Dynamic energy management with scenario-based robust MPC

Matt Wytock, N. Moehle, Stephen P. Boyd
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引用次数: 21

Abstract

We present a simple, practical method for managing the energy produced and consumed by a network of devices. Our method is based on (convex) model predictive control. We handle uncertainty using a robust model predictive control formulation that considers a finite number of possible scenarios. A key attribute of our formulation is the encapsulation of device details, an idea naturally implemented with object-oriented programming. We introduce an open-source Python library implementing our method and demonstrate its use in planning and control at various scales in the electrical grid: managing a smart home, shared charging of electric vehicles, and integrating a wind farm into the transmission network.
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具有基于场景的健壮MPC的动态能源管理
我们提出了一种简单实用的方法来管理设备网络产生和消耗的能量。我们的方法是基于(凸)模型预测控制。我们使用鲁棒模型预测控制公式来处理不确定性,该公式考虑了有限数量的可能场景。我们公式的一个关键属性是设备细节的封装,这是面向对象编程自然实现的想法。我们介绍了一个开源Python库来实现我们的方法,并演示了它在电网中各种规模的规划和控制中的使用:管理智能家居,共享电动汽车充电,以及将风电场集成到输电网络中。
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