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Predictive Optimal Control with Data-Based Disturbance Scenario Tree Approximation

机译:基于数据的干扰场景树近似预测最优控制

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Efficiently computing the optimal control policy concerning a complicated future with stochastic disturbance has always been a challenge. The predicted stochastic future disturbance can be represented by a scenario tree, but solving the optimal control problem with a scenario tree is usually computationally demanding. In this paper, we propose a data-based clustering approximation method for the scenario tree representation. Differently from the popular Markov chain approximation, the proposed method can retain information from previous steps while keeping the state space size small. Then the predictive optimal control problem can be approximately solved with reduced computational load using dynamic programming. The proposed method is evaluated in numerical examples and compared with the method which considers the disturbance as a non-stationary Markov chain. The results show that the proposed method can achieve better control performance than the Markov chain method.
机译:有效地计算有关随机扰动复杂未来的最佳控制政策一直是一项挑战。 预测的随机未来干扰可以由场景树代表,但是使用场景树解决最佳控制问题通常是计算要求的。 在本文中,我们提出了一种基于数据的群集近似方法,用于方案树表示。 与流行的马尔可夫链近似不同,所提出的方法可以从先前步骤中保留信息,同时保持状态空间大小小。 然后,使用动态编程可以近似地解决预测的最佳控制问题。 在数值例子中评估所提出的方法,并与认为扰动作为非平稳马尔可夫链的方法进行比较。 结果表明,该方法可以实现比马尔可夫链法更好的控制性能。

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