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Neural Parameter Estimators for Hybrid Fault Diagnosis and Estimation in Nonlinear Systems

机译:非线性系统混合故障诊断和估计的神经参数估计

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This paper presents a novel hybrid fault diagnosis approach to detect and estimate component faults in general nonlinear systems with full-state measurement. Unlike most existing fault diagnosis techniques, the proposed solution provides an integrated framework to simultaneously detect, isolate, and estimate the severity of faults in system components. The proposed solution consists of a bank of adaptive Neural Parameter Estimators (NPE) where each NPE in the bank is designed based on a separate parameterized fault model. Each NPE in the bank estimates its corresponding unknown Fault Parameter (FP) that is further used for fault detection and estimation purposes. Fast convergence and simple isolation policy are among the characteristic features of our proposed solution. Static neural network architecture and simple weight adaptation laws also make the proposed technique appropriate for real-time implementations. Simulation results reveal the effectiveness of the developed scheme in detecting, isolating and estimating faults in components of reaction wheel actuators of a 3-axis stabilized satellite even in presence of satellite disturbances.
机译:本文介绍了一种新型混合故障诊断方法,用于检测具有全态测量的一般非线性系统中的组件故障。与大多数现有的故障诊断技术不同,所提出的解决方案提供了一个集成框架,以同时检测,隔离和估计系统组件中的故障的严重性。所提出的解决方案包括一组自适应神经参数估计器(NPE),其中银行中的每个NPE都基于单独的参数化故障模型设计。银行中的每个NPE估计其相应的未知故障参数(FP),该参数(FP)还用于故障检测和估计目的。快速收敛和简单隔离策略是我们所提出的解决方案的特征特征。静态神经网络架构和简单的重量适应法也使得提出的技术适合实时实现。仿真结果揭示了即使在存在卫星紊乱的情况下,也甚至在3轴稳定卫星的反应轮致动器的组件中检测,隔离和估计故障的有效性。

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