; Internet of Things; Information system |
Smart-building management system: An Internet-of-Things (IoT) application business model in Vietnam | [94] | Energy Management system; Energy efficiency | Building in general | Internet of Things; Information system |
References
- JeyaPadmini, J.; Kashwan, K.R. Effective power utilization and conservation in smart homes using IoT. In Proceedings of the 4th IEEE Sponsored International Conference on Computation of Power, Energy, Information and Communication, ICCPEIC 2015, Chennai, India, 22–23 April 2015; pp. 195–199. [Google Scholar] [CrossRef]
- Alloghani, M.A. Anomaly Detection of Energy Consumption in Cloud Computing and Buildings Using Artificial Intelligence as a Tool of Sustainability: A Systematic Review of Current Trends, Applications, and Challenges. Signals Commun. Technol. 2024, 1802, 177–210. [Google Scholar]
- Walker, S.; Khan, W.; Katic, K.; Maassen, W.; Zeiler, W. Accuracy of different machine learning algorithms and added-value of predicting aggregated-level energy performance of commercial buildings. Energy Build. 2020, 209, 109705. [Google Scholar] [CrossRef]
- Zhou, Y.; Wang, Y.; Li, C.; Ding, L.; Yang, Z. Energy-efficiency oriented occupancy space optimization in buildings: A data-driven approach based on multi-sensor fusion considering behavior-environment integration. Energy 2024, 299, 131396. [Google Scholar] [CrossRef]
- Chamari, L.; Petrova, E.; Pauwels, P. An End-to-End Implementation of a Service-Oriented Architecture for Data-Driven Smart Buildings. IEEE Access 2023, 11, 117261–117281. [Google Scholar] [CrossRef]
- Revati, G.; Palak, M.; Shadab, S.; Sheikh, A. Facilitating Energy-Efficient Operation of Smart Building using Data-driven Approaches. 2021 North American Power Symposium (NAPS). In Proceedings of the 2021 North American Power Symposium (NAPS), College Station, TX, USA, 14–16 November 2021; pp. 1–6. [Google Scholar] [CrossRef]
- Lazarova-Molnar, S.; Mohamed, N. Collaborative data analytics for smart buildings: Opportunities and models. Clust. Comput. 2019, 22, 1065–1077. [Google Scholar] [CrossRef]
- Shao, Z.; Li, Y.; Huang, P.; Abed, A.M.; Ali, E.; Elkamchouchi, D.H.; Abbas, M.; Zhang, G. Analysis of the opportunities and costs of energy saving in lightning system of library buildings with the aid of building information modelling and Internet of things. Fuel 2023, 352, 128918. [Google Scholar] [CrossRef]
- Xiong, T.; Cheng, Q.; Yang, C.; Yang, X.; Lin, S. Application of Digital Twin Technology in Intelligent Building Energy Efficiency Management System. 2021 International Conference on E-Commerce and E-Management (ICECEM). In Proceedings of the 2021 International Conference on E-Commerce and E-Management (ICECEM), Dalian, China, 24–26 September 2021; pp. 393–396. [Google Scholar] [CrossRef]
- Bachmann, N.; Tripathi, S.; Brunner, M.; Jodlbauer, H. The Contribution of Data-Driven Technologies in Achieving the Sustainable Development Goals. Sustainability 2022, 14, 2497. [Google Scholar] [CrossRef]
- Kaewdornhan, N.; Srithapon, C.; Liemthong, R.; Chatthaworn, R. Real-Time Multi-Home Energy Management with EV Charging Scheduling Using Multi-Agent Deep Reinforcement Learning Optimization. Energies 2023, 16, 2357. [Google Scholar] [CrossRef]
- Poyyamozhi, M.; Murugesan, B.; Rajamanickam, N.; Shorfuzzaman, M.; Aboelmagd, Y. IoT—A Promising Solution to Energy Management in Smart Buildings: A Systematic Review, Applications, Barriers, and Future Scope. Buildings 2024, 14, 3446. [Google Scholar] [CrossRef]
- Zhou, X.; Du, H.; Xue, S.; Ma, Z. Recent advances in data mining and machine learning for enhanced building energy management. Energy 2024, 307, 132636. [Google Scholar] [CrossRef]
- Sanyal, J.; New, J. Simulation and big data challenges in tuning building energy models. 2013 Workshop on Modeling and Simulation of Cyber-Physical Energy Systems (MSCPES). In Proceedings of the 2013 Workshop on Modeling and Simulation of Cyber-Physical Energy Systems, MSCPES 2013, Berkeley, CA, USA, 20 May 2013. [Google Scholar] [CrossRef]
- Renganathan, A.K.; Kochadai, N.; Chinnaramu, S. IoT—An Intelligent Design and Implementation of Agent Based Versatile Sensor Data Acquisition and Control System for Industries and Buildings. Int. J. Eng. Trends Technol. 2020, 68, 46–53. [Google Scholar] [CrossRef]
- Condon, F.; Martínez, J.M.; Eltamaly, A.M.; Kim, Y.-C.; Ahmed, M.A. Design and Implementation of a Cloud-IoT-Based Home Energy Management System. Sensors 2023, 23, 176. [Google Scholar] [CrossRef] [PubMed]
- Yilmaz, S.; Chambers, J.; Li, X.; Patel, M.K. A comparative analysis of patterns of electricity use and flexibility potential of domestic and non-domestic building archetypes through data mining techniques. J. Phys. Conf. Ser. 2021, 2042, 012021. [Google Scholar] [CrossRef]
