Generic IoT for Smart Buildings and Field-Level Automation—Challenges, Threats, Approaches, and Solutions
Abstract
:1. Introduction
1.1. Fieldbus Networks in Smart Homes and Buildings
- Field-level IP protocol implementation with real-time requirements;
- Development of IoT structures for fieldbus networks;
- Assumptions for implementation of edge and fog services;
- Big-data processing within the edge and cloud computing for BACS and BMS;
- Cybersecurity and data privacy;
- Energy efficiency and energy consumption reduction for wireless modules, sensors, and actuators.
1.2. Edge and Fog Computing within Advanced Home and Building Automation Systems
1.3. Methodology of the Review
1.4. Original Contributions and the Paper Structure
- It provides a comprehensive review of the state-of-the-art IoT techniques and solutions related to smart homes and buildings with distributed control systems. This review is important because it collects knowledge about adapting and using IoT technologies in a segment that is rapidly developing but has so far been based on its own solutions for communication and data processing, in particular at the field level;
- As opposed to other IoT technology reviews, this one analyzes and discusses the suitability of various IoT concepts and tools for smart homes and buildings. Moreover, it sheds light on trends and innovative solutions emerging from this field that could be motivating for interested researchers and engineers;
- Providing a new perspective on various IoT applications (e.g., edge and fog computing and big-data processing) supported by recent research studies. To this end, the review provides some of the IoT design practices, considering the unique properties of smart homes and buildings, that finally will lead to more effective data processing, control and monitoring functions execution and better integration;
- It presents the major challenges and trends and pinpoints new, open research issues that need attention from researchers, domain experts, and engineers. In particular, this review provides information on the future scope of research on the integration of AI and ML capabilities, tactile internet developments, and IoT technology maturity assessment in building applications;
- It proposes general assumptions for the generic IoT framework concept with SWOT analysis as well as a discussion of pros and cons.
2. Control Networks and Smart Technologies in Buildings
2.1. Distributed Control Approach
- Field layer, the lowest one, where the interaction with field devices (sensors and actuators) happens, environmental data are collected, and parameters of the environment are physically controlled in response to commands from the system. Additional modules of sensors, stationary and mobile beacons with BLE, Z-Wave, and ZigBee wireless-communication technologies, are often used on this layer as well. They support mechanisms for the precise location of people and equipment in rooms and for monitoring environmental parameters;
- Automation layer, the middle layer, where data are processed, control loops are executed, and alarms are activated. It is also where processing entities also communicate values of more global interest to each other, and values for vertical access by the next management level are prepared (possibly aggregated);
- Management layer, the top layer, is where information from throughout the entire system is accessible, as well as where activities like system-data presentation, forwarding, trending, logging, and archiving take place. Moreover, vertical access to all BACS values is provided, including the modification of parameters such as schedules and long-term historical data storage. The possibility to generate reports and statistics is implemented as well.
2.2. IoT Structures and Technologies for Building Automation
3. The IoT with Edge and Fog Computing in Buildings—Main Challenges
3.1. Service-Orientated IoT and Edge and Fog Computing in BACS and BMS
3.2. Big-Data Processing and Cloud Computing
3.3. Cybersecurity, Privacy, and Blockchain Solutions for Distributed IoT in Buildings
- Heterogeneity of devices and communication, resulting from the coexistence of various modules/nodes in one network structure (from small sensors and relays to large modules of automation servers and data servers), and the fact that they are produced by various manufacturers, often with different hardware architectures, supporting various types of software tools;
- Integration of physical devices; the result of the aforementioned ‘openness’ is that an attacker is potentially able to communicate with more devices than before. If he breaks the home/building/local network protection, he is able to manipulate the lighting system, lock doors, control HVAC, etc.;
- Constrained devices, the feature of many IoT devices resulting from a tendency to reduce the cost of their production. As a consequence, IoT devices have limited resources, memory space, low bandwidth, etc., and these considerably reduce the possibility to implement conventional security techniques;
- Large scale, since, currently, there are more computers and other IoT devices connected to the Internet than the number of humans on the globe, and the management of so large number of smart devices is a very demanding task and inevitably raises security risks;
- Privacy, IoT devices by their nature operate in a distributed structure, allowing communication for various wired and wireless technologies. This approach allows for interaction everywhere and data communication with many other BACS network nodes and edge modules in order to provide various services with different scopes and resource uses. The openness and flexibility of this structure generate additional privacy risks.
