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A Novel Fault Diagnostics and Prediction Scheme Using a Nonlinear Observer With Artificial Immune System as an Online Approximator

机译:基于人工免疫系统的非线性观测器作为在线近似器的故障诊断与预测新方案

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摘要

In this paper, an observer-based fault diagnostics and prediction (FDP) scheme for a class of nonlinear discrete-time systems via output measurements is introduced by using artificial immune system (AIS) and a robust adaptive term. Traditionally, AIS was considered as an offline tool for system identification and pattern recognition whereas here AIS is utilized as an online approximator in discrete-time (OLAD) in a fault detection (FD) observer. A fault is detected when the output residual exceeds a predefined threshold. Upon detection, the OLAD is initiated to learn the unknown fault dynamics online while the robust adaptive term ensure asymptotic convergence of the output residual for a state fault whereas a bounded result for an output fault. Additionally, a mathematical equation is introduced to estimate the time-to-failure (TTF) by using the output residual and the estimated fault parameters. Finally, the performance of the proposed FDP scheme is demonstrated on an axial piston pump hardware test-bed.
机译:本文利用人工免疫系统(AIS)和鲁棒的自适应项,针对一类基于输出测量的非线性离散时间系统的基于观测器的故障诊断和预测(FDP)方案进行了介绍。传统上,AIS被认为是用于系统识别和模式识别的离线工具,而在这里AIS在故障检测(FD)观察器中被用作离散时间(OLAD)的在线近似器。当输出残差超过预定阈值时,将检测到故障。一旦检测到,就启动OLAD以在线学习未知的故障动态,而鲁棒的自适应项可确保状态故障的输出残差的渐进收敛,而输出故障的结果则是有界的。另外,引入了一个数学方程式,以通过使用输出残差和估计的故障参数来估计故障时间(TTF)。最后,在轴向柱塞泵硬件试验台上证明了所提出的FDP方案的性能。

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