Optimizing Space Heating in Buildings: A Deep Learning Approach for Energy Efficiency
Abstract
:1. Introduction
- i.
- This study develops a robust temperature prediction model using LSTM, GRU, and Transformer architectures, specifically tailored to individual building zones. This approach ensures accurate thermal management, enhancing occupant comfort while minimizing energy consumption.
- ii.
- A two-stage machine learning framework is proposed, where temperature predictions are first generated for different building zones and then used to estimate global space heating consumption (SHC). By leveraging these predictions, this study optimizes energy use across multiple zones, ensuring efficient heating distribution.
- iii.
- Custom loss functions are introduced to regulate temperature variations while minimizing energy consumption. These loss functions enforce thermal comfort constraints and promote energy efficiency, making them crucial for balancing occupant comfort with sustainable building management.
2. Related Work
2.1. Energy Consumption Forecasting in Buildings
2.2. Thermal Comfort and HVAC System Optimization
2.3. Prediction Models for Smart Buildings and District Heating
Ref. | Year | Focus | Dataset | Technique | Result | Limitation |
---|---|---|---|---|---|---|
Ghahramani et al. [22] | 2014 | Personalized HVAC control for energy efficiency | The dataset collected from an occupant | Knowledge-based optimization | Average daily airflow reduction of 57.6 m3/h (12.08%) | Potential limitations in scalability and generalizability |
Ghahramani et al. [18] | 2018 | Analyzing HVAC control policies | DOE references small office buildings in three U.S. climate zones | EnergyPlus simulations | Building-level annual control achieves 27.76% to 50.91% energy savings | Reliance on simulation data and simplified thermal comfort modeling |
Aryal and Becerik-Gerber [28] | 2018 | Comfort-driven zone-level setpoints | RP884 database | Simulation and quantification | 25% increase in occupant satisfaction, 2.1% energy savings | Difficulty in meeting ASHRAE requirements for occupant satisfaction |
Huang et al. [25] | 2020 | Indoor temperature prediction and heating system control | Data from a smart building sensor network | AR, XGBoost | Predicted warm-up time: 19 min, Target temperature: 22.4 °C | Assumes stationary ambient conditions for predictive accuracy |
Chen et al. [19] | 2021 | Data-driven thermal comfort optimization | ASHRAE Global Thermal Comfort Database II | Support Vector Machine (SVM), Random Forest | Total cost savings exceed CNY 1.5 million | Scalability to different building types or climates. |
Yadav and Kowli [16] | 2022 | Simulation framework for HVAC optimization | Thermal behavior and energy consumption data collected from various sensors | Regression-based spatial thermal mapping | More energy savings compared to traditional zonal comfort optimization | Uncertain reliability of model performance |
Mahjoub et al. [17] | 2022 | Short-term power consumption forecasting | Power consumption data from Péronne city, France | LSTM, GRU, and Drop-GRU | Drop-GRU produced better accuracy and prediction speed, with low RMSE and MAE, and high R (near +1) | Learning time depends on the forecasting method used |
Talami et al. [21] | 2023 | HVAC energy consumption optimization | U.S. DOE reference building energy models | HVAC zone temperature setpoint optimizer | Additional energy savings of 2–10% achieved | Static occupancy rates and specific problem formulation may limit generalizability to different scenarios |
Almeida et al. [20] | 2023 | Adaptable strategy for HVAC setpoints | Smart thermostat data from European households | Predictive indoor temperature models | Energy savings up to 5.2% | Feasibility on resource-constrained smart thermostat devices |
Li et al. [23] | 2023 | Demand response control strategy | Historical temperature and humidity data of the office building | Heat balance equations, RBFneuralnetwork | 5.92% reduction in electricity consumption and 6.81% decrease in operational costs during DR periods | Applicability to different building types and climates may vary |
Qaisar et al. [27] | 2023 | Building occupancy prediction | Operational data from HVAC system | Transformer network (OPTnet) | Superior performance in accuracy and mean squared error compared to other method | Dataset only includes HVAC operational hours |
Cui et al. [24] | 2024 | Heat load prediction | 1100 h dataset from a heat exchanger station | CNN, LSTM | R2 = 0.9962, MSE = 0.0001, MAE = 0.0082 | Limited to a single dataset and short observation period |
Yang et al. [26] | 2024 | Heat load prediction in district heating systems | Data from DHS in a multifunctional region | Autoencoder, grey wolf optimization, Gated Recurrent Unit | RMSE: 47.90, MAPE: 2.17% | Insufficient data, requiring augmentation for improved model performance |
Jing et al. [29] | 2024 | Energy management optimization in buildings | Real data from a building in Nanjing | Deep policy gradient decision making | Effective balance of energy efficiency and user comfort | Optimized only for a specific time frame |
3. Dataset
3.1. Heating Consumption Data
3.2. Weather Variables from Building Weather Station (BWS)
3.3. Hourly Temperature Trends in Building Zones
3.4. Space Heating Consumption and Air Temperature
3.5. Variables and Aggregation
3.5.1. Area Temperature Variables
3.5.2. Building Weather Station Variables
- BWS_air_pressure: Atmospheric pressure at the building location.
