Learning-Based Diagnostics for Fault Detection and Isolation in Linear Stochastic Systems

Erfaun Noorani, C. Somarakis, R. Goyal, A. Feldman, S. Rane
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Abstract

AI-enabled mechanisms are deployed to guard controlled systems against sensor anomalies. We explore a two-level architecture design in which a low-level feedback controller of a linear system uses measurements from one or more potentially unreliable sensors. These observations are prone both to sensor noise but unknown additive faults. Our proposed, high-level, guard mechanism consists of a Reinforcement Learning (RL) agent that monitors available vitals of the system. In the event of a fault on the sensor components, the RL agent automatically detects, estimates the fault, localizes and takes action to cancel the fault. In addition, we develop design methodologies for efficient training of the RL agent that take advantage of system dynamics and sensor fusion schemes. We show that the associated training cost functions can be designed so that their optimal policy achieves efficient of arbitrary constant or piece-wise constant sensor faults. To illustrate our theoretical results, we consider a linearized version of a chemical process with multiple sensors, controlled by a Linear Quadratic Gaussian (LQG) Servo-Controller with Integral Action. Our simulations show that the RL-agent is successful in localizing the faulty sensors and mitigating the effects of faults in an online fashion.
基于学习的线性随机系统故障检测与隔离诊断
部署了人工智能支持的机制来保护受控系统免受传感器异常的影响。我们探索了一种两级架构设计,其中线性系统的低级反馈控制器使用来自一个或多个可能不可靠的传感器的测量。这些观测结果容易受到传感器噪声和未知附加故障的影响。我们提出的高级保护机制由一个强化学习(RL)代理组成,该代理监视系统的可用生命体征。当传感器组件发生故障时,RL代理会自动检测、估计故障、定位并采取措施消除故障。此外,我们开发了有效训练RL代理的设计方法,利用系统动力学和传感器融合方案。我们证明可以设计相关的训练代价函数,使其最优策略能够有效地处理任意常数或分段常数传感器故障。为了说明我们的理论结果,我们考虑了一个具有多个传感器的化学过程的线性化版本,由具有积分作用的线性二次高斯(LQG)伺服控制器控制。我们的仿真表明,RL-agent能够成功地定位故障传感器并以在线方式减轻故障的影响。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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