利用基于冷热环境生理参数的机器学习策略建立热舒适模型

IF 4.3 2区 环境科学与生态学 Q1 CONSTRUCTION & BUILDING TECHNOLOGY Indoor air Pub Date : 2024-01-19 DOI:10.1155/2024/9427822
Tseng-Fung Ho, Hsin-Han Tsai, Chi-Chih Chuang, Dasheng Lee, Xi-Wei Huang, Hsiang Chen, Chin–Chi Cheng, Yaw-Wen Kuo, Hsin-Hung Chou, Wei-Han Hsiao, Ching Hsu Yang, Yung-Hui Li
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引用次数: 0

摘要

空调系统已成为我们日常生活中不可或缺的一部分,以保证生活质量。然而,随着人工智能技术的飞速发展,如何有效使用空调,提高热舒适度和降低能耗至关重要。本研究探讨了人体生理参数响应与热感投票(TSV)之间的相关性,以评估各种冷热刺激的舒适度。在冷风、热风和热辐射刺激下,体表温度、皮肤血流量(SBF)和皮肤表面出汗面积这三个生理参数的变化与TSV值均与刺激量呈正相关,但并非完全线性关系。在三个生理参数中,前额皮肤温度与 TSV 的关系最为密切,其次是 SBF 和汗液。在三种刺激中,冷风刺激与 TSV 和前额温度的关系最密切,其次是热辐射和热风刺激。通过三种不同的机器学习模型,即随机森林(RF)模型、支持向量机(SVM)模型和神经网络(NN)模型,应用冷风、热风和热辐射刺激作为模型的输入,研究了三种生理参数的变化。此外,还通过 TSV 对模型进行了评估和验证。结果显示,在三种不同的机器学习方法中,RF 的准确度最高。所建立的热舒适度模型可以预测用户的实时热舒适度感受,从而优化空调设备性能,营造健康节能的舒适环境。
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Thermal Comfort Model Established by Using Machine Learning Strategies Based on Physiological Parameters in Hot and Cold Environments

The air-conditioning systems have become an indispensable part of our daily life for keeping the quality of life. However, to improve the thermal comfort and reduce energy consumption is crucial to use the air conditioners effectively with rapid development of artificial intelligence technology. This study explored the correlation between the response of human physiological parameters and thermal sensation voting (TSV) to evaluate the comfort level among various cold and hot stimulations. The variations of the three physiological parameters, which were body surface temperature, skin blood flow (SBF), and sweat area on the skin surface, and TSV values were all positively correlated with the stimulation amount under the stimulation of cold wind, hot wind, and heat radiation, but the relationship was not completely linear. Among the three physiological parameters, the forehead skin temperature has the closest relationship with TSV, followed by the SBF and sweat. Among three stimulations, the cold wind stimulation causes the closest relationship between TSV and forehead temperature, followed by the radiation and hot wind stimulations. Through three different machine learning models, namely, random forest (RF) model, support vector machine (SVM) model, and neural network (NN) model, the stimulation of cold wind, hot wind, and heat radiation was applied to investigate the variation of the three physiological parameters as the input of the models. Moreover, the models were evaluated and verified by TSV. The results revealed that among the three different machine learning methods, RF had the best accuracy. The established thermal comfort models can predict the real-time user’s thermal comfort feeling, so that air-conditioning equipment’s performance can be optimized to create a healthy and energy-saving comfortable environment.

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来源期刊
Indoor air
Indoor air 环境科学-工程:环境
CiteScore
10.80
自引率
10.30%
发文量
175
审稿时长
3 months
期刊介绍: The quality of the environment within buildings is a topic of major importance for public health. Indoor Air provides a location for reporting original research results in the broad area defined by the indoor environment of non-industrial buildings. An international journal with multidisciplinary content, Indoor Air publishes papers reflecting the broad categories of interest in this field: health effects; thermal comfort; monitoring and modelling; source characterization; ventilation and other environmental control techniques. The research results present the basic information to allow designers, building owners, and operators to provide a healthy and comfortable environment for building occupants, as well as giving medical practitioners information on how to deal with illnesses related to the indoor environment.
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