使用可达性分析和多项式分区型通过动作投影的可证明安全的强化学习

Niklas Kochdumper;Hanna Krasowski;Xiao Wang;Stanley Bak;Matthias Althoff
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引用次数: 9

摘要

虽然强化学习在许多应用中产生了非常有希望的结果,但其主要缺点是缺乏安全保障,这阻碍了它在安全关键系统中的使用。在这项工作中,我们通过非线性连续系统的安全屏蔽来解决这个问题,该系统解决了到达回避任务。我们的安全防护通过将建议的动作投影到最接近的安全动作来防止强化学习代理应用潜在的不安全动作。这种方法被称为动作投影,并通过混合整数优化来实现。通过使用多项式区域图应用参数化可达性分析来获得动作投影的安全约束,这使得能够准确地捕捉动作对系统的非线性影响。与其他最先进的动作投影方法相比,我们的安全防护罩可以有效地处理输入约束和动态障碍,便于将空间机器人尺寸纳入安全约束,尽管存在过程噪声和测量误差,但仍能确保稳健的安全性,并且非常适合高维系统,正如我们在几个具有挑战性的基准系统上所展示的那样。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Provably Safe Reinforcement Learning via Action Projection Using Reachability Analysis and Polynomial Zonotopes
While reinforcement learning produces very promising results for many applications, its main disadvantage is the lack of safety guarantees, which prevents its use in safety-critical systems. In this work, we address this issue by a safety shield for nonlinear continuous systems that solve reach-avoid tasks. Our safety shield prevents applying potentially unsafe actions from a reinforcement learning agent by projecting the proposed action to the closest safe action. This approach is called action projection and is implemented via mixed-integer optimization. The safety constraints for action projection are obtained by applying parameterized reachability analysis using polynomial zonotopes, which enables to accurately capture the nonlinear effects of the actions on the system. In contrast to other state-of-the-art approaches for action projection, our safety shield can efficiently handle input constraints and dynamic obstacles, eases incorporation of the spatial robot dimensions into the safety constraints, guarantees robust safety despite process noise and measurement errors, and is well suited for high-dimensional systems, as we demonstrate on several challenging benchmark systems.
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