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Evaluation of the Visual Stimuli on Personal Thermal Comfort Perception in Real and Virtual Environments Using Machine Learning Approaches

机译:使用机器学习方法评估真实和虚拟环境中对个人热舒适感的视觉刺激

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摘要

Personal Thermal Comfort models consider personal user feedback as a target value. The growing development of integrated “smart” devices following the concept of the Internet of Things and data-processing algorithms based on Machine Learning techniques allows developing promising frameworks to reach the best level of indoor thermal comfort closest to the real needs of users. The article investigates the potential of a new approach aiming at evaluating the effect of visual stimuli on personal thermal comfort perception through a comparison of 25 participants’ feedback exposed to a real scenario in a test cell and the same environment reproduced in Virtual Reality. The users’ biometric data and feedback about their thermal perception along with environmental parameters are collected in a dataset and managed with different Machine Learning techniques. The most suitable algorithm, among those selected, and the influential variables to predict the Personal Thermal Comfort Perception are identified. The Extra Trees classifier emerged as the most useful algorithm in this specific case. In real and virtual scenarios, the most important variables that allow predicting the target value are identified with an average accuracy higher than 0.99.
机译:个人热舒适模型将个人用户反馈视为目标值。遵循物联网和基于机器学习技术的数据处理算法的概念,集成式“智能”设备的发展日新月异,这使得开发有前途的框架达到了最接近用户实际需求的最佳室内热舒适度。本文通过比较25位参与者暴露于测试单元中真实场景和虚拟现实中复制的相同环境的反馈,研究了旨在评估视觉刺激对个人热舒适感的影响的新方法的潜力。用户的生物特征数据以及有关其热感知的反馈以及环境参数都收集在数据集中,并使用不同的机器学习技术进行管理。确定了最合适的算法,以及预测个人热舒适感的影响变量。在此特定情况下,额外树分类器成为最有用的算法。在实际和虚拟场景中,可以预测平均目标精度高于0.99的最重要变量可以预测目标值。

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