基于最小干扰小波神经网络的自主水下航行器推力器故障诊断

X. Liang, Wei Li, Linfang Su, Han Yin, Jun Zhao
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引用次数: 8

摘要

针对小波神经网络隐层小波函数可以调节尺度因子和移位因子影响神经网络输出的特点,提出了添加尺度因子和移位因子的最小干扰算法。通过计算动态学习率,使小波函数的尺度因子和移位因子以及净权值的变化最小化,提高了小波神经网络的稳定性和收敛性。将其应用于自主水下航行器的动力学模型,在推力器故障情况下,将动力学模型输出与实际状态值进行比较,得到残差。通过残差分析提取故障检测规则,对推力器进行故障诊断。仿真结果证明了该方法的有效性。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Thruster Fault Diagnosis of Autonomous Underwater Vehicles Based on Least Disturbance Wavelet Neural Network
Aiming at the character that the hidden layer wavelet function of wavelet neural network can adjust scale factor and shift factor to affect the outputs of neural network, the least disturbance algorithm adding scale factor and shift factor was proposed. The dynamic learning ratio can be calculated to minimize the scale factor and shift factor of wavelet function and the variation of net weights, and the algorithm improve the stability and the convergence of wavelet neural network. It was applied to build the dynamical model of autonomous underwater vehicles, and the residuals are generated by comparing the outputs of the dynamical model with the real state values in the condition of thruster fault. Fault detection rules are distilled by residual analysis to execute thruster fault diagnosis. The results of simulation prove the effectiveness.
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