- Bhowmic, A.; Modak, M.; Chak, M.J.; Mohammad, N. IoT-Based Home Energy Management System to Minimize Energy Consumption Cost in Peak Demand Hours. 2023 10th IEEE International Conference on Power Systems (ICPS). In Proceedings of the 2023 10th IEEE International Conference on Power Systems (ICPS), Cox’s Bazar, Bangladesh, 13–15 December 2023; pp. 1–6. [Google Scholar] [CrossRef]
- Ben Dhaou, I. Design and Implementation of an Internet-of-Things-Enabled Smart Meter and Smart Plug for Home-Energy-Management System. Electronics 2023, 12, 4041. [Google Scholar] [CrossRef]
- Muhammed, A.-W.O.; Oisamoje, V.; Amhenrior, H.E.; Evbogbai, E.M.J.; Abanihi, V.K.; Bello, L.O.; Obasi, C.C. Design and Implementation of an IoT Based Home Energy Monitoring System. In Proceedings of the 5th International Conference on Information Technology for Education and Development: Changing the Narratives Through Building a Secure Society with Disruptive Technologies, ITED 2022, Abuja, Nigeria, 1–3 November 2022. [Google Scholar] [CrossRef]
- Bhattarai, D.; Singh, A.K.; Newpaney, S.; Pyakurel, P. Design and Prototype Implementation of a Renewable Energy-Powered Home with Home Automation System Using Internet of Things (IoT). In Green Energy and Technology; Springer: Berlin/Heidelberg, Germany, 2020; pp. 489–504. [Google Scholar]
- Swahadika, E.; Besari, A.R.A.; Wibowo, I.K. Implementation of Realtime Database for IoT Home Automation and Energy Monitoring Apps based on Android. 2019 International Electronics Symposium (IES). In Proceedings of the IES 2019—International Electronics Symposium: The Role of Techno-Intelligence in Creating an Open Energy System Towards Energy Democracy, Proceedings, Surabaya, Indonesia, 27–28 September 2019; pp. 170–176. [Google Scholar] [CrossRef]
- Cerić, A.; Ivić, I. Communication challenges and blockchain in building energy efficiency retrofits: Croatia case. Eng. Constr. Arch. Manag. 2023, 32, 1–15. [Google Scholar] [CrossRef]
- Manfren, M.; James, P.A.; Tronchin, L. Data-driven building energy modelling—An analysis of the potential for generalisation through interpretable machine learning. Renew. Sustain. Energy Rev. 2022, 167, 112686. [Google Scholar] [CrossRef]
- Agbor, E.A.; Qu, Y. Creating a Dataset Used for Applying Machine Learning Techniques to Accurately Forecast the Energy Cost in Home-Based Small Businesses. In Proceedings of the 2022 International Conference on Computational Science and Computational Intelligence (CSCI), Las Vegas, NV, USA, 14–16 December 2022; pp. 677–683. [Google Scholar] [CrossRef]
- Waterworth, D.; Sethuvenkatraman, S.; Sheng, Q.Z. Deploying data driven applications in smart buildings: Overcoming the initial onboarding barrier using machine learning. Energy Build. 2022, 279, 112699. [Google Scholar] [CrossRef]
- Thangamani, A.; Ganesh, L.S.; Tanikella, A.; A, M.P. Issues concerning IoT adoption for energy and comfort management in intelligent buildings in India. Intell. Build. Int. 2020, 14, 74–94. [Google Scholar] [CrossRef]
- Ruiz, M.D.; Gomez-Romero, J.; Fernandez-Basso, C.; Martin-Bautista, M.J. Big Data Architecture for Building Energy Management Systems. IEEE Trans. Ind. Inform. 2021, 18, 5738–5747. [Google Scholar] [CrossRef]
- Lee, D.; Huang, H.; Lee, W.; Liu, Y. Artificial intelligence implementation framework development for building energy saving. Int. J. Energy Res. 2020, 44, 11908–11929. [Google Scholar] [CrossRef]
- Park, S.; Park, S.; Kang, B.; Choi, M.-I.; Cho, K.-H.; Park, S. Design and implementation of an office standby–power management system through physical and virtual management by user–device habitual pattern analysis in energy–Internet of Things environments. Int. J. Distrib. Sens. Netw. 2016, 12, 1550147716673931. [Google Scholar] [CrossRef]
- Nguyen, V.H.; Besanger, Y.; Tran, Q.T. Self-updating machine learning system for building load forecasting—Method, implementation and case-study on COVID-19 impact. Sustain. Energy Grids Netw. 2022, 32, 100873. [Google Scholar] [CrossRef]
- Zhou, H.; Tian, X.; Yu, J.; Zhao, Y.; Lin, B.; Chang, C. Identifying buildings with rising electricity-consumption and those with high energy-saving potential for government’s management by data mining approaches. Energy Sustain. Dev. 2021, 66, 54–68. [Google Scholar] [CrossRef]
- Jayaratne, W.; Dasanayaka, S.; Mudalige, D. Barriers to Use of Artificial Intelligence on Energy Conservation in Government Buildings: Awareness as a Moderating Function of Technology Acceptance. In Proceedings of the MERCon 2021—7th International Multidisciplinary Moratuwa Engineering Research Conference, Proceedings, Moratuwa, Sri Lanka, 27–29 July 2021; pp. 113–118. [Google Scholar] [CrossRef]
- Rochd, A.; Benazzouz, A.; Abdelmoula, I.A.; Raihani, A.; Ghennioui, A.; Naimi, Z.; Ikken, B. Design and implementation of an AI-based & IoT-enabled Home Energy Management System: A case study in Benguerir—Morocco. Energy Rep. 2021, 7, 699–719. [Google Scholar] [CrossRef]