- For fog computing
- Encryption techniques;
- Decoy technique for authentication of data;
- Intrusion detection system for denial-of-service attack (DoS attack) [91] as well as port scanning attacks;
- Authentication schemes, where the fog computing network enables users to access the fog services from the fog infrastructure if they are well authenticated from the system;
- Blockchain strategy, it can prevent various malicious attacks in the fog network, including man-in-the-middle attack, DoS attack, and data tampering.
- For edge computing
4. New Ideas, Concepts and Trends
4.1. Machine Learning and Artificial Intelligence
- Occupant-centric solutions
- Occupancy detection, prediction, and estimation providing essential information for advanced control of several subsystems like HVAC;
- Activity recognition to provide better control scenarios, tailored to increased or limited user activity, e.g., in different zones of the building;
- User preferences and behavior to provide well-tailored thermal and lighting comfort, considering individual or group user preferences, as well as operating scenarios for home devices and building infrastructure tailored to the most common recurring user behaviors;
- Authentication schemes, where a fog computing network enables users to access the fog services from the fog infrastructure if they are well authenticated in the system;
- Blockchain strategy, it can prevent various malicious attacks in a fog network, including man-in-the-middle attack, DoS attack, and data tampering.
- Energy/device-centric solutions
4.2. Tactile Internet and Digital Twins with Distributed Automation Networks
- Collection of data and information regarding the geometry, materials, and equipment characteristics of the specific building of interest. This information is necessary for modeling the building;
- Collection of live measurements from sensors and electrical meters installed in the building to monitor its real-time operating conditions. In this context, modules with wireless-communication protocols, such as BLE, Z-Wave, and ZigBee, can be used at the field level, along with the required infrastructure for integration into the IoT TCP/IP network [128,129,130,131]. Additionally, live weather data could also be collected. These live data are directly incorporated as inputs into simulation tools to replicate the building’s operating conditions in real time;
- Simulation tools with model-based modeling are incorporated to simulate building control and monitoring systems. Intelligent algorithms can also be used to calibrate the building parameters in order to achieve better comfort and/or improve energy efficiency;
- Development of a software platform to integrate the three previous phases. That platform is responsible for the proper data exchange and the successful real-time execution of the simulation tools as well as for integrating monitoring and control applications and investigating different what-if scenarios.
4.3. IoT Technology and Maturity Assessment
- Low IoT level, larger manual, low automatic control at the building level (local automation);
- Mid-IoT level, automatic control at the building level (centralized automation), firstly emerging of DALI controls for lighting as well as field-level sensors for some control functions;
- High IoT Level, automatic control at the building level (distributed automation), with networked sensors and modules and nodes to control most systems’ functions with the performance analysis;
- Fully IoT level, automatic control across all buildings/site levels (distributed networked automation) with networked sensors, all modules and nodes to control most systems’ functions with the performance analysis also perform a predictive decision making.
5. Generic IoT Framework—Concept, Development, and Discussion
5.1. Mandatory Elements of the Framework
5.2. Optional Elements of the Framework
5.2.1. Smart-Home Applications
5.2.2. Smart-Building Applications
5.3. SWOT Analysis and Discussion—Main Challenges, Opportunities, Pros, and Cons
- S—Strengths:
- Comprehensive integration: the incorporation of mandatory elements from the framework ensures a solid foundation for seamless device communication, data processing, and security;
- Flexibility and scalability: the inclusion of optional elements allows for customization based on specific applications, catering to the unique needs of both smart homes and buildings;
- Advanced capabilities: optional elements such as fog computing, machine learning, and AI enhance the framework’s capabilities, providing predictive analytics, anomaly detection, and efficient resource management.
- W—Weaknesses:
- Complex implementation: the inclusion of various optional elements may introduce complexity in the implementation phase, requiring careful planning and expertise;
- Resource intensiveness: certain advanced features, such as ML and AI, may demand substantial computing resources, potentially affecting system performance;
- Potential security risks: the complexity of the framework may introduce vulnerabilities, necessitating robust cybersecurity measures to mitigate potential risks.
- O—Opportunities:
- Market growth: the rising demand for smart home and building solutions, as well as IoT and TIoT, presents a significant market opportunity, with the framework well-positioned to capitalize on this trend;
- Technological advancements: ongoing advancements in IoT technologies, including edge, fog computing, ML and AI offer opportunities for continuous improvement and innovation within the framework;
- Regulatory support: compliance with emerging data-privacy and energy-efficiency regulations can enhance the credibility of the framework and market acceptance.
