TY - JOUR
T1 - Data-driven approach to develop prediction model for outdoor thermal comfort using optimized tree-type algorithms
AU - Jeong, Jaemin
AU - Jeong, Jaewook
AU - Lee, Minsu
AU - Lee, Jaehyun
AU - Chang, Soowon
N1 - Publisher Copyright:
© 2022 Elsevier Ltd
PY - 2022/12
Y1 - 2022/12
N2 - Thermal comfort can affect the productivity, health, and satisfaction of people. Although indoor thermal comfort can be controlled using heating, ventilation, and air conditioning, this is difficult for outdoor thermal comfort. Therefore, it is important for evaluating outdoor thermal comfort to manage the health and productivity of people for a specific industry, such as construction. However, conventional simulations are very difficult to conduct by non-experts. Moreover, in previous studies, simplified models have low prediction accuracy. To solve these issues, this study develops a user-friendly data-driven prediction model that maximizes prediction accuracy using an optimized tree-based machine learning algorithm. This data-driven prediction model construction for outdoor thermal comfort using machine learning is made up of three steps: (i) establishment of a database, (ii) selection of variables, and (iii) selection of prediction model. This study considers three scenarios to maximize the prediction accuracy. The results reveal that the highest prediction accuracy (95.21%) is achieved using the XGBoost algorithm. Moreover, five-fold cross-validation is conducted to validate the prediction model. It shows that the developed prediction model can accurately predict outdoor thermal comfort. Additionally, non-experts can collect input data from a public institution or a sensor and easily utilize the prediction model.
AB - Thermal comfort can affect the productivity, health, and satisfaction of people. Although indoor thermal comfort can be controlled using heating, ventilation, and air conditioning, this is difficult for outdoor thermal comfort. Therefore, it is important for evaluating outdoor thermal comfort to manage the health and productivity of people for a specific industry, such as construction. However, conventional simulations are very difficult to conduct by non-experts. Moreover, in previous studies, simplified models have low prediction accuracy. To solve these issues, this study develops a user-friendly data-driven prediction model that maximizes prediction accuracy using an optimized tree-based machine learning algorithm. This data-driven prediction model construction for outdoor thermal comfort using machine learning is made up of three steps: (i) establishment of a database, (ii) selection of variables, and (iii) selection of prediction model. This study considers three scenarios to maximize the prediction accuracy. The results reveal that the highest prediction accuracy (95.21%) is achieved using the XGBoost algorithm. Moreover, five-fold cross-validation is conducted to validate the prediction model. It shows that the developed prediction model can accurately predict outdoor thermal comfort. Additionally, non-experts can collect input data from a public institution or a sensor and easily utilize the prediction model.
KW - Hyperparameter tunning
KW - Physiological equivalent temperature
KW - Prediction model
KW - XGBoost
UR - http://www.scopus.com/inward/record.url?scp=85140061575&partnerID=8YFLogxK
U2 - 10.1016/j.buildenv.2022.109663
DO - 10.1016/j.buildenv.2022.109663
M3 - Article
AN - SCOPUS:85140061575
SN - 0360-1323
VL - 226
JO - Building and Environment
JF - Building and Environment
M1 - 109663
ER -