安全的迭代软对抗行为批评家

Kai Hsu, D. Nguyen, J. Fisac
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引用次数: 3

摘要

在不受控制的环境中部署机器人需要它们在以前看不见的情况下稳健地运行,比如不规则的地形和风力条件。不幸的是,虽然来自鲁棒最优控制理论的严格安全框架难以适用于高维非线性动力学,但通过更易于处理的“深度”方法计算的控制策略缺乏保证,并且往往对不确定的操作条件表现出很少的鲁棒性。这项工作介绍了一种新的方法,通过将博弈论安全分析与模拟中的对抗强化学习相结合,为具有有界建模误差的一般非线性动力学的机器人系统实现可扩展的鲁棒安全保持控制器的综合。遵循软行为者-批评家方案,寻求安全的回退策略与对抗的“干扰”代理共同训练,该代理旨在调用模型错误的最坏情况实现以及设计者的不确定性所允许的训练与部署差异。虽然学习到的控制策略本质上不能保证安全性,但它用于构建基于前向可达性部署的具有鲁棒安全保证的实时安全过滤器(或屏蔽)。这种屏蔽可以与安全不可知控制策略结合使用,从而避免任何可能导致安全损失的任务驱动操作。我们在5D赛车模拟器中评估了基于学习的安全方法,将学习到的安全策略与数值获得的最优解进行了比较,并通过经验验证了我们提出的安全防护对最坏情况模型差异的鲁棒安全性保证。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
ISAACS: Iterative Soft Adversarial Actor-Critic for Safety
The deployment of robots in uncontrolled environments requires them to operate robustly under previously unseen scenarios, like irregular terrain and wind conditions. Unfortunately, while rigorous safety frameworks from robust optimal control theory scale poorly to high-dimensional nonlinear dynamics, control policies computed by more tractable"deep"methods lack guarantees and tend to exhibit little robustness to uncertain operating conditions. This work introduces a novel approach enabling scalable synthesis of robust safety-preserving controllers for robotic systems with general nonlinear dynamics subject to bounded modeling error by combining game-theoretic safety analysis with adversarial reinforcement learning in simulation. Following a soft actor-critic scheme, a safety-seeking fallback policy is co-trained with an adversarial"disturbance"agent that aims to invoke the worst-case realization of model error and training-to-deployment discrepancy allowed by the designer's uncertainty. While the learned control policy does not intrinsically guarantee safety, it is used to construct a real-time safety filter (or shield) with robust safety guarantees based on forward reachability rollouts. This shield can be used in conjunction with a safety-agnostic control policy, precluding any task-driven actions that could result in loss of safety. We evaluate our learning-based safety approach in a 5D race car simulator, compare the learned safety policy to the numerically obtained optimal solution, and empirically validate the robust safety guarantee of our proposed safety shield against worst-case model discrepancy.
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