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Learning Optimization Friendly Comfort Model for HVAC Model Predictive Control

机译:用于HVAC模型预测控制的学习优化友好舒适度模型

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Heating, Ventilation and Air Conditioning(HVAC) systems perform environmental regulations to provide thermal comfort and acceptable indoor air quality. Recently optimization based Model Predictive Control (MPC) has shown promising results to improve energy efficiency of HVAC system in smart buildings. However rigorous studies on incorporating data driving comfort requirement into the MPC framework are lacking. Previous research on comfort learning usually ignores the restrictions of the downstream control and merely focuses on utilizing existing machine learning tools, which induce undesirable non-linear coupling in decision variables. In this work, we adopt a novel "learning for application" scheme. The idea is to describe user comfort zone by a Convex Piecewise Linear Classifier (CPLC), which is directly pluggable for the optimization in MPC. We analyze the theoretical generalization performance of the classifier and propose a cost sensitive large margin learning formulation. The learning problem is then solved by online stochastic gradient descent with Mixed Integer Quadratic Program (MIQP) initialization. Experimental results on publicly available comfort data set validates the performance of CPLC and the training algorithm. HVAC MPC case studies show that the proposed method enables much better exploitation and seamless integration of individual comfort requirement in the MPC framework.
机译:加热,通风和空调(HVAC)系统执行环境法规,以提供热舒适性和可接受的室内空气质量。最近,基于优化的模型预测控制(MPC)已显示出可喜的成果,可提高智能建筑中HVAC系统的能源效率。但是,缺乏将数据驱动舒适性要求纳入MPC框架的严格研究。先前关于舒适性学习的研究通常忽略了下游控制的限制,而只专注于利用现有的机器学习工具,这会在决策变量中引起不良的非线性耦合。在这项工作中,我们采用了一种新颖的“应用学习”方案。想法是通过凸分段线性分类器(CPLC)描述用户舒适区,该分类器可直接插入以进行MPC优化。我们分析了分类器的理论泛化性能,并提出了一个成本敏感的大幅度学习公式。然后通过使用混合整数二次程序(MIQP)初始化的在线随机梯度下降解决学习问题。公开的舒适度数据集上的实验结果验证了CPLC和训练算法的性能。暖通空调MPC案例研究表明,所提出的方法能够更好地利用MPC框架中的个人舒适度要求并将其无缝集成。

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