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Small oscillation fault detection for a class of nonlinear systems with output measurements using deterministic learning

机译:使用确定性学习的一类带有输出测量的非线性系统的小振动故障检测

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摘要

Early detection of small faults is an important issue in the literature of fault diagnosis. In this paper, for a class of nonlinear systems with output measurements, an approach for rapid detection of small oscillation faults is presented. Firstly, locally accurate approximations of unknown system dynamics and fault functions are achieved by combining a high gain observer and a deterministic learning (DL) theory. The obtained knowledge of system dynamics for both normal and fault modes is stored in constant RBF networks. Secondly, a bank of dynamical estimators are constructed for all the normal mode and oscillation faults. The knowledge obtained through DL is reused with a nonhigh-gain design. The occurrence of a fault can be detected if one of residual norms of a fault estimator becomes smaller than that of the normal estimator in a finite time. A rigorous analysis of the detectability properties of the proposed fault detection scheme is also given, which includes the fault detectability condition and the fault detection time. The attractions of the paper lie in that with output measurements, the knowledge of modeling uncertainty and nonlinear faults is obtained and then is utilized to enhance the sensitivity to small faults. (C) 2015 Elsevier B.V. All rights reserved.
机译:小故障的早期检测是故障诊断文献中的重要问题。在本文中,对于一类具有输出测量的非线性系统,提出了一种快速检测小型振荡故障的方法。首先,通过结合高增益观测器和确定性学习(DL)理论,实现了未知系统动力学和故障函数的局部精确近似。在正常和故障模式下获得的系统动力学知识都存储在恒定的RBF网络中。其次,针对所有正常模式和振荡故障构造了一组动态估计器。通过DL获得的知识可用于非高增益设计。如果故障估计器的残差范数在一定时间内小于正常估计器的残差范数,则可以检测到故障的发生。对所提出的故障检测方案的可检测性进行了严格的分析,包括故障可检测性条件和故障检测时间。本文的吸引力在于通过输出测量获得建模不确定性和非线性故障的知识,然后将其用于增强对小故障的敏感性。 (C)2015 Elsevier B.V.保留所有权利。

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