基于模型的故障诊断系统验证使用可达性分析

Model-Based Fault Diagnosis System Verification Using Reachability Analysis

IEEE Transactions on Systems, Man, and Cybernetics: Systems · 2017
被引 60
ABS 3

中文导读

本文提出用可达性分析方法,定量评估不确定性对故障指示信号的影响,从而验证故障诊断系统在真实条件下的有效性,并帮助选择阈值以降低误报和漏报率。

Abstract

In model-based fault detection and isolation (FDI) systems, fault indicating signals (FISs) such as residuals and fault estimates are corrupted by various noises, uncertainties and variations. It becomes challenging to verify whether an FDI system still works or not in real life applications. It is also challenging to select a threshold so that false alarm rate and missed detection rate are kept low depending on real operation conditions. This paper proposes solutions to the aforementioned problems by quantitatively analyzing the effect of uncertainties on FIS. The problems are formulated into reachability analysis problem for uncertain systems. The reachable sets of FIS are calculated under normal and selected faulty cases, respectively. From these reachable sets, the effectiveness of an FDI system can be qualitatively verified under described uncertainties. A dedicated threshold can be further chosen to be robust to all possible described uncertainties. As a by-product, the minimum detectable fault can also be quantitatively determined by checking the intersection of the computed reachable sets. The proposed approach is demonstrated by evaluating an FDI algorithm of a motor in the presence of parameter uncertainties, unknown load, and sensor noises, where a fault estimation-based approach is adopted to diagnose amplifier, velocity, and current sensor faults.

故障检测与隔离可达性分析不确定性系统阈值选择