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Thermal comfort prediction using normalized skin temperature in a uniform built environment

机译:在统一的建筑环境中使用归一化的皮肤温度预测热舒适度

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Thermal comfort prediction can be instrumental in bridging the gap between energy efficiency and occupants' comfort by utilizing the predicted thermal state (Discomfort/Comfort) of occupant as a control criterion for the cooling systems in buildings. Skin temperature, through its heat-transfer properties, plays a significant role in the thermoregulation principle that governs thermal comfort. This paper presents a method termed as Predicted Thermal State (PTS) model, which uses the peripheral skin temperature and its gradient features from a single body location to evaluate the thermal state. The model introduces a novel normalization process to resolve both inter and intra individual differences by incorporating body surface area and clothing insulation, respectively. Human subject experiments were conducted, during which each subject's skin temperatures and respective thermal sensation surveys were recorded while environmental conditions varied from cold/cool-to-neutral levels (18-27 degrees C). This study revealed that the combined information of skin temperature and its gradient carry significant potential to establish the thermal state. Four model input cases were compared using Support Vector Machine (SVM) and Extreme Learning Machine (ELM) based classifiers. While non-normalized skin temperature alone could accurately estimate only about 65% of thermal states, the PTS model based on normalized skin features accurately predicted 87% of thermal states. (C) 2017 Elsevier B.V. All rights reserved.
机译:通过将乘员的预测热状态(不舒适/舒适)用作建筑物冷却系统的控制标准,热舒适预测可有助于弥合能源效率和乘员舒适度之间的差距。通过其传热特性,皮肤温度在控制热舒适性的温度调节原理中起着重要作用。本文提出了一种称为预测热状态(PTS)模型的方法,该方法使用单个人体位置的周围皮肤温度及其梯度特征来评估热状态。该模型引入了一种新颖的归一化过程,通过分别结合体表面积和衣服隔热层来解决内部和内部个体差异。进行了人类受试者实验,在此期间记录了每个受试者的皮肤温度和各自的热感觉调查,同时环境条件从冷/凉到中性水平(18-27摄氏度)变化。这项研究表明,皮肤温度及其梯度的组合信息具有建立热状态的巨大潜力。使用基于支持向量机(SVM)和极限学习机(ELM)的分类器比较了四个模型输入案例。虽然仅非标准化皮肤温度仅可以准确估计大约65%的热状态,但是基于标准化皮肤特征的PTS模型可以准确预测87%的热状态。 (C)2017 Elsevier B.V.保留所有权利。

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