- BWS_air_temperature: External air temperature recorded by the BWS.
- BWS_wind_speed: Speed of the wind measured by the BWS.
- BWS_wind_direction: Direction from which the wind is blowing.
- BWS_relative_humidity: Humidity level in the atmosphere.
- BWS_global_radiation: Amount of solar radiation received.
3.5.3. Space Heating Consumption Variables
3.5.4. Time-Related Variables
4. Proposed Methodology
4.1. Preprocessing
4.1.1. Extracting Date and Time Components
4.1.2. Determining Seasons
4.1.3. Handling Missing Values
4.1.4. Feature Engineering
4.1.5. Grouping Building Areas
4.1.6. Data Scaling
4.1.7. Data Splitting
4.2. Area Temperature and Space Heating Consumption Prediction in Building Areas
4.2.1. LSTM Model
4.2.2. GRU Model
4.2.3. Transformer Model
4.2.4. Evaluation and Model Saving
4.3. Optimizing Space Heating Consumption While Maintaining Occupant Comfort
4.3.1. Model 1: Predicting Area Temperatures
- Input and Output Handling:
4.3.2. Model 2: Predicting Space Heating Consumption
4.3.3. Custom Loss Function Design
4.3.4. Mathematical Formulation of Loss Function
4.3.5. Model Evaluation
5. Results and Discussion
5.1. Area Temperature and SHC Forecasting
5.2. Optimizing SHC for Occupant Comfort Using Predictive Modeling
5.2.1. Experimental Setup
5.2.2. Performance Evaluation
5.3. Assessment of Indoor Thermal Comfort
6. Limitation
7. Conclusions
Author Contributions
Funding
Data Availability Statement
Conflicts of Interest
Nomenclature
Term | Description |
AT | Area Temperature |
BWS | Building Weather Station |
CA | Common Area |
LSTM | Long Short-Term Memory model |
GRU | Gated Recurrent Unit model |
MSE | Mean Squared Error |
MAE | Mean Absolute Error |
NT | North Tower |
R-squared (R2) | Coefficient of determination, a statistical measure of the goodness of fit |
SHC | Space Heating Consumption |
ST | South Tower |
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Aggregated Variable | Component Variables | Aggregation Description |
---|---|---|
CA_0_5 | ‘CA0_E‘, ‘CA0_W‘, ‘CA1‘, ‘CA2_E‘, ‘CA2_W‘, ‘CA3‘, ‘CA4_A1‘, ‘CA4_A2‘, ‘CA5‘ | Common Areas on floors 0–5 |
NT_0_13 | ‘NT0_1_NO‘, ‘NT0_1_NW‘, ‘NT10_13_NO‘, ‘NT10_13_NW‘, ‘NT2_5_NO‘, ‘NT2_5_NW‘, ‘NT6_9_NO‘, ‘NT6_9_NW‘ | North Tower on floors 0–13 |
ST_0_13 | ‘ST0_1_SO‘, ‘ST0_1_SW‘, ‘ST10_13_SO‘, ‘ST10_13_SW‘, ‘ST2_5_SO‘, ‘ST2_5_SW‘, ‘ST6_9_SO‘, ‘ST6_9_SW‘ | South Tower on floors 0–13 |
NT_14_25 | ‘NT22_25_NO‘, ‘NT22_25_NW‘, ‘NT18_21_NO‘, ‘NT18_21_NW’, ‘NT14_17_NO’, ‘NT14_17_NW’ | North Tower on floors 14–25 |
ST_14_25 | ‘ST14_17_SO’, ‘ST14_17_SW’, ‘ST18_21_SO’, ‘ST18_21_SW’, ‘ST22_25_SO’, ‘ST22_25_SW’ | South Tower on floors 14–25 |
NT_26_37 | ‘NT26_29_NO’, ‘NT26_29_NW’, ‘NT30_33_NO’, ‘NT30_33_NW’, ‘NT34_37_NO’, ‘NT34_37_NW’ | North Tower on floors 26–37 |
