基于灵敏度分析和自适应滤波的混合动力系统主动故障诊断

M. Gholami, H. Schiøler, T. Bak
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引用次数: 6

摘要

提出了一种用于执行器故障诊断的主动故障诊断(AFD)方法。AFD方法通过注入所谓的激励输入来激励系统。在这里,基于灵敏度分析离线设计输入,从而获得每个单独系统参数的最大灵敏度。利用最大灵敏度,对相应参数的估计精度更高。故障检测和隔离是通过比较标称参数和自适应滤波器估计的参数来完成的。仿真采用高斯噪声作为输入噪声和测量噪声。该方法在前人研究得到的大型家畜杂交通风模型上进行了实现和验证。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Active fault diagnosis for hybrid systems based on sensitivity analysis and adaptive filter
An active fault diagnostic (AFD) approach for diagnosis of actuator faults is proposed. The AFD approach excites the system by injecting a so-called excitation input. Here, the input is designed off-line based on sensitivity analysis such that the maximum sensitivity for each individual system parameter is obtained. Using maximum sensitivity, results in a better precision in the estimation of the corresponding parameter. The fault detection and isolation is done by comparing the nominal parameters with those estimated by an adaptive filter. Gaussian noise is used as the input disturbance as well as the measurement noise for simulation. The method is implemented and demonstrated on the large scale livestock hybrid ventilation model which was obtained during previous research.
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