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Handling Long Horizons in MPC: A Stochastic Programming Approach

机译:在MPC中处理长远目标:一种随机编程方法

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We propose an approach to handle long horizons in model predictive control (MPC). The approach is based on the observation that, if periodicity constraints are enforced over short-term stages, the long horizon MPC problem can be cast as a stochastic programming (SP) problem. The SP representation reveals a mechanism to construct a hierarchical MPC scheme under which a high-level (long-horizon) MPC controller provides periodic state targets to guide a low-level (short-term) MPC controller. We show that this hierarchical scheme is optimal under nominal (perfect forecast) conditions and can be extended to handle imperfect forecasts by correcting the targets in real-time. We demonstrate our concepts using a building system with stationary battery storage, where the goal is to use the battery to mitigate monthly demand charges while collecting revenue from hourly frequency regulation markets. We demonstrate that the hierarchical MPC scheme yields improved performance over standard MPC schemes because it can systematically capture long-term effects.
机译:我们提出了一种在模型预测控制(MPC)中处理长期目标的方法。该方法基于以下观察结果:如果在短期阶段强制执行周期性约束,则可以将长距离MPC问题转换为随机规划(SP)问题。 SP表示揭示了一种构造层次化MPC方案的机制,在该机制下,高级(水平)MPC控制器提供周期性的状态目标,以指导低级(短期)MPC控制器。我们表明,这种分层方案在名义(完美预测)条件下是最佳的,并且可以扩展为通过实时校正目标来处理不完美的预测。我们使用带有固定电池存储的建筑系统演示了我们的概念,该系统的目标是使用电池减轻每月的需求费用,同时从每小时的频率调节市场中收取收入。我们证明了分层MPC方案比标准MPC方案具有更高的性能,因为它可以系统地捕获长期影响。

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