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Sensor fault detection and isolation of an autonomous underwater vehicle using partial kernel PCA

机译:使用部分内核PCA的自动驾驶水下航行器的传感器故障检测和隔离

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In this paper, partial kernel principal component analysis (PKPCA) is studied for sensor fault detection and isolation (FDI) of an autonomous underwater vehicle (AUV). Principal component analysis (PCA) is an effective health monitoring tool which can achieve acceptable results only for linear processes. In the case of nonlinear systems such as autonomous underwater vehicles, kernel PCA approach can be used which leads to more accurate health monitoring and fault diagnosis. In order to achieve fault isolation, partial KPCA is proposed where a set of residual signals is generated based on the parity relation concept. The simulation studies demonstrate that using the proposed methodology, the occurrence of sensor faults in the nonlinear six degrees of freedom (DOF) model of an AUV can be effectively detected and isolated.
机译:本文针对自主水下航行器(AUV)的传感器故障检测和隔离(FDI),研究了部分核主成分分析(PKPCA)。主成分分析(PCA)是一种有效的健康监控工具,仅对于线性过程而言,可以达到可接受的结果。对于非线性系统(例如自动水下航行器),可以使用内核PCA方法,从而实现更准确的健康监控和故障诊断。为了实现故障隔离,提出了部分KPCA,其中基于奇偶校验关系概念生成一组残差信号。仿真研究表明,使用所提出的方法,可以有效地检测和隔离AUV的非线性六自由度(DOF)模型中传感器故障的发生。

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