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Thermal Sensation Modeling and Experiments for Liquid-Cooled Garments

机译:液冷衣服的热敏观建模与实验

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摘要

Liquid-cooled garment (LCG) is a promising personal thermal management (PTM) technique that satisfies the individual thermal comfort requirement by creating a microclimate around the human body. Thermal sensation, which is defined as "the wearer's sense of temperature between hot and cold," is a helpful target for designing an LCG with good thermal comfort. There are just a few methods to predict the thermal sensation of the LCGs. In addition, the previous prediction methods related to the conventional heating, ventilation, and air conditioning (HVAC) systems cannot be directly applied to the LCG, due to the lack of consideration of some dominating characteristics of the LCG and the human body. To solve this problem, a neural network model was proposed to predict the thermal sensation of wearers of LCGs, taking physiological parameters [heart rate (HR), skin temperatures, and tympanic temperature] and physical parameters [ambient temperature (AT) and relative humidity (RH)] including water inlet temperature of LCGs into consideration. Experiments were carried out to obtain the model training data under various conditions. After optimization, the neural network model performs excellently, which shows the potential to predict the thermal sensation for LCGs. The correlation analysis indicates that water inlet temperature is the most correlated parameter to thermal sensation in LCGs.
机译:液冷式衣服(LCG)是一种有前途的个人热管理(PTM)技术,通过在人体周围产生微气候来满足单独的热舒适要求。热敏感觉定义为“佩戴者在热冷和冷之间的温度感”是一个有用的目标,用于设计LCG,具有良好的热舒适度。只有几种方法来预测LCG的热敏感。另外,由于缺乏考虑LCG和人体的一些主导特征,不能直接施加与传统加热,通风和空调(HVAC)系统相关的先前的预测方法不能直接施加到LCG。为了解决这个问题,提出了一种神经网络模型来预测LCG的佩戴者的热感,以生理参数[心率(HR),皮肤温度和鼓膜,物理参数[环境温度(AT)和相对湿度] (RH)]包括LCG的进水温度。进行实验以在各种条件下获得模型培训数据。在优化之后,神经网络模型表现出色,这表明了预测LCG的热敏的可能性。相关性分析表明进水温度是LCGS中热敏的最相关的参数。

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