- Gao, D. Application of Computer Artificial Intelligence Control Technology in the Comprehensive Utilization of Green Building Energy. J. Physics Conf. Ser. 2020, 1578, 012027. [Google Scholar] [CrossRef]
- Moudgil, V.; Hewage, K.; Hussain, S.A.; Sadiq, R. Integration of IoT in building energy infrastructure: A critical review on challenges and solutions. Renew. Sustain. Energy Rev. 2023, 174, 113121. [Google Scholar] [CrossRef]
- Djehaiche, R.; Aidel, S.; Saeed, N. Implementation of M2M-IoT Smart Building System Using Blynk App. Lect. Notes Netw. Syst. 2022, 361, 439–449. [Google Scholar] [CrossRef]
- Khayyat, M.M.; Sami, B. Energy Community Management Based on Artificial Intelligence for the Implementation of Renewable Energy Systems in Smart Homes. Electronics 2024, 13, 380. [Google Scholar] [CrossRef]
- Ramelan, A.; Rahutomo, F.; Kiswanto; Saputra, B.D.; Hasna, D.F.; Priambodo, R.; Ghaus, H.I. Design and Implementation RESTful API for IoT Based Smart Home Systems. In Proceedings of the E3S Web of Conferences, Bantul, Indonesia, 9–10 August 2023; Volume 465. [Google Scholar] [CrossRef]
- Hajjafari, A.; Badiei, R.; Asharioun, H.; Nasiri, R. Design and Implementation of an IoT-based Smart Home with the Ability to Communicate with the Smart Grid. In Proceedings of the 2023 17th International Conference on Protection and Automation in Power System, IPAPS 2023, Tehran, Iran, 24–25 January 2023; pp. 1–5. [Google Scholar] [CrossRef]
- Devi, M.; Muralidharan, S.; Elakiya, R.; Monica, M. Design and Implementation of a Smart Home Energy Management System Using IoT and Machine Learning. In Proceedings of the E3S Web of Conferences, Bantul, Indonesia, 9–10 August 2023; Volume 387. [Google Scholar] [CrossRef]
- Almusaed, A.; Yitmen, I.; Almssad, A. Enhancing Smart Home Design with AI Models: A Case Study of Living Spaces Implementation Review. Energies 2023, 16, 2636. [Google Scholar] [CrossRef]
- Weiss, X.; Xu, Q.; Nordström, L. Energy Management of Smart Homes with Electric Vehicles Using Deep Reinforcement Learning. In Proceedings of the 2022 24th European Conference on Power Electronics and Applications (EPE’22 ECCE Europe), Hanover, Germany, 5–9 September 2022; pp. 1–9. [Google Scholar]
- Balakumar, P.; Vinopraba, T.; Chandrasekaran, K. Real time implementation of Demand Side Management scheme for IoT enabled PV integrated smart residential building. J. Build. Eng. 2022, 52, 104485. [Google Scholar] [CrossRef]
- Micu, A.; Micu, A.-E.; Geru, M.; Capatina, A.; Muntean, M.-C. The Challenge for Energy Saving in Smart Homes: Exploring the Interest for IoT Devices Acquisition in Romania. Energies 2021, 14, 7589. [Google Scholar] [CrossRef]
- Khanchuea, K.; Siripokarpirom, R. A Multi-Protocol IoT Gateway and WiFi/BLE Sensor Nodes for Smart Home and Building Automation: Design and Implementation. In Proceedings of the 10th International Conference of Information and Communication Technology for Embedded Systems (IC-ICTES), Bangkok, Thailand, 25–27 March 2019. [Google Scholar] [CrossRef]
- Hsiao, T.-C.; Chen, T.-L.; Kang, T.-C.; Wu, T.-Y. The Implementation of Smart Home Power Management: Integration of Internet of Things and Cloud Computing. In Proceedings of the IEEE Eurasia Conference on Biomedical Engineering, Healthcare and Sustainability (IEEE ECBIOS), Okinawa, Japan, 31 May–3 June 2019; pp. 21–23. [Google Scholar] [CrossRef]
- Drisya, K.; Asha, T.S. Design, Development and Implementation of an Iot Based Intelligent Ambient Controller for Lvdc Enabled Green Buildings. Int. J. Innov. Technol. Explor. Eng. 2019, 8, 187–191. [Google Scholar] [CrossRef]
- Chen, Y.-Y.; Lin, Y.-H.; Kung, C.-C.; Chung, M.-H.; Yen, I.-H. Design and Implementation of Cloud Analytics-Assisted Smart Power Meters Considering Advanced Artificial Intelligence as Edge Analytics in Demand-Side Management for Smart Homes. Sensors 2019, 19, 2047. [Google Scholar] [CrossRef]
- Agyeman, M.O.; Al-Waisi, Z.; Hoxha, I. Design and Implementation of an IoT-Based Energy Monitoring System for Managing Smart Homes. In Proceedings of the 2019 4th International Conference on Fog and Mobile Edge Computing, FMEC 2019, Rome, Italy, 10–13 June 2019; pp. 253–258. [Google Scholar] [CrossRef]
- Lin, Y.-H. Design and Implementation of an IoT-Oriented Energy Management System Based on Non-Intrusive and Self-Organizing Neuro-Fuzzy Classification as an Electrical Energy Audit in Smart Homes. Appl. Sci. 2018, 8, 2337. [Google Scholar] [CrossRef]
- Chen, Y.-D.; Azhari, M.Z.; Leu, J.-S. Design and implementation of a power consumption management system for smart home over fog-cloud computing. In Proceedings of the 3rd International Conference on Intelligent Green Building and Smart Grid (IGBSG), Yilan, Taiwan, 22–25 April 2018. [Google Scholar]
- Parsa, A.; Najafabadi, T.A.; Salmasi, F.R. Implementation of smart optimal and automatic control of electrical home appliances (IoT). In Proceedings of the Smart Grid Conference, Tehran, Iran, 20–21 December 2017. [Google Scholar]
