Robust state fault diagnosis in nonlinear discretetime systems with modelling uncertainties; using an automated intelligent methodology

L. Mahmoodi, M. A. Shoorehdeli
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Abstract

Modern systems are required to guarantee a high degree of safety and self-diagnostics capabilities. This paper investigates the problem of state fault diagnosis in nonlinear systems with modeling uncertainties. In contrast with common literature, the fault diagnosis scheme is proposed in discrete time domain. This property relaxes the risk of stability and performance degradation in deriving discrete equivalent of continuous methods. An estimator is designed in order to generate residual signal by utilizing a proper nonlinear state transformation. A robust compensator term is implemented in estimator to decrease effect of modeling uncertainties and approximation error on residual signal. When the residual signal is exceeded detection threshold, an on-line fault approximator is turned on and trained by appropriate parameter update law. An extra term is considered in update rule to overcome the need of persistency of excitation (PE). The implement of all robust compensator term, PE relaxing term and proper parameter adaption law improve the accuracy of fault reconstruction. The result would be obviously vital in tolerant and time-life prediction stages after fault diagnosis.
具有建模不确定性的非线性离散系统鲁棒状态故障诊断使用自动化智能方法
现代系统需要保证高度的安全性和自我诊断能力。研究了具有建模不确定性的非线性系统的状态故障诊断问题。与一般文献不同,本文提出了离散时域故障诊断方案。这种性质减轻了在推导连续方法的离散等价时稳定性和性能下降的风险。设计了一个估计器,利用适当的非线性状态变换产生残差信号。在估计器中加入鲁棒补偿项,以减小建模不确定性和逼近误差对残差信号的影响。当残余信号超过检测阈值时,启用在线故障逼近器,并根据适当的参数更新规律进行训练。在更新规则中考虑了一个额外的项,以克服激励持久性的需要。采用全鲁棒补偿项、PE松弛项和适当的参数自适应律,提高了故障重构的精度。结果在故障诊断后的容错阶段和时间寿命预测阶段具有重要意义。
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