Data Predictive Control for building energy management

Achin Jain, Madhur Behl, R. Mangharam
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引用次数: 37

Abstract

Decisions on how to best optimize energy systems operations are becoming ever so complex and conflicting, that model-based predictive control (MPC) algorithms must play an important role. However, a key factor prohibiting the widespread adoption of MPC in buildings, is the cost, time, and effort associated with learning first-principles based dynamical models of the underlying physical system. This paper introduces an alternative approach for implementing finite-time receding horizon control using control-oriented data-driven models. We call this approach Data Predictive Control (DPC). Specifically, by utilizing separation of variables, two novel algorithms for implementing DPC using a single regression tree and with regression trees ensembles (random forest) are presented. The data predictive controller enables the building operator to trade off energy consumption against thermal comfort without having to learn white/grey box models of the systems dynamics. We present a comprehensive numerical study which compares the performance of DPC with an MPC based energy management strategy, using a single zone building model. Our results demonstrate that performance of DPC is comparable to an MPC controller, with only 3.8% additional cost in terms of optimal objective function and within 95% in terms of R2 score, thereby making it an alluring alternative to MPC, whenever the associated cost of learning the model is high.
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建筑能源管理的数据预测控制
如何优化能源系统运行的决策变得越来越复杂和矛盾,基于模型的预测控制(MPC)算法必须发挥重要作用。然而,阻碍MPC在建筑中广泛采用的一个关键因素是与学习基于底层物理系统动力学模型的第一性原理相关的成本、时间和精力。本文介绍了一种利用面向控制的数据驱动模型实现有限时间后退水平控制的替代方法。我们称这种方法为数据预测控制(DPC)。具体而言,利用变量分离,提出了单回归树和回归树集成(随机森林)两种实现DPC的新算法。数据预测控制器使建筑操作员能够在能耗和热舒适之间进行权衡,而无需学习系统动力学的白盒/灰盒模型。我们提出了一项全面的数值研究,比较了DPC与基于MPC的能源管理策略的性能,使用单一区域建筑模型。我们的研究结果表明,DPC的性能与MPC控制器相当,在最优目标函数方面只有3.8%的额外成本,在R2分数方面在95%以内,因此,无论学习模型的相关成本高,DPC都是MPC的诱人替代品。
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