- Lohokare, J.; Dani, R.; Rajurkar, A.; Apte, A. An IoT ecosystem for the implementation of scalable wireless home automation systems at smart city level. In Proceedings of the IEEE Region 10 Conference (TENCON), Penang, Malaysia, 5–8 November 2017; TENCON IEEE Region 10 Conference Proceedings. 2017; pp. 1503–1508. [Google Scholar]
- Jamborsalamati, P.; Fernandez, E.; Hossain, M.J.; Rafi, F.H.M. Design and implementation of a cloud-based IoT platform for data acquisition and device supply management in smart buildings. In Proceedings of the 2017 Australasian Universities Power Engineering Conference, AUPEC 2017, Melbourne, Australia, 19–22 November 2017. [Google Scholar] [CrossRef]
- Tricco, A.C.; Lillie, E.; Zarin, W.; O’Brien, K.K.; Colquhoun, H.; Levac, D.; Moher, D.; Peters, M.D.J.; Horsley, T.; Weeks, L.; et al. PRISMA Extension for Scoping Reviews (PRISMA-ScR): Checklist and Explanation. Ann. Intern. Med. 2018, 169, 467–473. [Google Scholar] [CrossRef]
- Koseleva, N.; Ropaite, G. Big Data in Building Energy Efficiency: Understanding of Big Data and Main Challenges. Procedia Eng. 2017, 172, 544–549. [Google Scholar] [CrossRef]
- Hernandez, C.; Hernandez, L.; Miller, D.L.; Modi, M.; Dlugosz, A. Unlocking the potential of “big data” and advanced analytics in ATE. In Proceedings of the 2016 IEEE AUTOTESTCON, Anaheim, CA, USA, 12–15 September 2016; pp. 1–8. [Google Scholar]
- Elkhalik, W.A. AI-Driven Smart Homes: Challenges and Opportunities. J. Intell. Syst. Internet Things 2023, 8, 54–62. [Google Scholar] [CrossRef]
- Wang, Z.; Liu, J.; Zhang, Y.; Yuan, H.; Zhang, R.; Srinivasan, R.S. Practical issues in implementing machine-learning models for building energy efficiency: Moving beyond obstacles. Renew. Sustain. Energy Rev. 2021, 143, 110929. [Google Scholar] [CrossRef]
- Prentice, C.T.; Karakonstantis, G. Smart Office System with Face Detection at the Edge. In Proceedings of the 2018 IEEE SmartWorld, Ubiquitous Intelligence & Computing, Advanced & Trusted Computing, Scalable Computing & Communications, Cloud & Big Data Computing, Internet of People and Smart City Innovation (SmartWorld/SCALCOM/UIC/ATC/CBDCom/IOP/SCI), Guangzhou, China, 8–12 October 2018; pp. 88–93. [Google Scholar] [CrossRef]
- Niavis, H.; Laskari, M.; Fergadiotou, I. Trusted DBL: A Blockchain-based Digital Twin for Sustainable and Interoperable Building Performance Evaluation. In Proceedings of the 2022 7th International Conference on Smart and Sustainable Technologies (SpliTech), Bol and Split, Croatia, 5–8 July 2022; pp. 1–6. [Google Scholar] [CrossRef]
- Jemat, A.; Yussof, S.; Sameon, S.S.; Aris, H.; Ghapar, A.A.; Nazeri, S. Energy Efficiency Improvement and Strategies in Malaysian Office Buildings (Tropical Climate): A Review. J. Adv. Res. Appl. Sci. Eng. Technol. 2023, 29, 72–80. [Google Scholar] [CrossRef]
- Kwon, Y.; Kim, D.; Toh, C.; Kim, J. The Design and Implementation of Energy-aware Data Gathering Techniques (EDGE) for In-building Wireless Sensor Networks. In Proceedings of the 1st International Global Information Infrastructure Symposium, Marrakech, Morocco, 2–6 July 2007. [Google Scholar] [CrossRef]
- Wen, S.; Xiong, W.; Tan, J.; Chen, S.; Li, Q. Blockchain enhanced price incentive demand response for building user energy network in sustainable society. Sustain. Cities Soc. 2021, 68, 102748. [Google Scholar] [CrossRef]
- Vering, C.; Mehrfeld, P.; Nürenberg, M.; Coakley, D.; Lauster, M.; Müller, D. Unlocking Potentials of Building Energy Systems’ Operational Efficiency: Application of Digital Twin Design for HVAC systems. In Proceedings of the Building Simulation Conference Proceedings, Rome, Italy, 2–4 September 2019; Volume 2, pp. 1304–1310. [Google Scholar]
- Ren, H.; Xu, C.; Ma, Z.; Sun, Y. A novel 3D-geographic information system and deep learning integrated approach for high-accuracy building rooftop solar energy potential characterization of high-density cities. Appl. Energy 2021, 306, 117985. [Google Scholar] [CrossRef]
- Zhao, Y.; Li, T.; Zhang, X.; Zhang, C. Artificial intelligence-based fault detection and diagnosis methods for building energy systems: Advantages, challenges and the future. Renew. Sustain. Energy Rev. 2019, 109, 85–101. [Google Scholar] [CrossRef]
- Howard, P.; Reddy, T.A.; Runger, G.; Katipamula, S. Ashrae Automated Data Mining Methods for Identifying Energy Efficiency Opportunities Using Whole-Building Electricity Data. In Proceedings of the ASHRAE Winter Conference, Orlando, FL, USA, 23–27 January 2016; Volume 122, ASHRAE Transactions, 2016. pp. 422–433. [Google Scholar]
- Lee, C.-T.; Chen, L.-B.; Chu, H.-M.; Hsieh, C.-J. Design and Implementation of a Leader-Follower Smart Office Lighting Control System Based on IoT Technology. IEEE Access 2022, 10, 28066–28079. [Google Scholar] [CrossRef]
