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ThermCont: A machine Learning enabled Thermal Comfort Control Tool in a real time

机译:ThermCont:实时启用机器学习的热舒适控制工具

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Occupants' thermal comfort assessment is becoming a crucial research topic since it aims not only at improving indoor thermal comfort but also to save energy in both commercial and residential buildings. Hence, it makes buildings more sustainable. Predicted Mean Vote (PMV) model is considered as the most recognized in thermal comfort standards and was widely used to estimate thermal sensation of occupants. However, few works are dealing with the assessment and control of occupants' thermal comfort in real time and most of them do not provide mechanisms to improve occupants' comfort in case of detecting indoor thermal discomfort. In this paper, we propose ThermCont a novel machine learning based tool to predict and control occupants' thermal comfort through the PMV model, in real time. Our tool uses multiple linear regression algorithm and is based on findings from a one-year longitudinal case study of occupants' thermal comfort in office building. Moreover, we also propose a new genetic algorithm based scheme to optimize parameters values of thermal comfort, when observing occupants' thermal discomfort, and hence to improve the indoor thermal comfort. The experimental results show the efficiency of ThermCont in terms of prediction accuracy and time complexity when compared to other machine learning algorithms, in addition to its ability to control and improve occupants' thermal comfort in real time.
机译:乘员的热舒适性评估已成为一项至关重要的研究课题,因为它不仅旨在改善室内热舒适性,而且旨在节省商业和住宅建筑中的能源。因此,它使建筑物更具可持续性。预测平均投票(PMV)模型被认为是热舒适标准中最受认可的模型,被广泛用于估算乘员的热感。但是,很少有用于实时评估和控制乘员的热舒适度的工作,并且大多数都没有提供在检测到室内热不适的情况下改善乘员的舒适度的机制。在本文中,我们提出了ThermCont,它是一种基于机器学习的新颖工具,可通过PMV模型实时预测和控制乘员的热舒适度。我们的工具使用多元线性回归算法,并且基于对办公楼中居住者的热舒适度进行的为期一年的纵向案例研究的结果。此外,我们还提出了一种基于遗传算法的新方案,可以在观察乘员的热不适感时优化其热舒适度参数值,从而提高室内的热舒适度。实验结果表明,与其他机器学习算法相比,ThermCont在预测准确度和时间复杂度方面具有效率,此外还具有实时控制和改善乘员的热舒适性的能力。

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