障碍贝叶斯线性回归:不确定系统安全临界控制的控制障碍条件在线学习

Lukas Brunke, Siqi Zhou, Angela P. Schoellig
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引用次数: 11

摘要

本文研究了非线性不确定控制系统的安全滤波器设计问题。我们的目标是用安全滤波器增强任意控制器,从而保证整个闭环系统保持在给定的状态约束集内,称为安全。对于动力学已知的系统,控制屏障函数(cbf)为确定系统是否安全提供了一个标量条件。对于不确定系统,提出了鲁棒或自适应CBF认证方法。然而,这些方法可能是保守的,或者要求系统具有特定的参数结构。对于更一般的不确定系统,机器学习方法已被用于近似CBF条件。这些工作通常假设学习模块在部署之前得到了充分的训练。学习期间的安全无法保证。我们提出了一种屏障贝叶斯线性回归(BBLR)方法,以保证对真实的不确定系统的CBF条件进行安全的在线学习。我们假设标称系统与真实系统之间的误差是有界的,并利用了CBF条件的结构。我们证明了我们的方法可以安全地扩展可证控制输入集,尽管系统和学习的不确定性。通过一个二维摆稳定任务的仿真验证了该方法的有效性。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Barrier Bayesian Linear Regression: Online Learning of Control Barrier Conditions for Safety-Critical Control of Uncertain Systems
In this work, we consider the problem of designing a safety filter for a nonlinear uncertain control system. Our goal is to augment an arbitrary controller with a safety filter such that the overall closed-loop system is guaranteed to stay within a given state constraint set, referred to as being safe. For systems with known dynamics, control barrier functions (CBFs) provide a scalar condition for determining if a system is safe. For uncertain systems, robust or adaptive CBF certification approaches have been proposed. However, these approaches can be conservative or require the system to have a particular parametric structure. For more generic uncertain systems, machine learning approaches have been used to approximate the CBF condition. These works typically assume that the learning module is sufficiently trained prior to deployment. Safety during learning is not guaranteed. We propose a barrier Bayesian linear regression (BBLR) approach that guarantees safe online learning of the CBF condition for the true, uncertain system. We assume that the error between the nominal system and the true system is bounded and exploit the structure of the CBF condition. We show that our approach can safely expand the set of certifiable control inputs despite system and learning uncertainties. The effectiveness of our approach is demonstrated in simulation using a two-dimensional pendulum stabilization task.
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