- Abo-Zahhad, M.; Ahmed, S.M.; Farrag, M.; Ahmed, M.F.A.; Ali, A. Design and implementation of building energy monitoring and management system based on wireless sensor networks. In Proceedings of the International Conference on Computer Engineering & Systems (ICCES), Cairo, Egypt, 23–24 December 2015; pp. 230–233. [Google Scholar]
- Byun, J.; Hong, I.; Kang, B.; Park, S. Implementation of an Adaptive Intelligent Home Energy Management System Using a Wireless Ad-Hoc and Sensor Network in Pervasive Environments. In Proceedings of the Proceedings—International Conference on Computer Communications and Networks, ICCCN, Maui, HA, USA, 31 July–4 August 2011. [Google Scholar] [CrossRef]
- Qiu, K.; Yang, J.; Gao, Z.; Xu, F. A review of Modelica language in building and energy: Development, applications, and future prospect. Energy Build. 2024, 308, 113998. [Google Scholar] [CrossRef]
- Klein, S.A. TRNSYS-A transient system simulation program. In Engineering Experiment Station Report; University of Wisconsin-Madison: Madison, WI, USA, 1988; pp. 12–38. [Google Scholar]
- Crawley, D.B.; Lawrie, L.K.; Winkelmann, F.C.; Buhl, W.; Huang, Y.; Pedersen, C.O.; Strand, R.K.; Liesen, R.J.; Fisher, D.E.; Witte, M.J.; et al. EnergyPlus: Creating a new-generation building energy simulation program. Energy Build. 2001, 33, 319–331. [Google Scholar] [CrossRef]
- Lalrochunga, D.; Parida, A.; Choudhury, S. Systematic Review on Capacity Building through Renewable Energy enabled IoT- Unmanned Aerial Vehicle for Smart Agroforestry. Clean. Circ. Bioecon. 2024, 8, 100094. [Google Scholar] [CrossRef]
- George, T.; Selvakumar, A.I. Smart home energy management systems in India: A socio-economic commitment towards a green future. Discov. Sustain. 2024, 5, 101. [Google Scholar] [CrossRef]
- Julies, B.D.; Zuva, T. Consumer Readiness for Adoption of IOT-Smart Homes (CRA-IOT-SH) in South Africa Gauteng. Lect. Notes Netw. Syst. 2022, 501, 695–709. [Google Scholar] [CrossRef]
- Meyer-Waarden, L.; Cloarec, J.; Adams, C.; Aliman, D.N.; Wirth, V. Home, sweet home: How well-being shapes the adoption of artificial intelligence-powered apartments in smart cities. Syst. D’information Manag. 2022, 26, 55–88. [Google Scholar] [CrossRef]
- Gultom, R.N.; Asvial, M. Analysis of Affecting Technology Adoption Factors for Smart Home Services in Jabodetabek, Indonesia. In Proceedings of the 2020 International Seminar on Intelligent Technology and Its Applications (ISITIA), Surabaya, Indonesia, 22–23 July 2020; pp. 326–331. [Google Scholar] [CrossRef]
- Alaiad, A.; Zhou, L. Patients’ Behavioral Intentions toward Using WSN Based Smart Home Healthcare Systems: An Empirical Investigation. In Proceedings of the 2015 48th Hawaii International Conference on System Sciences, Kauai, HA, USA, 5–8 January 2015; pp. 824–833. [Google Scholar] [CrossRef]
- Arya, R.; Khanduja, M.; Rao, M.S.; Yadav, R.R.; Gehlot, A.; Gupta, K.K. An Empirical Assessment of Wireless Communication Technology Issues in the Smart Home. In Proceedings of the 2023 3rd International Conference on Advance Computing and Innovative Technologies in Engineering (ICACITE), Greater Noida, India, 12–13 May 2023; pp. 432–436. [Google Scholar] [CrossRef]
- Alaiad, A.; Zhou, L. Patients’ Adoption of WSN-Based Smart Home Healthcare Systems: An Integrated Model of Facilitators and Barriers. IEEE Trans. Prof. Commun. 2017, 60, 4–23. [Google Scholar] [CrossRef]
- Kim, Y.; Park, Y.; Choi, J. A study on the adoption of IoT smart home service: Using Value-based Adoption Model. Total Qual. Manag. Bus. Excel. 2017, 28, 1149–1165. [Google Scholar] [CrossRef]
- Park, E.; Cho, Y.; Han, J.; Kwon, S.J. Comprehensive Approaches to User Acceptance of Internet of Things in a Smart Home Environment. IEEE Internet Things J. 2017, 4, 2342–2350. [Google Scholar] [CrossRef]
- Ban, X.; Ding, M.; Liu, S.; Chen, C.; Zhang, J. IoTFuzz: Automated Discovery of Violations in Smart Homes with Real Environment. IEEE Internet Things J. 2023, 11, 10183–10196. [Google Scholar] [CrossRef]
- Srivastava, C.; Yang, Z.; Jain, R.K. Understanding the adoption and usage of data analytics and simulation among building energy management professionals: A nationwide survey. Build. Environ. 2019, 157, 139–164. [Google Scholar] [CrossRef]
- Mistry, V. The Role of IoT in Enhancing HVAC Control Systems. J. Biosens. Bioelectron. Res. 2023, 115, 2–5. [Google Scholar] [CrossRef]
- Onuh, A.; Feng, H.; Chen, Q.; de Soto, B.G. Investigating energy savings when using iot devices in buildings: A case study in the UK. In Proceedings of the EC3 Conference 2022, Rhodes, Greece, 24–26 July 2022; Volume 3. European Council on Computing in Construction. [Google Scholar]
- Philip, A.; Islam, S.N.; Phillips, N.; Anwar, A. Optimum Energy Management for Air Conditioners in IoT-Enabled Smart Home. Sensors 2022, 22, 7102. [Google Scholar] [CrossRef]
- ASHRAE Standard 62.1-2007; Ventilation for Acceptable Indoor Air Quality. The American Society of Heating, Refrigerating, and Air-Conditioning Engineers (ASHRAE): Atlanta, GA, USA, 2007.
