Solar-Powered Smart Buildings: Integrated Energy Management Solution for IoT-Enabled Sustainability
Abstract
:1. Introduction
- Real-Time Energy Monitoring and Analytics: IoT-based energy monitoring systems collect and analyze energy consumption data in real time. Smart meters and sensors installed in various building systems provide granular data on energy consumption. Advanced analytics techniques, such as machine learning and data mining, process these data to identify patterns, anomalies, and opportunities for energy optimization [2,3,4].
- Solar Energy Generation: While crystalline silicon panels have been the mainstay, emerging photovoltaic technologies like perovskites and organic materials are gaining prominence for their adaptability and efficiency. Recent advancements include benzothiophene-based nonfullerene acceptors for improved indoor OPV efficiency and all-polymer solar cells with enhanced efficiency and stability for outdoor use [5,6]. Complementing these are hybrid systems that combine photovoltaic panels with solar thermal panels, offering a robust solution that maximizes energy capture and efficiency. These hybrid panels not only generate electricity but also harness solar thermal energy, making them particularly effective in comprehensive energy solutions. Additionally, IoT enables real-time monitoring, data collection, and analytics in solar power systems. This connectivity allows for the efficient tracking of solar panel performance, enabling proactive maintenance and optimization. Moreover, IoT facilitates smart grid integration, enabling seamless communication between solar installations and the broader energy infrastructure [7,8].
- Demand Response and Load Management: IoT enables demand response strategies and load management techniques in smart buildings. Real-time energy monitoring systems, combined with bidirectional communication, allow buildings to adjust their energy consumption based on demand signals and pricing fluctuations. This enables the peak load management, load shifting, and integration of renewable energy sources [9,10,11].
- Occupancy-Based Energy Optimization: IoT-based occupancy sensing technologies play a critical role in energy optimization. Occupancy sensors, motion detectors, and location-based services track the presence and movement of occupants within the building. These data are used to dynamically control lighting, heating, ventilation, and air conditioning (HVAC) systems, ensuring that energy is only used when and where it is needed [12,13].
- Intelligent Lighting and HVAC Systems: IoT enables intelligent lighting and HVAC systems that adapt to user preferences and environmental conditions. Connected lighting systems utilize occupancy sensors, daylight harvesting, and personalized controls to optimize lighting levels and reduce energy waste. Smart HVAC systems integrate occupancy data, weather forecasts, and user preferences to dynamically adjust temperature, ventilation, and airflow, improving energy efficiency and occupant comfort [14,15,16].
- Energy Management Platforms and Integration: IoT-based energy management platforms provide centralized control and monitoring of energy systems in smart buildings. These platforms integrate data from various sensors and devices, allowing building managers to visualize energy consumption, set energy-saving targets, and remotely control equipment. Integration with utility systems enables demand-side management and energy optimization at a broader scale [17,18,19,20].
2. Materials and Methods
2.1. Physical System
- Hybrid Solar Panels: These panels are crucial for harnessing solar energy and converting it into two usable forms—electricity and heat [21]. The hybrid solar panels comprise a photovoltaic (PV) layer for generating electricity and a thermal layer for capturing heat. The PV layer absorbs sunlight and converts it into electricity, which can be used directly or stored in the electrical battery system. Meanwhile, the thermal layer absorbs residual heat from sunlight not utilized by the PV layer, which is then employed for heating and DHW production through the water–water heat pump.
- Water–Water Heat Pump: This heat pump plays a vital role in providing heating, cooling, and DHW for a building [22]. It is designed to leverage the thermal energy captured by the hybrid solar panels when solar radiation is available or to utilize an external air–water heat exchanger unit when solar radiation is insufficient or during cooling operations. The heat pump’s dual function allows it to transfer heat between two water circuits, optimizing its energy efficiency and minimizing the consumption of external energy sources.
- Heat Tank: The heat tank serves as a storage unit for DHW and thermal energy, enabling the system to balance energy supply and demand more effectively. It stores DHW and the excess thermal energy produced by the hybrid solar panels when demand is low, which can be released later to provide heating during periods of limited electrical capacity, such as nighttime or overcast days. This storage capability enhances the system’s overall efficiency and resilience, ensuring that heating and DHW needs are consistently met despite fluctuating energy availability.
- Electrical Battery System with Inverters: The electrical battery system functions as an energy storage and management hub for the electricity generated by the hybrid solar panels. The battery stores excess electricity produced by the PV layer, which can be utilized during periods of higher demand or when solar radiation is limited. The system includes a photovoltaic inverter responsible for converting the direct current (DC) electricity generated by the PV layer into alternating current (AC) electricity suitable for use within the building. Additionally, the system incorporates a battery inverter to manage the charging and discharging processes of the battery and to convert the stored DC electricity back into AC electricity when needed.
- Additional Sensors for Data Acquisition: The system incorporates a range of sensors to collect key data for optimizing efficiency and comfort. These include internal sensors in inverters and heat pumps that provide critical information on energy generation, consumption, and operating parameters, such as temperatures and pressures for correct system management. In addition, the system uses a range of Modbus and KNX protocol sensors, including temperature sensors to monitor water temperatures across the different circuits, and indoor and outdoor temperature and humidity sensors to ensure optimal environmental comfort.
2.2. Control Devices and Communications
- Modbus (RTU or TCP);
- Ethernet/Wi-Fi;
- KNX.
2.2.1. Modbus
2.2.2. Ethernet/Wi-Fi
2.2.3. KNX
2.3. Control System Integration
Listing 1. Example of values read from two devices. |
Listing 2. JSON command example. |
2.4. Automatic Control
- Photovoltaic power generation and battery charge.
