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Fault Detection for Nonlinear Discrete-Time Systems via Deterministic Learning

机译:基于确定性学习的非线性离散系统故障检测

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This paper presents a fault detection scheme for nonlinear discrete-time systems based on the recently proposed deterministic learning (DL) theory. The scheme consists of two phases: the learning phase and the detecting phase. In the learning phase, the discrete-time system dynamics underlying normal and fault modes are locally accurately approximated through deterministic learning. The obtained knowledge of system dynamics is stored in constant RBF networks. In the detecting phase, a bank of estimators are constructed using the constant RBF networks to represent the learned normal and fault modes. By comparing the set of estimators with the monitored system, a set of residuals are generated, and the average L_1 norms of the residuals are used to compare the differences between the dynamics of the monitored system and the dynamics of the learning normal and fault modes. The occurrence of a fault can be rapidly detected in a discrete-time setting.
机译:本文基于最近提出的确定性学习(DL)理论,提出了一种非线性离散时间系统的故障检测方案。该方案包括两个阶段:学习阶段和检测阶段。在学习阶段,通过确定性学习可以局部准确地估计正常和故障模式下的离散时间系统动力学。获得的系统动力学知识存储在恒定的RBF网络中。在检测阶段,使用恒定的RBF网络构造一组估计器,以表示学习到的正常模式和故障模式。通过将一组估计量与受监视系统进行比较,会生成一组残差,并且使用残差的平均L_1范数来比较受监视系统的动态与学习正常模式和故障模式的动态之间的差异。可以在离散时间设置中快速检测到故障的发生。

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