- Nambiar, C.; Rosenberg, M.; Rosenberg, S. End Use Analysis Of ANSI/ASHRAE/IES Standard 90.1-2019. ASHRAE J. 2023, 65, 34–42. [Google Scholar]
- Xu, Y.; Ahokangas, P.; Turunen, M.; Mäntymäki, M.; Heikkilä, J. Platform-Based Business Models: Insights from an Emerging Ai-Enabled Smart Building Ecosystem. Electronics 2019, 8, 1150. [Google Scholar] [CrossRef]
- Le, D.N.; Le Tuan, L.; Tuan, M.N.D. Smart-building management system: An Internet-of-Things (IoT) application business model in Vietnam. Technol. Forecast. Soc. Change 2019, 141, 22–35. [Google Scholar] [CrossRef]
- Talaei, M.; Azari, R. Smart Building Skins for Urban Heat Island Mitigation: A Review. J. Arch. Eng. 2024, 30, 03124005. [Google Scholar] [CrossRef]
- Siswipraptini, P.C.; Aziza, R.N.; Siregar, R.R.A.; Ramadhan, A. Smart Home Energy Management Systems: A Systematic Review of Architecture, Communication, and Algorithmic Trends. J. Syst. Manag. Sci. 2024, 14, 129–146. [Google Scholar]
- Rebelatto, B.G.; Salvia, A.L.; Brandli, L.L.; Filho, W.L. Examining Energy Efficiency Practices in Office Buildings through the Lens of LEED, BREEAM, and DGNB Certifications. Sustainability 2024, 16, 4345. [Google Scholar] [CrossRef]
- Pinthurat, W.; Surinkaew, T.; Hredzak, B. An overview of reinforcement learning-based approaches for smart home energy management systems with energy storages. Renew. Sustain. Energy Rev. 2024, 202, 114648. [Google Scholar] [CrossRef]
- Lu, Y.; Zhou, L.; Zhang, A.; Zha, S.; Zhuo, X.; Ge, S. Application of Deep Learning and Intelligent Sensing Analysis in Smart Home. Sensors 2024, 24, 953. [Google Scholar] [CrossRef]
- Vandenbogaerde, L.; Verbeke, S.; Audenaert, A. Optimizing building energy consumption in office buildings: A review of building automation and control systems and factors influencing energy savings. J. Build. Eng. 2023, 76, 107233. [Google Scholar] [CrossRef]
- Motta, L.L.; Ferreira, L.C.B.C.; Cabral, T.W.; Lemes, D.A.M.; Cardoso, G.d.S.; Borchardt, A.; Cardieri, P.; Fraidenraich, G.; de Lima, E.R.; Neto, F.B.; et al. General Overview and Proof of Concept of a Smart Home Energy Management System Architecture. Electronics 2023, 12, 4453. [Google Scholar] [CrossRef]
- Liu, Z.; Guo, Z.; Chen, Q.; Song, C.; Shang, W.; Yuan, M.; Zhang, H. A review of data-driven smart building-integrated photovoltaic systems: Challenges and objectives. Energy 2022, 263, 126082. [Google Scholar] [CrossRef]
- Lamsal, P.; Bajracharya, S.B.; Rijal, H.B. A Review on Adaptive Thermal Comfort of Office Building for Energy-Saving Building Design. Energies 2023, 16, 1524. [Google Scholar] [CrossRef]
- Kiviste, M.; Musakka, S.; Ruus, A.; Vinha, J. A review of non-residential building renovation and improvement of energy efficiency: Office buildings in Finland, Sweden, Norway, Denmark, and Germany. Energies 2023, 16, 4220. [Google Scholar] [CrossRef]
- Fakhar, M.Z.; Yalcin, E.; Bilge, A. A survey of smart home energy conservation techniques. Expert Syst. Appl. 2022, 213, 118974. [Google Scholar] [CrossRef]
- Bäcklund, K.; Molinari, M.; Lundqvist, P.; Palm, B. Building Occupants, Their Behavior and the Resulting Impact on Energy Use in Campus Buildings: A Literature Review with Focus on Smart Building Systems. Energies 2023, 16, 6104. [Google Scholar] [CrossRef]
- Kanade, S.; Bhise, A.K. Artificial Intelligence Based Smart Home Energy Management System: A Review. 2022. Available online: https://ijsrem.com/download/artificial-intelligence-based-smart-home-energy-management-system-a-review/ (accessed on 20 November 2024).
- Elnour, M.; Fadli, F.; Himeur, Y.; Petri, I.; Rezgui, Y.; Meskin, N.; Ahmad, A.M. Performance and energy optimization of building automation and management systems: Towards smart sustainable carbon-neutral sports facilities. Renew. Sustain. Energy Rev. 2022, 162, 112401. [Google Scholar] [CrossRef]
- Andrade, S.H.M.S.; Contente, G.O.; Rodrigues, L.B.; Lima, L.X.; Vijaykumar, N.L.; Francês, C.R.L. Smart Home Tracking: A Smart Home Architecture for Smart Energy Consumption in a Residence with Multiple Users. Wirel. Pers. Commun. 2022, 123, 3241–3262. [Google Scholar] [CrossRef]
- Ali, A.O.; Elmarghany, M.R.; Abdelsalam, M.M.; Sabry, M.N.; Hamed, A.M. Closed-loop home energy management system with renewable energy sources in a smart grid: A comprehensive review. J. Energy Storage 2022, 50, 104609. [Google Scholar] [CrossRef]
- Yu, L.; Qin, S.; Zhang, M.; Shen, C.; Jiang, T.; Guan, X. A Review of Deep Reinforcement Learning for Smart Building Energy Management. IEEE Internet Things J. 2021, 8, 12046–12063. [Google Scholar] [CrossRef]
- Ravindran, A. Smart Home Energy Management: State of the Art. 2022. Available online: https://www.politesi.polimi.it/handle/10589/191596 (accessed on 22 November 2024).
