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Stochastic model predictive control based on Gaussian processes applied to drinking water networks

机译:基于高斯过程的随机模型预测控制在饮用水网络中的应用

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摘要

This study focuses on developing a stochastic model predictive control (MPC) strategy based on Gaussian processes (GPs) for propagating system disturbances in a receding horizon way. Using a probabilistic system representation, the state trajectories considering the influence of disturbances can be obtained through the uncertainty propagation by using GPs. This fact allows obtaining the confidence intervals for state evolutions over the MPC prediction horizon that are included into the MPC objective function and constraints. The feasibility of the proposed MPC strategy considering the incorporated results of disturbance forecasting is also discussed. Simulation results obtained from the application of the proposed approach to the Barcelona drinking water network taking real demand data into account are presented. The comparison with the well-known certainty-equivalent MPC shows the effectiveness of the proposed stochastic MPC approach.
机译:这项研究的重点是开发一种基于高斯过程(GPs)的随机模型预测控制(MPC)策略,以渐进的地平线传播系统扰动。使用概率系统表示,可以通过使用GP通过不确定性传播来获得考虑干扰影响的状态轨迹。这个事实允许获得MPC预测范围内状态演化的置信区间,该置信区间包含在MPC目标函数和约束中。还讨论了考虑干扰预测结果的拟议MPC策略的可行性。提出了将建议的方法应用于巴塞罗那饮用水网络的模拟结果,其中考虑了实际需求数据。与众所周知的确定性等效的MPC的比较显示了所提出的随机MPC方法的有效性。

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