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Data-driven model predictive control for building climate control: Three case studies on different buildings

机译:数据驱动的建筑物气候控制模型预测控制:不同建筑物的三个案例研究

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摘要

Model predictive control(MPC) achieves great performance in energy management of the building. However, identifying a suitable control-oriented model for MPC is a challenging task. To overcome this problem, we attempt to apply the data-driven models which have universal approximation ability to the MPC task. In this paper, we propose a hybrid optimization algorithm, namely BSAS-LM algorithm, to solve the optimization problem with non-linear or non-convex data-driven models involved in data-driven predictive control(DDPC). To demonstrate the feasibility and scalability of the proposed hybrid optimization method, three case studies are implemented in three buildings with different geometries. The DDPC controllers are developed for each case study in three scenarios, namely constant temperature setpoint, lower temperature setpoint and pre-heating. EnergyPlus is employed to develop the building models and is then exported to Functional Mock-up Units(FMUs) for co-simulation. In the case study #1, the data-driven algorithms such as auto-regressive with external disturbance (ARX) and support vector regression(SVR) are used to develop models for a single-zone building. Those models are then applied in DDPC for climate control of the building. In the case study #2 and #3, the multilayer perceptron(MLP)-based DDPC is applied to two three-zones buildings. Results show that DDPC achieves comparable performance to the grey-box model based MPC. Besides, results also demonstrate the feasibility and scalability of the proposed method in DDPC integrated with various data-driven models.
机译:模型预测控制(MPC)在建筑物的能源管理中取得了出色的性能。但是,为MPC确定合适的面向控制的模型是一项艰巨的任务。为了克服这个问题,我们尝试将具有通用逼近能力的数据驱动模型应用于MPC任务。本文提出了一种混合优化算法,即BSAS-LM算法,以解决数据驱动预测控制(DDPC)中涉及的非线性或非凸数据驱动模型的优化问题。为了证明所提出的混合优化方法的可行性和可扩展性,在三个具有不同几何形状的建筑物中进行了三个案例研究。 DDPC控制器是针对每种情况在三种情况下开发的,即恒温设定值,较低温度设定值和预热。使用EnergyPlus开发建筑模型,然后将其导出到功能模拟单元(FMU)进行协同仿真。在案例研究1中,数据驱动算法(例如带外部干扰的自回归(ARX)和支持向量回归(SVR))用于开发单区域建筑物的模型。然后,将这些模型应用于DDPC中以控制建筑物的气候。在案例研究2和案例3中,基于多层感知器(MLP)的DDPC被应用于两个三区域建筑物。结果表明,DDPC的性能与基于灰箱模型的MPC相当。此外,结果还证明了该方法在与各种数据驱动模型集成的DDPC中的可行性和可扩展性。

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