最佳控制是否总能从更好的预测中获益?预测性最优控制的分析框架

Xiangrui Zeng, Cheng Yin, Zhouping Yin
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引用次数: 0

摘要

预测 + 优化控制 "方案在汽车、交通、机器人和楼宇控制等众多应用中表现出良好的性能。在实践中,预测结果在优化控制设计过程中被简单地认为是正确的。然而,在现实中,这些预测结果可能永远不会完美。在传统的随机最优控制公式下,很难回答 "如果预测错误怎么办 "这样的问题。本文提出了一个预测最优控制的分析框架,在这个框架中,关于未来的主观信念不再被认为是完美的。本文提出了一个名为 "隐藏预测状态 "的新概念,以建立预测因子、主观信念、控制策略和目标控制性能之间的联系。基于这一框架,对预测评估问题进行了分析。考虑了三种常用的预测器评价指标,包括均方误差、后悔度和对数概率。结果表明,使用均方误差和对数似然都不能保证预测误差和最优控制成本之间的单调关系。为了保证控制成本的改善,建议预测器应与控制性能一起评估,例如使用最优控制成本或遗憾值来评估预测器。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Does Optimal Control Always Benefit from Better Prediction? An Analysis Framework for Predictive Optimal Control
The ``prediction + optimal control'' scheme has shown good performance in many applications of automotive, traffic, robot, and building control. In practice, the prediction results are simply considered correct in the optimal control design process. However, in reality, these predictions may never be perfect. Under a conventional stochastic optimal control formulation, it is difficult to answer questions like ``what if the predictions are wrong''. This paper presents an analysis framework for predictive optimal control where the subjective belief about the future is no longer considered perfect. A novel concept called the hidden prediction state is proposed to establish connections among the predictors, the subjective beliefs, the control policies and the objective control performance. Based on this framework, the predictor evaluation problem is analyzed. Three commonly-used predictor evaluation measures, including the mean squared error, the regret and the log-likelihood, are considered. It is shown that neither using the mean square error nor using the likelihood can guarantee a monotonic relationship between the predictor error and the optimal control cost. To guarantee control cost improvement, it is suggested the predictor should be evaluated with the control performance, e.g., using the optimal control cost or the regret to evaluate predictors. Numerical examples and examples from automotive applications with real-world driving data are provided to illustrate the ideas and the results.
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