ST_26_37 | ‘ST26_29_SO’, ‘ST26_29_SW’, ‘ST30_33_SO’, ‘ST30_33_SW’, ‘ST34_37_SO’, ‘ST34_37_SW’ | South Tower on floors 26–37 |
Time Variable | Description |
---|---|
year | Year of the observation |
month | Month of the observation |
day | Day of the month |
hour | Hour of the day |
day_of_week | Day of the week (0 = Monday, 6 = Sunday) |
season_fall | Indicator for fall season |
season_spring | Indicator for spring season |
season_summer | Indicator for summer season |
season_winter | Indicator for winter season |
HDH15 | Heating Degree Hours (base 15 °C) |
weekend | Indicator for weekend days (1 if weekend, 0 otherwise) |
Heating Zone | LSTM R-Squared | GRU R-Squared | Transformer R-Squared |
---|---|---|---|
CA_0_5 | 0.92 | 0.92 | 0.95 |
NT_0_13 | 0.94 | 0.94 | 0.94 |
ST_0_13 | 0.92 | 0.92 | 0.91 |
NT_14_25 | 0.95 | 0.95 | 0.95 |
ST_14_25 | 0.91 | 0.91 | 0.91 |
NT_26_37 | 0.95 | 0.95 | 0.95 |
ST_26_37 | 0.92 | 0.91 | 0.91 |
Comfort Metric | Description |
---|---|
Upper Limit Violation Percentage | The percentage of time temperatures in each area exceeded 22 °C, a critical threshold for energy efficiency. |
Deviation from 21 °C during Work Hours | The average deviation from the ideal temperature of 21 °C during work hours (6 a.m. to 6 p.m.) is crucial for maintaining occupant comfort. |
Deviation from 18 °C during Non-Work Hours | Average deviation from 18 °C during non-working hours (7 p.m. to 5 a.m.), representing energy-saving opportunities. |
Deviation from 18 °C during Weekends | Deviation from 18 °C during weekends when the building is unoccupied is needed to assess energy-saving potential. |
Smoothness Violation Percentage | The percentage of ATs that changed by more than 0.5 °C from one hour to the next is essential for avoiding discomfort and unnecessary energy consumption. |
Area | Upper Limit Violation % | Deviation from 21 °C During Work Hours | Deviation from 18 °C During Non-Work Hours | Deviation from 18 °C During Weekends | Smoothness Violation % |
---|---|---|---|---|---|
CA_0_5 | 0.00 | 0.48 | 3.33 | 3.26 | 0.00 |
NT_0_13 | 3.76 | 0.43 | 2.99 | 2.83 | 0.00 |
ST_0_13 | 23.12 | 0.75 | 3.41 | 3.31 | 0.74 |
NT_14_25 | 7.39 | 0.56 | 2.95 | 2.77 | 0.07 |
ST_14_25 | 27.22 | 0.82 | 3.50 | 3.38 | 0.94 |
NT_26_37 | 8.94 | 0.62 | 2.90 | 2.73 | 0.40 |
ST_26_37 | 26.81 | 0.95 | 3.37 | 3.26 | 3.16 |
Average | 13.89 | 0.66 | 3.21 | 3.08 | 0.76 |
Area Zones | Upper Limit Violation % | Deviation from 21 °C During Work Hours | Deviation from 18 °C During Non-Work Hours | Deviation from 18 °C During Weekends | Smoothness Violation % |
---|---|---|---|---|---|
CA_0_5 | 0.00 | 0.14 | 2.07 | 2.00 | 0.76 |
