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Neural Computing Thermal Comfort Index PMV for the Indoor Environment Intelligent Control System

机译:用于室内环境智能控制系统的神经计算热舒适指数PMV

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Providing indoor thermal comfort and saving energy are two main goals of indoor environmental control system. An intelligent comfort control system by combining the intelligent control and minimum power control strategies for the indoor environment is presented in this paper. In the system, for realizing the comfort control, the predicted mean vote (PMV) is designed as the control goal, and with chastening formulas of PMV, it is controlled to optimize for improving indoor comfort lever by considering six comfort related variables. On the other hand, a RBF neural network based on genetic algorithm is designed to calculate PMV for better performance and overcoming the nonlinear feature of the PMV calculation better. The formulas given in the paper are presented for calculating the expected output values basing on the input samples, and the RBF network model is trained depending on input samples and the expected output values. The simulation result is proved that the design of the intelligent calculation method is valid. Moreover, this method has a lot of advancements such as high precision, fast dynamic response and good system performance are reached, it can be used in practice with requested calculating error.
机译:提供室内热舒适性和节能是室内环境控制系统的两个主要目标。本文提出了一种结合室内智能控制和最小功率控制策略的智能舒适控制系统。在该系统中,为了实现舒适性控制,将预测平均投票(PMV)设计为控制目标,并使用PMV的惩罚公式,通过考虑六个与舒适性相关的变量进行控制,以优化室内舒适度。另一方面,设计了基于遗传算法的RBF神经网络来计算PMV,以获得更好的性能,并更好地克服PMV计算的非线性特征。给出了本文给出的公式,用于基于输入样本计算预期的输出值,并根据输入样本和预期的输出值来训练RBF网络模型。仿真结果证明了该智能计算方法的设计是有效的。而且,该方法具有较高的精度,动态响应速度快,系统性能好等优点,可以在实际应用中解决所要求的计算误差。

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