论文标题
带有控制屏障功能的在线非线性控制的样品效率安全学习
Sample-efficient Safe Learning for Online Nonlinear Control with Control Barrier Functions
论文作者
论文摘要
强化学习(RL)和连续的非线性控制已成功部署在复杂的顺序决策任务的多个领域中。但是,鉴于学习过程的探索性质和模型不确定性的存在,由于缺乏安全保证,将它们应用于安全至关重要的控制任务是一项挑战。另一方面,尽管将控制理论方法与学习算法相结合,但在安全的RL应用中表明了有希望,但安全数据收集过程的样本效率尚未得到很好的解决。在本文中,我们提出了一个\ emph {可证明的}示例有效的情节安全学习框架,用于在线控制任务,以利用未知的非线性动力学系统来利用安全的探索和剥削。特别是,框架1)在随机设置中扩展控制屏障功能(CBF),以在模型学习过程中实现可证明的高概率安全性,2)整合了基于乐观的探索策略,以有效地将安全探索过程与学习的动态有效地指导\ emph {接近最佳}控制性能。我们对与理论保证的最佳控制器和概率安全性的偶发性遗憾进行了正式分析。提供了模拟结果以证明所提出算法的有效性和效率。
Reinforcement Learning (RL) and continuous nonlinear control have been successfully deployed in multiple domains of complicated sequential decision-making tasks. However, given the exploration nature of the learning process and the presence of model uncertainty, it is challenging to apply them to safety-critical control tasks due to the lack of safety guarantee. On the other hand, while combining control-theoretical approaches with learning algorithms has shown promise in safe RL applications, the sample efficiency of safe data collection process for control is not well addressed. In this paper, we propose a \emph{provably} sample efficient episodic safe learning framework for online control tasks that leverages safe exploration and exploitation in an unknown, nonlinear dynamical system. In particular, the framework 1) extends control barrier functions (CBFs) in a stochastic setting to achieve provable high-probability safety under uncertainty during model learning and 2) integrates an optimism-based exploration strategy to efficiently guide the safe exploration process with learned dynamics for \emph{near optimal} control performance. We provide formal analysis on the episodic regret bound against the optimal controller and probabilistic safety with theoretical guarantees. Simulation results are provided to demonstrate the effectiveness and efficiency of the proposed algorithm.