论文标题
对抗性稳健线性季度控制的性能稳定性权衡
Performance-Robustness Tradeoffs in Adversarially Robust Linear-Quadratic Control
论文作者
论文摘要
虽然$ \ MATHCAL {H} _ \ infty $方法可以针对最坏情况引入鲁棒性,但通常会大大降低它们在常规随机干扰下的名义性能。尽管已知名义性能和鲁棒性之间的这种基本权衡是存在的,但它并未以定量术语进行良好的特征。为了解决这个问题,我们从机器学习中越来越无处不在的对抗训练的概念中借用,以构建一类控制器,这些控制器针对由混合随机和最差的组件组成的干扰进行了优化。我们发现,这个问题承认了一个固定的最佳控制器,该控制器具有与次优$ \ Mathcal {H} _ \ Infty $ Solutions紧密相关的简单分析形式。然后,我们提供定量的性能折衷分析,其中系统理论属性(例如可控性和稳定性)以可解释的方式明确表现出来。这为从业者提供了一般指导,以确定基于先验系统知识的鲁棒性。我们通过将控制器的性能与标准基线的性能以及绘制权衡曲线进行比较来验证我们的结果。
While $\mathcal{H}_\infty$ methods can introduce robustness against worst-case perturbations, their nominal performance under conventional stochastic disturbances is often drastically reduced. Though this fundamental tradeoff between nominal performance and robustness is known to exist, it is not well-characterized in quantitative terms. Toward addressing this issue, we borrow from the increasingly ubiquitous notion of adversarial training from machine learning to construct a class of controllers which are optimized for disturbances consisting of mixed stochastic and worst-case components. We find that this problem admits a stationary optimal controller that has a simple analytic form closely related to suboptimal $\mathcal{H}_\infty$ solutions. We then provide a quantitative performance-robustness tradeoff analysis, in which system-theoretic properties such as controllability and stability explicitly manifest in an interpretable manner. This provides practitioners with general guidance for determining how much robustness to incorporate based on a priori system knowledge. We empirically validate our results by comparing the performance of our controller against standard baselines, and plotting tradeoff curves.