Fault detection for uncertain sampled-data systems via deterministic learning

Tianrui Chen, Cong Wang
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Abstract

In this paper, an approach for rapid fault detection for a class of nonlinear sampled-data systems is proposed. Firstly, a learning estimator is constructed to capture the unknown system dynamics effects in sampled-data systems. The key issue in the learning process is that partial neural weights will converge into their optimal values based on the deterministic learning theory. Then a knowledge bank can be established, which stores the knowledge of various system dynamics effects, such as the Euler approximation modeling error, effect of the unstructured modeling uncertainty and different faults dynamics. Secondly, by utilizing knowledge bank, a set of estimators are constructed. The learned knowledge can quickly be recalled to compensate the unknown system dynamics effect. As a result, the occurrence of a fault can be rapidly detected. Finally, a rigorous analysis for characterizing the detection capability of the proposed scheme is given. Simulation study is included to demonstrate the effectiveness of the approach.
基于确定性学习的不确定采样数据系统故障检测
针对一类非线性采样数据系统,提出了一种快速故障检测方法。首先,构造了一个学习估计器来捕捉采样数据系统中未知的系统动力学效应。学习过程中的关键问题是基于确定性学习理论的部分神经权值收敛到最优值。然后建立知识库,存储欧拉近似建模误差、非结构化建模不确定性影响和不同故障动态等各种系统动力学效应的知识。其次,利用知识库构造了一组估计量。学习到的知识可以快速被召回,以补偿未知的系统动力学效应。因此,可以快速检测故障的发生。最后,对该方案的检测能力进行了严格的分析。通过仿真研究验证了该方法的有效性。
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