NT_0_13 | 0.00 | 0.53 | 1.02 | 0.91 | 6.25 |
ST_0_13 | 0.00 | 0.30 | 1.29 | 1.16 | 9.38 |
NT_14_25 | 0.00 | 0.46 | 0.19 | 0.02 | 14.31 |
ST_14_25 | 0.00 | 0.39 | 1.22 | 1.07 | 11.81 |
NT_26_37 | 0.00 | 0.30 | 0.35 | 0.17 | 14.72 |
ST_26_37 | 0.00 | 0.32 | 0.91 | 0.75 | 12.71 |
Average | 0.00 | 0.35 | 1.01 | 0.87 | 9.99 |
Area Zones | Upper Limit Violation % | Deviation from 21 °C During Work Hours | Deviation from 18 °C During Non-Work Hours | Deviation from 18 °C During Weekends | Smoothness Violation % |
---|---|---|---|---|---|
CA_0_5 | 0.00 | 0.98 | 2.00 | 2.00 | 0.07 |
NT_0_13 | 0.00 | 2.05 | 0.91 | 0.91 | 0.69 |
ST_0_13 | 0.00 | 1.79 | 1.16 | 1.16 | 0.83 |
NT_14_25 | 0.00 | 2.91 | 0.02 | 0.02 | 1.67 |
ST_14_25 | 0.00 | 1.86 | 1.07 | 1.07 | 1.46 |
NT_26_37 | 0.00 | 2.71 | 0.17 | 0.17 | 2.29 |
ST_26_37 | 0.00 | 2.12 | 0.75 | 0.75 | 2.36 |
Average | 0.00 | 2.06 | 0.87 | 0.87 | 1.34 |
Area Zones | Upper Limit Violation % | Deviation from 21 °C During Work Hours | Deviation from 18 °C During Non-Work Hours | Deviation from 18 °C During Weekends | Smoothness Violation % |
CA_0_5 | 0.00 | 0.19 | 2.07 | 2.00 | 5.76 |
NT_0_13 | 0.00 | 0.44 | 1.02 | 0.91 | 9.44 |
ST_0_13 | 0.00 | 0.39 | 1.29 | 1.16 | 10.14 |
NT_14_25 | 0.00 | 0.38 | 0.19 | 0.02 | 11.53 |
ST_14_25 | 0.00 | 0.56 | 1.23 | 1.08 | 11.39 |
NT_26_37 | 0.00 | 0.34 | 0.35 | 0.17 | 11.88 |
ST_26_37 | 0.00 | 0.47 | 0.91 | 0.75 | 10.97 |
Average | 0.00 | 0.40 | 1.01 | 0.87 | 10.16 |
Category | Computed Average Temperature (°C) | Target Comfort Range (Winter, °C) | Compliance with EN 16798-1 (Category I: 21–23 °C) |
Total Area Average | 21.02 | 21–23 | Within Range |
Total Area Average Working Days | 21.15 | 21–23 | Within Range |
Total Area Average Working Hours | 21.31 | 21–23 | Within Range |
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Share and Cite
Almeida, F.; Castelli, M.; Corte-Real, N.; Manzoni, L. Optimizing Space Heating in Buildings: A Deep Learning Approach for Energy Efficiency. Energies 2025, 18, 2471. https://doi.org/10.3390/en18102471
Almeida F, Castelli M, Corte-Real N, Manzoni L. Optimizing Space Heating in Buildings: A Deep Learning Approach for Energy Efficiency. Energies. 2025; 18(10):2471. https://doi.org/10.3390/en18102471
Chicago/Turabian StyleAlmeida, Fernando, Mauro Castelli, Nadine Corte-Real, and Luca Manzoni. 2025. "Optimizing Space Heating in Buildings: A Deep Learning Approach for Energy Efficiency" Energies 18, no. 10: 2471. https://doi.org/10.3390/en18102471
APA StyleAlmeida, F., Castelli, M., Corte-Real, N., & Manzoni, L. (2025). Optimizing Space Heating in Buildings: A Deep Learning Approach for Energy Efficiency. Energies, 18(10), 2471. https://doi.org/10.3390/en18102471