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Neural observer-based small fault detection and isolation for uncertain nonlinear systems

机译:基于神经观察者的小故障检测和不确定非线性系统的隔离

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摘要

Small faults (some weak faults with a tiny magnitude) are difficult to detect and may cause severe problems leading to degrading the system performance. This paper proposes an approach to estimate, detect, and isolate small faults in uncertain nonlinear systems subjected to model uncertainties, disturbances, and measurement noise. A robust observer is developed to alleviate the lack of full state measurement. Using the estimated state, a dynamical radial basis function neural networks observer is designed in form of LMI problem to accurately learn the function of the inseparable mixture between modeling uncertainty and the small fault. By exploiting the knowledge obtained by the learning phase, a bank of observers is constructed for both normal and fault modes. A set of residues is achieved by filtering the differences between the outputs of the bank of observers and the monitored system output. Due to the noise dampening characteristics of the filters and according to the smallest residual principle, the small faults can be detected and isolated successfully. Finally, rigorous analysis is performed to characterize the detection and isolation capabilities of the proposed scheme. Simulation results are used to prove the efficacy and merits of the proposed approach.
机译:小故障(具有微小幅度的弱故障)难以检测,可能导致严重的问题导致系统性能降低。本文提出了一种估计,检测和分离不确定的非线性系统中的小故障的方法,该系统经历了模型不确定性,干扰和测量噪声。开发了一种强大的观察者来缓解缺乏全状态测量。使用估计状态,动态径向基函数神经网络观测器以LMI问题的形式设计,以准确地学习模型不确定性和小故障之间的不可分割混合物的功能。通过利用学习阶段获得的知识,为正常和故障模式构建了一组观察者。通过过滤观察者群和监控系统输出的输出之间的差异来实现一组残留物。由于过滤器的噪声阻尼特性和根据最小的残余原理,可以检测到小故障并成功分离。最后,进行严格的分析以表征所提出的方案的检测和隔离能力。模拟结果用于证明所提出的方法的功效和优点。

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