Covariance Matrix Adaptation Evolutionary Strategy with Worst-Case Ranking Approximation for Min–Max Optimization and Its Application to Berthing Control Tasks

Atsuhiro Miyagi, Yoshiki Miyauchi, A. Maki, Kazuto Fukuchi, J. Sakuma, Youhei Akimoto
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Abstract

In this study, we consider a continuous min–max optimization problem minx ∈ 𝕏 maxy ∈ 𝕐 f(x, y) whose objective function is a black-box. We propose a novel approach to minimize the worst-case objective function F(x) = maxy ∈ 𝕐 f(x, y) directly using a covariance matrix adaptation evolution strategy in which the rankings of solution candidates are approximated by our proposed worst-case ranking approximation mechanism. We develop two variants of worst-case ranking approximation combined with a covariance matrix adaptation evolution strategy and approximate gradient ascent as numerical solvers for the inner maximization problem. Numerical experiments show that our proposed approach outperforms several existing approaches when the objective function is a smooth strongly convex–concave function and the interaction between x and y is strong. We investigate the advantages of the proposed approach for problems where the objective function is not limited to smooth strongly convex–concave functions. The effectiveness of the proposed approach is demonstrated in the robust berthing control problem with uncertainty.
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最坏情况排序逼近的最小-最大优化协方差矩阵自适应进化策略及其在靠泊控制任务中的应用
在本研究中,我们考虑一个连续的最小-最大优化问题minx∈𝕏max∈𝕐f(x, y),其目标函数为一个黑盒。我们提出了一种新的方法来最小化最坏情况目标函数F(x) = max∈𝕐F(x, y),直接使用协方差矩阵适应进化策略,其中解候选的排名由我们提出的最坏情况排名近似机制近似。提出了结合协方差矩阵自适应进化策略和近似梯度上升策略的最坏情况排序近似的两种变体,作为内最大化问题的数值求解方法。数值实验表明,当目标函数为光滑强凹凸函数且x和y之间的相互作用较强时,本文提出的方法优于现有的几种方法。对于目标函数不限于光滑强凸凹函数的问题,我们研究了该方法的优点。在具有不确定性的鲁棒靠泊控制问题中验证了该方法的有效性。
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