A Control Optimization Model for a Double-Skin Facade Based on the Random Forest Algorithm
Abstract
:1. Introduction
2. Double-Skin Facade System
3. Methodology
3.1. Spearman Correlation Coefficient
- Data preparation: First collect the data to be analyzed to calculate the correlation coefficient.
- The value of each variable is converted to a rank, and then the Spearman correlation coefficient between grades is calculated for each pair of variables. The calculation formula of the Spearman correlation coefficient is as follows [15]:
- 3.
- The correlation coefficient matrix is visualized as a heatmap, which shows the intensity of correlation between different variables by color.
3.2. Improved Random Forest
4. Experimental Analysis
4.1. Simulation and Analysis of Indoor Temperature
- Set up the project in the software;
- Calculate the wind pressures for both indoor and outdoor environments;
- Apply the calculated wind pressures to the doors and windows;
- Adhere to the Code for Design of Heating, Ventilation, and Air conditioning in Civil Buildings [19] by setting the air exchange rate to 0.5 times per hour, and conduct the simulation accordingly;
- Extend the window sashes, and establish four positions based on the window type and opening angle: 0°, 20°, 50°, and 70°; since the subject’s opening angle was limited, the DSF opening angle was chosen for these four options.
- Import the data into the thermal comfort software, and define the ventilation rate for each room type;
- Perform the necessary calculations;
- Obtain the indoor temperature corresponding to different opening angles under the same climatic conditions, with outcomes shown in Figure 7.
4.2. Optimization of Window Opening Angle
5. Conclusions
- Expand the experimental scope: Conduct experiments under a wider range of climatic conditions to further validate the performance and applicability of DSF systems, providing insights into optimization strategies under different climatic conditions and serving as a reference for broader applications.
- Optimize the optimization model: Continuously improve the algorithm and data input of the model to enhance accuracy. Comprehensively analyze other influencing factors by incorporating more meteorological data, building parameters, and indoor activity data as inputs. This will further enhance the optimization capability of the model.
- Comprehensive evaluation metrics: In addition to thermal comfort and heating performance, consider building performance metrics such as indoor air quality and energy consumption. This will provide a more holistic measurement of the performance of DSF systems, and offer additional decision support for building design and energy management.
Author Contributions
Funding
Data Availability Statement
Conflicts of Interest
References
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Window-to-Wall Ratio | Visible Light Transmittance | Visible Light Reflectance | Thermal Conductivity Coefficient (W/m2) | Shading Coefficient (SC) | Solar Heat Gain Coefficient (SHGC) |
---|---|---|---|---|---|
0.6 | 0.57 | 0.16 | 1.65 | 0.44 | 0.38 |
Influencing Factors | Degree of Correlation |
---|---|
T_out_door | Strong (0.96–1.00) |
dew_point_t | Strong (0.90–0.92) |
scatter_r | Weak (0.19–0.24) |
direct_r | Weak (0.16–0.21) |
t-sky | Moderate (0.80–0.83) |
t-ground | Moderate (0.89–0.93) |
wind_speed | Moderate (0.25–0.27) |
dry_bulb_t | Strong (0.89) |
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Sun, Q.; Du, Y.; Yan, X.; Song, J.; Zhao, L. A Control Optimization Model for a Double-Skin Facade Based on the Random Forest Algorithm. Buildings 2024, 14, 3045. https://doi.org/10.3390/buildings14103045
Sun Q, Du Y, Yan X, Song J, Zhao L. A Control Optimization Model for a Double-Skin Facade Based on the Random Forest Algorithm. Buildings. 2024; 14(10):3045. https://doi.org/10.3390/buildings14103045
Chicago/Turabian StyleSun, Qing, Yifan Du, Xiuying Yan, Junwei Song, and Long Zhao. 2024. "A Control Optimization Model for a Double-Skin Facade Based on the Random Forest Algorithm" Buildings 14, no. 10: 3045. https://doi.org/10.3390/buildings14103045
APA StyleSun, Q., Du, Y., Yan, X., Song, J., & Zhao, L. (2024). A Control Optimization Model for a Double-Skin Facade Based on the Random Forest Algorithm. Buildings, 14(10), 3045. https://doi.org/10.3390/buildings14103045