- T—Threats:
- Cybersecurity concerns: as IoT systems become more interconnected, the framework faces potential threats from cyberattacks, necessitating robust security measures;
- Integration challenges: compatibility issues with existing systems in buildings or homes may pose challenges during implementation, requiring seamless integration strategies;
- Market, research, and technical competition: rapid technological advancements may lead to increased competition, requiring continuous updates to maintain the framework’s competitiveness.
- Reducing weaknesses
- Simplify implementation processes by developing automated deployment tools and standardized templates to simplify the installation and configuration of IoT devices in smart homes and buildings. Automation and standardization can minimize the complexity of implementation, making it more user-friendly and reducing the potential for errors;
- Resource optimization for advanced functions by exploring lightweight algorithms and edge computing strategies to optimize resource-intensive functions, such as machine learning and AI, to ensure efficient operation in resource-constrained environments. Optimizing resources reduces the load on devices and networks, improving overall system performance;
- Enhance cybersecurity measures by exploring blockchain-based security frameworks, decentralized identity management, and real-time threat detection to strengthen the security posture of smart home and building IoT systems. Implementing advanced cybersecurity measures will strengthen defenses against evolving threats, protect sensitive data, and ensure the integrity of the system.
- Mitigating threats
- Enhance cybersecurity awareness and education by conducting research on effective cybersecurity awareness and education programs for both users and developers involved in IoT applications for smart homes and buildings. Increased awareness and education can empower users to adopt secure practices, reducing the risk of cyber threats such as unauthorized access or data breaches;
- Standardize security protocols by working with industry stakeholders to establish and promote standardized security protocols for IoT devices and communications in smart home and building ecosystems. Standardization ensures a consistent and robust security framework, making it harder for attackers to exploit vulnerabilities;
- Continuous monitoring and updating by researching dynamic monitoring solutions and automated update mechanisms to ensure continuous monitoring of IoT systems and rapid deployment of security patches. Proactive monitoring and timely updates reduce the vulnerability window, mitigating potential threats to the IoT ecosystem;
- Interoperability testing by developing comprehensive interoperability testing frameworks to verify the compatibility of IoT devices with different platforms and protocols. Ensuring interoperability reduces the likelihood of integration challenges and enhances the overall reliability of smart home and building IoT systems.
6. Conclusions
Funding
Data Availability Statement
Conflicts of Interest
Abbreviations
AI | Artificial Intelligence |
API | Application Programming Interface |
AWS | Amazon Web Services |
BaaS | Building as a Service |
BACS | Building Automation and Control Systems |
BIM | Building Information Modeling |
BLE | Bluetooth Low Energy |
BMS | Building Management Systems |
CoAP | Constrained Application Protocol |
DoS | Denial-of-Service |
DSM | Demand Side Management |
DSR | Demand Side Response |
DT | Digital Twin |
DTLS | Datagram Transport Layer Security |
EPBD | Energy Performance of Buildings Directive |
FL | Federated Learning |
FM | Facility Management |
FoE | Fog of Everything |
HVAC | Heating, Ventilation, Air Conditioning |
ICT- | Information and Communications Technology |
IDS | Intrusion Detection Systems |
IoE | Internet of Everything |
IoT | Internet of Things |
IOTA | Internet of Things Application |
IPS | Intrusion Prevention Systems (IPS) |
ML | Machine Learning |
MQTT | Message Queuing Telemetry Transport protocol |
OPC | OLE for Process Control (OLE—Object Linking and Embedding) |
P2P | Peer-to-Peer |
PLC- | Programmable Logic Controller |
RES- | Renewable Energy Sources |
SoC- | System-on-a-Chip |
SRI- | Smart Readiness Indicator |
TIoT | Tactile Internet of Things |
TLS | Transport Layer Security |
WoT | Web of Things |
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Ożadowicz, A. Generic IoT for Smart Buildings and Field-Level Automation—Challenges, Threats, Approaches, and Solutions. Computers 2024, 13, 45. https://doi.org/10.3390/computers13020045
Ożadowicz A. Generic IoT for Smart Buildings and Field-Level Automation—Challenges, Threats, Approaches, and Solutions. Computers. 2024; 13(2):45. https://doi.org/10.3390/computers13020045
Chicago/Turabian StyleOżadowicz, Andrzej. 2024. "Generic IoT for Smart Buildings and Field-Level Automation—Challenges, Threats, Approaches, and Solutions" Computers 13, no. 2: 45. https://doi.org/10.3390/computers13020045
APA StyleOżadowicz, A. (2024). Generic IoT for Smart Buildings and Field-Level Automation—Challenges, Threats, Approaches, and Solutions. Computers, 13(2), 45. https://doi.org/10.3390/computers13020045