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首页> 外文期刊>Neural Networks and Learning Systems, IEEE Transactions on >Adaptive Approximation for Multiple Sensor Fault Detection and Isolation of Nonlinear Uncertain Systems
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Adaptive Approximation for Multiple Sensor Fault Detection and Isolation of Nonlinear Uncertain Systems

机译:非线性不确定系统多传感器故障检测与隔离的自适应逼近

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摘要

This paper presents an adaptive approximation-based design methodology and analytical results for distributed detection and isolation of multiple sensor faults in a class of nonlinear uncertain systems. During the initial stage of the nonlinear system operation, adaptive approximation is used for online learning of the modeling uncertainty. Then, local sensor fault detection and isolation (SFDI) modules are designed using a dedicated nonlinear observer scheme. The multiple sensor fault isolation process is enhanced by deriving a combinatorial decision logic that integrates information from local SFDI modules. The performance of the proposed diagnostic scheme is analyzed in terms of conditions for ensuring fault detectability and isolability. A simulation example of a single-link robotic arm is used to illustrate the application of the adaptive approximation-based SFDI methodology and its effectiveness in detecting and isolating multiple sensor faults.
机译:本文提出了一种基于自适应近似的设计方法和分析结果,用于在一类非线性不确定系统中分布式检测和隔离多个传感器故障。在非线性系统运行的初始阶段,自适应逼近用于在线学习建模不确定性。然后,使用专用的非线性观测器方案设计本地传感器故障检测和隔离(SFDI)模块。通过导出组合了来自本地SFDI模块的信息的组合决策逻辑,增强了多传感器故障隔离过程。根据确保故障可检测性和可隔离性的条件来分析所提出的诊断方案的性能。一个单链接机械臂的仿真示例用于说明基于自适应逼近的SFDI方法的应用及其在检测和隔离多个传感器故障中的有效性。

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