基于人工免疫系统的诊断和预后方案及其实验验证

Gary R. Halligan, Balaje T. Thumati, S. Jagannathan
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引用次数: 2

摘要

针对一类非线性离散系统,采用人工免疫系统(AIS)作为在线逼近器,提出了一种新的故障诊断与预测方案。传统上,AIS被认为是一种离线故障检测(FD)工具。然而,在本文中,AIS被用作离散时间(OLAD)的在线逼近器,并在所提出的故障诊断观测器中使用鲁棒自适应项。利用系统输出是单独可测量的这一事实,通过比较观测器和系统输出来确定输出残差,如果输出残差超过预定义的阈值,则检测到故障。在检测到故障后,启动olad学习未知故障动态,鲁棒自适应项保证状态故障输出残差渐近收敛,输出故障输出残差有界。此外,为了预测的目的,使用AIS的参数更新规律来估计故障时间(TTF)。最后,在轴向柱塞泵试验台上对两种失效模式进行了实验验证。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Artificial immune system-based diagnostics and prognostics scheme and its experimental verification
In this paper, a novel fault diagnostics and prediction (FDP) scheme is introduced by using artificial immune system (AIS) as an online approximator for a class of nonlinear discrete-time systems. Traditionally, AIS is considered as an offline tool for fault detection (FD). However, in this paper, AIS is utilized as an online approximator in discrete-time (OLAD) along with a robust adaptive term in the proposed fault diagnostics observer. Using the fact that the system outputs are alone measurable, an output residual is determined by comparing the observer and system outputs and a fault is detected if this output residual exceeds a predefined threshold. Upon detection, the OLADs are initiated to learn the unknown fault dynamics 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, for prognostics purposes, the parameter update law for AIS is used to estimate the time-to-failure (TTF). Finally, the performance of the proposed FDP scheme is demonstrated experimentally on an axial piston pump test-bed for two failure modes.
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