- Hamm, S.G.; Anderson, A.; Blankenship, D.; Boyd, L.W.; Brown, E.A.; Frone, Z.; Hamos, I.; Hughes, H.J.; Kalmuk, M.; Marble, A.; et al. Geothermal Energy R&D: An Overview of the U.S. Department of Energy’s Geothermal Technologies Office. J. Energy Resour. Technol. 2021, 143, 4049581. [Google Scholar] [CrossRef]
- Aliero, M.S.; Qureshi, K.N.; Pasha, M.F.; Jeon, G. Smart Home Energy Management Systems in Internet of Things networks for green cities demands and services. Environ. Technol. Innov. 2021, 22, 101443. [Google Scholar] [CrossRef]
- Aliero, M.S.; Qureshi, K.N.; Pasha, M.F.; Ghani, I.; Yauri, R.A. Systematic Mapping Study on Energy Optimization Solutions in Smart Building Structure: Opportunities and Challenges. Wirel. Pers. Commun. 2021, 119, 2017–2053. [Google Scholar] [CrossRef]
- Aliabadi, F.E.; Agbossou, K.; Kelouwani, S.; Henao, N.; Hosseini, S.S. Coordination of Smart Home Energy Management Systems in Neighborhood Areas: A Systematic Review. IEEE Access 2021, 9, 36417–36443. [Google Scholar] [CrossRef]
- Zaidan, A.; Zaidan, B. A review on intelligent process for smart home applications based on IoT: Coherent taxonomy, motivation, open challenges, and recommendations. Artif. Intell. Rev. 2020, 53, 141–165. [Google Scholar] [CrossRef]
- Zafar, U.; Bayhan, S.; Sanfilippo, A. Home energy management system concepts, configurations, and technologies for the smart grid. IEEE Access 2020, 8, 119271–119286. [Google Scholar] [CrossRef]
- Weiss, T. Analysing Smart-Home Energy Management under the Aspects of Organic Computing. 2020. Available online: https://www.researchgate.net/publication/342889772_Analysing_Smart-Home_Energy_Management_under_the_Aspects_of_Organic_Computing (accessed on 22 November 2024).
- Shakeri, M.; Pasupuleti, J.; Amin, N.; Rokonuzzaman, M.; Low, F.W.; Yaw, C.T.; Asim, N.; Samsudin, N.A.; Tiong, S.K.; Hen, C.K.; et al. An overview of the building energy management system considering the demand response programs, smart strategies and smart grid. Energies 2020, 13, 3299. [Google Scholar] [CrossRef]
- Savero, R.R.; Antaryama, I.G.N.; Soemardiono, B. Review on Design Strategies of Energy Saving Office Building with Evaporative Cooling in Tropical Region. IPTEK J. Technol. Sci. 2020, 31, 236. [Google Scholar] [CrossRef]
- Norton, B.; Lo, S.N. Atria, Roof-space Solar Collectors and Windows for Low-energy New and Renovated Office Buildings: A Review. SDAR* J. Sustain. Des. Appl. Res. 2020, 8, 4. [Google Scholar]
- McIlvennie, C.; Sanguinetti, A.; Pritoni, M. Of impacts, agents, and functions: An interdisciplinary meta-review of smart home energy management systems research. Energy Res. Soc. Sci. 2020, 68, 101555. [Google Scholar] [CrossRef]
- Krishnan, Y.; S, A.; Saara, M.; Karn, A. Smart Home Energy Management—The Future of Energy Conservation: A Review. Int. J. Eng. Res. 2020, 9, 231–235. [Google Scholar] [CrossRef]
Energy Aspect | Building Aspect | Data and AI Aspect |
---|---|---|
Building energy modeling Energy consumption Energy cost or saving Energy efficiency Energy Management system Fault detection and diagnose Renewable energy Smart grid integration | Building in general Commercial building Industrial building Residential building | Artificial Intelligence Big data Blockchain Cloud Computing Digital Twin and simulation Edge computing Information system Internet of Things Machine Learning Sensor network |
Data-Driven Technology | Description/Function | References |
---|---|---|
Big Data Analytics | Collection, processing, and analysis of large complex datasets to identify patterns. | [28,30,57,58] |
Artificial Intelligence (AI) | Automates tasks, detects energy anomalies, optimizes energy use, predicts patterns, and forecasts costs. | [2,27,29,33,35,38,42,49,51,59] |
Machine Learning | Subset of AI-enabling systems to learn from data, improving prediction and optimization over time. | [3,14,25,41,51,60,61] |
Internet of Things (IoT) and Wireless Sensor Networks | Real-time data collection on energy usage and environmental conditions, enabling data communication among devices. | [1,8,14,16,20,21,27,36,37,39,41,45,47,48,49,51,52,62,63,64] |
Edge and Cloud Computing | Local data processing to minimize energy consumption (Edge computing); cost-effective off-site data storage and services (Cloud Computing). | [2,16,36,52,61] |
Blockchain Technologies | Secure and transparent transactions and trusted data sharing across distributed networks. | [23,62,65] |
Digital Twin Technologies | Virtual representations of physical systems for real-time monitoring and optimization. | [62,66] |
Information Systems and Geographic Information Systems (GIS) | Storage, visualization, analysis, and interpretation of data and managing energy distribution networks. | [19,29,32,67] |
Aspect | Details |
---|---|
Data Classification | Small (kilobytes to gigabytes), medium (gigabytes to terabytes), and large (terabytes and beyond) datasets. |
Programming Languages | Python (Pandas, NumPy, Scikit-learn) and R, Java. |
Frameworks/Libraries | Apache Spark, Hadoop, and TensorFlow. |
Applications | Anomaly detection, energy consumption forecasting, and predictive maintenance. |
Key Algorithms | Random Forest, Gradient-Boosted Trees, k-means clustering, ARIMA, and Long Short-Term Memory (LSTM). |
Limitations | Hardware constraints, integration with legacy BMS, and high computational requirements for real-time tasks. |
Technology | Sub-Types | References |
