Eindhoven University of Technology, Department of the Built Environment, De Zaale, PO Box 513, 5600, MB Eindhoven, the Netherlands.
Technical University of Denmark, Department of Civil Engineering, Nils Koppels Allé, 2800, Kgs. Lyngby, Denmark.
Appl Ergon. 2020 May;85:103078. doi: 10.1016/j.apergo.2020.103078. Epub 2020 Feb 19.
Thermal comfort modeling has been of interest in built environment research for decades. Mostly the modeling approaches focused on an average response of a large group of building occupants. Recently, the focus has been shifted towards personal comfort models that predict individuals' thermal comfort responses. Currently, thermal comfort responses are collected from the occupants via survey. This study explored if the thermal comfort of individuals could be predicted using machine learning algorithms while relaying on the set of collected inputs from an experiment. The model was developed using experimental data including collected from a previously performed experiment in the climate chamber. Two different approaches based on the output data (thermal sensation and thermal comfort votes) and five different sets of input variables were explored. The algorithms tested were Support Vector Machine with four different Kernel functions (Linear, Quadratic, Cubic and Gaussian) and Ensemble Algorithms (Boosted trees, Bagged trees and RUSBoosted trees). The combination of occupants' heating behavior with a personal comfort system (PCS), skin temperatures, time and environmental data were used for the development of personal comfort models to predict individuals' thermal preference. The study investigated the novel combination of inputs such as the use of skin temperature and settings of the personalized heating system as parameters in predicting personal thermal comfort. The results showed that personal comfort models among all tested approaches and subjects showed the best median accuracy of 0.84 using RUSBoosted trees. Individually looking, the approach using thermal sensation output produced better prediction accuracy. On the other hand, the models based on inputs that consisted of PCS control behavior and mean and hand skin temperatures produced the best prediction accuracy when assessing all tested algorithms. The main limitation of the study is the number of test subjects, and further recommendation is to perform more experiments.
热舒适建模在建筑环境研究中已有数十年的历史。这些建模方法主要集中在对大量建筑物使用者的平均反应上。最近,人们的关注点已经转移到了预测个体热舒适反应的个人舒适模型上。目前,通过问卷调查收集热舒适反应。本研究探索了是否可以使用机器学习算法来预测个体的热舒适感,同时依赖于从实验中收集的一组输入。该模型是使用包括先前在气候室中进行的实验中收集的数据开发的。探索了两种基于输出数据(热感觉和热舒适投票)和五组不同输入变量的方法。测试的算法包括支持向量机,其中包含四种不同的核函数(线性、二次、立方和高斯)和集成算法(增强树、袋装树和 RUSBoosted 树)。使用个体的加热行为与个人舒适系统(PCS)、皮肤温度、时间和环境数据的组合来开发个人舒适模型,以预测个体的热偏好。该研究调查了将皮肤温度和个人加热系统的设置等新的输入组合作为预测个人热舒适的参数的新颖组合。结果表明,在所有测试方法和受试者中,使用 RUSBoosted 树的个人舒适模型的中位数准确性最高,为 0.84。单独来看,使用热感觉输出的方法产生了更好的预测准确性。另一方面,基于包括 PCS 控制行为以及平均和手部皮肤温度的输入的模型在评估所有测试算法时产生了最佳的预测准确性。该研究的主要局限性是测试对象的数量,进一步的建议是进行更多的实验。