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Mallat小波快速變換與IDRNN在衛星實時故障檢測與識別中的應用

Application of Mallat wavelet fast transforms and IDRNN in real-time fault detection and identification for satellites

  • 摘要: 系統研究了面向復雜系統監測時變信號的實時故障檢測與識別問題.采用滑窗Mallat小波快速變換克服傳統小波變換的時域全局依耐性并提高計算效率,使之適應于實時故障檢測;針對時變信號的故障模式識別難題,在故障檢測基礎上采用改進動態循環神經網絡(improved dynamic recurrent neural network,IDRNN)進行智能故障識別.最后將滑動時窗小波檢測模塊及最優IDRNN網絡模塊嵌入某型完整衛星姿態控制系統仿真平臺進行在線故障診斷.試驗結果表明:實時條件下的滑動窗口小波變換與傳統小波變換具有一致性,IDRNN對于時變信號識別具有較好的時域泛化能力,將滑窗移動時不變小波方法與IDRNN結合可以實現面向復雜系統監測實時信號的故障檢測及復合模式分類.

     

    Abstract: A real-time fault detection and identification (FDI) scheme of time-variant signals for a complex system was studied. A sliding-window Mallat wavelet fast transform was first introduced to avoid depending on the signals in all periods for the classical wavelet transform, and the computing effect was improved, which makes sense that the real-time fault detection is effective. Secondly, aimed at the problem that it is difficult to identify the fault by using time-variant signals, an improved dynamic recurrent neural network (IDRNN) was utilized to identify the fault intelligently after detecting the fault. Finally, the scheme, including fault detection based on the sliding-window Mallat wavelet and fault isolation based on the optimized IDRNN, was applied into a satellite attitude control simulation platform to verify the online diagnosis result. Experimental results show that the sliding-window Mallat wavelet fast transform is consistent with the classical wavelet transform in real-time scenarios, IDRNN has a better generalization ability for identifying time-variant signals, and the scheme including the sliding-window Mallat wavelet and IDRNN can implement detecting the faults and classifying the multiple faults based on real-time monitoring signals for the complex system.

     

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