- Hot water temperature.
- Ambient temperature and thresholds.
- Presence (yes/no).
3. Real-World Experiments
3.1. Test in Paris
3.1.1. Description of the System
- Hybrid Solar Panels: These panels integrate photovoltaic and solar thermal power generation within a single unit. The Sunthalpower 1.0 model includes six of these panels, each with a front-facing photovoltaic panel with 405 Wp of output power and a rear-facing Sunthalpanel solar thermal panel. Collectively, the photovoltaic panels deliver a total power of 2.43 kWp, while the thermal component of the panels provides a total thermal solar power of 9.37 kWp. This design allows unconverted photovoltaic energy to be harnessed as thermal energy, feeding the heat pump’s primary circuit. Additionally, the Sunthalpanel provides active cooling of the PV array during high solar irradiance, mitigating performance degradation due to temperatures above 25 °C. Figure 5 shows the 1.0 model of the Sunthalpower system.
- Electric Battery: The Cegasa eBick Ultra 175 has a capacity of 13.4 kWh and stores energy when PV production is high, ensuring a consistent energy supply at night and during periods of low solar irradiation.
- SMA Inverters: These inverters facilitate the conversion of DC power to AC power and vice versa. They are equipped with a Modbus TCP connection, providing data on photovoltaic production, electrical consumption, and battery status, including charging percentage and charging/discharging power.
- High-Efficiency Water-to-Water Heat Pump: The Ecogeo 1-6 Pro with the Ecoforest AU6 outdoor support unit, featuring a power range of 1–6 kW, enhances the system’s thermal energy management capabilities, contributing to the overall energy efficiency of the system. It is connected via Modbus RTU, providing data on the heat source and heat distribution water circuits, compressor speed, electrical consumption, and other specific data.
- Carbon Steel Storage Tank: This 300-L tank serves as a heat storage and buffer, featuring HCFC-free, rigid injected polyurethane foam for thermal insulation. It is equipped with two NTC temperature sensors.
- Intelligent Control System: As the heart of the Sunthalpower generator, this system continuously monitors and adjusts the performance of the Sunthalpower components to maximize energy efficiency and ensure an adequate supply of heating and cooling. It is based on a Compute Module 4 (CM4), which is the industrial version of the well-known Raspberry Pi 4, with an RS-485 to USB interface for Modbus RTU devices and a gigabit Ethernet connection. This is our preferred choice as the system’s controller, but due to the semiconductor shortage we have been experiencing, it has been challenging to find stock for the other projects we are involved in.
3.1.2. Heating Results for March 2022
3.1.3. Cooling Results for July 2022
3.2. Deployment in a Renovated Semidetached Single-Family House
3.2.1. Description of the House
3.2.2. Renovation Performed
3.2.3. Results for January 2023
3.2.4. Results for February 2023
3.2.5. Summary for January and February 2023
3.2.6. Summary of Results between 1 January and 31 May 2023
4. Conclusions
Author Contributions
Funding
Data Availability Statement
Conflicts of Interest
References
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Device | Collected Data |
---|---|
Heat Pump | Water temperatures in thermal collection and generation circuits Water pressures and flows Electrical consumption Operating modes Operating parameter values |
Inverter | Photovoltaic power generation Electrical power consumption Electrical power obtained or delivered by the electrical grid Battery charge state Electrical power consumed or being charged by the battery |
Sensors | Interior and exterior temperature and humidity Water tank temperatures Indoor radiant panels surface temperature Solar thermal panels temperature |
Actuators | Valves (partially or totally open/closed) Hydraulic pumps (on/off, operation mode and flow setpoint) |
Raspberry Pi | Temperature, humidity, and operation mode settings from web user interface |
Category | January 2023 | February 2023 |
---|---|---|
Nonrenewable primary energy | 89.8% | 94.1% |
CO2 emissions | 87.4% | 92.8% |
Energy expenditure | 75.9% | 86.5% |
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© 2024 by the authors. Licensee MDPI, Basel, Switzerland. This article is an open access article distributed under the terms and conditions of the Creative Commons Attribution (CC BY) license (https://creativecommons.org/licenses/by/4.0/).
Share and Cite
Muñiz, R.; del Coso, R.; Nuño, F.; Villegas, P.J.; Álvarez, D.; Martínez, J.A. Solar-Powered Smart Buildings: Integrated Energy Management Solution for IoT-Enabled Sustainability. Electronics 2024, 13, 317. https://doi.org/10.3390/electronics13020317
Muñiz R, del Coso R, Nuño F, Villegas PJ, Álvarez D, Martínez JA. Solar-Powered Smart Buildings: Integrated Energy Management Solution for IoT-Enabled Sustainability. Electronics. 2024; 13(2):317. https://doi.org/10.3390/electronics13020317
Chicago/Turabian StyleMuñiz, Rubén, Raúl del Coso, Fernando Nuño, Pedro J. Villegas, Daniel Álvarez, and Juan A. Martínez. 2024. "Solar-Powered Smart Buildings: Integrated Energy Management Solution for IoT-Enabled Sustainability" Electronics 13, no. 2: 317. https://doi.org/10.3390/electronics13020317
APA StyleMuñiz, R., del Coso, R., Nuño, F., Villegas, P. J., Álvarez, D., & Martínez, J. A. (2024). Solar-Powered Smart Buildings: Integrated Energy Management Solution for IoT-Enabled Sustainability. Electronics, 13(2), 317. https://doi.org/10.3390/electronics13020317