---|---|---|
Home Energy Management and Monitoring Systems | Home Energy Management System | [16,18,19,34,41,51,52] |
Intelligent Home Energy Management System (AIHEMS) | [72] | |
Smart home power management | [47] | |
Home energy monitoring system | [20] | |
IoT-based energy monitoring system | [50] | |
Standby-power management system | [30] | |
Building Energy Management and Monitoring Systems | Energy management systems (EMSS) | [43,49] |
Building Energy Management Systems | [28,68] | |
Building energy monitoring and management system | [71] | |
Building management systems (BMS) | [7] | |
Building automation system (BAS) | [26] | |
Smart and Automated Systems for Homes and Offices | Home automation system | [21,39] |
Smart home and building automation applications | [46] | |
Wireless home automation systems | [54] | |
Smart office system | [61] | |
Smart office lighting control system | [70] | |
Specialized Control and Data Management Systems | Versatile sensor data acquisition and control system (VSDACS) | [15] |
Building Information Modeling (BIM)-based intelligent illumination system | [8] | |
Energy-aware data gathering techniques (EDGE) | [64] |
Tool | Key Features | Methodologies | Applications |
---|---|---|---|
EnergyPlus | Whole-building energy modeling for HVAC, lighting, and energy flows | Finite Difference Method (FDM) for thermal analysis; iterative solvers for energy balance; weather data integration | Evaluating energy performance of design choices, optimizing HVAC and lighting systems |
TRNSYS | Modular simulation environment for transient systems, including renewable energy components | Component-based architecture; Ordinary Differential Equation (ODE) solvers for transient simulations | Renewable energy simulation (solar PV, thermal); the analysis of dynamic system behavior, thermal storage systems |
Influential Factors | Sub-Types | References |
---|---|---|
Social factors | Trust | [78,79,80] |
Attractiveness of alternatives | [80] | |
Social influence | [81] | |
Behavioral intention | [80] | |
Hedonic motivation | [80] | |
Soft skills | [33] | |
Well-being | [79] | |
Individual perceptions | Perceived innovation | [78] |
Perceived usefulness | [78,82] | |
Life-quality expectations | [83] | |
Relative advantage | [78] | |
Risk perception | [80] | |
Perceived value | [84] | |
Perceived ease of use (PEOU) | [78] | |
Compatibility | [82,85] | |
Perceived simplicity | [82] | |
Effort expectancy | [80] | |
Human detachment concern | [83] | |
Perceived connectedness | [85] | |
Cost | Cost | [83,85] |
Security and Privacy | Security | [79] |
Security risks | [86] | |
Privacy risks | [84] | |
Privacy concerns | [83] | |
Safety | [86] | |
Data Quality and Relevance | Inaccurate or irrelevant data | [87] |
Inaccurate outcomes | [87] |
Business Model Canvas Segment | Ref. [33] | Ref. [93] | Ref. [94] |
---|---|---|---|
Customer Segments | Government buildings | Building operators and real estate companies | Property managers, residents, and service providers |
Value Propositions | Cost savings and efficiency improvements | Energy efficiency and operational performance optimization | Building management efficiency, cost reductions, enhanced user experience, and potential energy savings |
Key Partners | Government bodies, educational institutions, and potential AI technology providers | Real estate and facility management operators, large international companies, and research institutions | Technology providers, construction companies, IoT companies, and real estate agencies |
Key Activities | Researching AI applications in energy management, understanding barriers, and testing hypotheses related to AI deployment in government buildings | AI applications development and integration into existing building management systems | Continuous development and maintenance and the integration of various IoT devices and services |
Key Resources | Intellectual resources (research data, AI technologies, and expert opinions) and survey data from government building occupants | AI technologies, platform infrastructure, research data, and expertise | IoT platforms and connected devices, expertise in IoT and building management, and data analytics capabilities |
Cost Structure | Training and implementing AI systems | N/A | N/A |
Customer Relationships | N/A | Co-development partnership | N/A |
Channels | N/A | Digital platforms and conferences | Direct installations, online platforms for management, and possible mobile applications |
Revenue Stream | N/A | N/A | N/A |
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Billanes, J.D.; Ma, Z.G.; Jørgensen, B.N. Data-Driven Technologies for Energy Optimization in Smart Buildings: A Scoping Review. Energies 2025, 18, 290. https://doi.org/10.3390/en18020290
Billanes JD, Ma ZG, Jørgensen BN. Data-Driven Technologies for Energy Optimization in Smart Buildings: A Scoping Review. Energies. 2025; 18(2):290. https://doi.org/10.3390/en18020290
Chicago/Turabian StyleBillanes, Joy Dalmacio, Zheng Grace Ma, and Bo Nørregaard Jørgensen. 2025. "Data-Driven Technologies for Energy Optimization in Smart Buildings: A Scoping Review" Energies 18, no. 2: 290. https://doi.org/10.3390/en18020290
APA StyleBillanes, J. D., Ma, Z. G., & Jørgensen, B. N. (2025). Data-Driven Technologies for Energy Optimization in Smart Buildings: A Scoping Review. Energies, 18(2), 290. https://doi.org/10.3390/en18020290