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Fault diagnosis of shipboard medium-voltage DC power system based on machine learning

机译:基于机器学习的船舶中电压直流电力系统故障诊断

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摘要

This study proposed a fault diagnosis method of a shipboard medium-voltage DC (MVDC) power system based on Noise-Assisted Multivariate Empirical Mode Decomposition (NA-MEMD) and Multilevel Iterative - LightGBM (MI-LightGBM), which overcomes the limitations of the existing fault diagnosis methods in this regard, such as relies heavily on the relay or slow training process. MI-LightGBM is proposed to solve the problem of unbalanced training samples caused by the difficulty in obtaining fault samples in practical engineering. First, NA-MEMD was adopted to pre-process the voltage signals, which were decomposed into a set of components called Intrinsic Mode Functions (IMFs) according to the local characteristic time scales of the original signals. The energy moment of each order IMF was calculated as fault feature vector to train the MI-LightGBM model, which led to the development of a high-precision fault classifier. A model of a shipboard MVDC power system was established using the AppSIM Real-Time Simulator. Simulations were performed on earth fault and short-circuit fault at the generator output and DC cable. Compared with the existing fault diagnosis methods, the proposed method is simple to use and save more than half of the training time while maintaining high diagnostic performance, which is more suitable for engineering applications.
机译:本研究提出了一种基于噪声辅助多变量经验分解(NA-MEMD)和多级迭代 - LightGBM(MI-LightGBM)的船舶中电压DC(MVDC)电力系统的故障诊断方法,其克服了克服的限制在这方面存在的现有故障诊断方法,如依赖于继电器或慢速训练过程。提出了MI-LightGBM来解决难度训练样本引起的难以获得实际工程中的故障样本引起的问题。首先,采用NA-MEMD预处理电压信号,该电压信号被分解成一组组件,该组件根据原始信号的局部特征时间尺度称为内部模式功能(IMF)。每个订单IMF的能量时刻被计算为故障特征向量,以训练MI-LightGBM模型,从而导致高精度故障分类器的开发。使用Appsim实时模拟器建立了船上MVDC电力系统的模型。在发电机输出和直流电缆处对地球故障和短路故障进行仿真。与现有的故障诊断方法相比,所提出的方法易于使用,并节省超过一半的培训时间,同时保持高诊断性能,更适合工程应用。

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  • 来源
    《International journal of electrical power and energy systems》 |2021年第1期|106399.1-106399.10|共10页
  • 作者单位

    Harbin Engn Univ Coll Automat Harbin 150001 Peoples R China;

    Harbin Engn Univ Coll Automat Harbin 150001 Peoples R China|Natl Univ Singapore Fac Engn Singapore 119077 Singapore;

    Harbin Engn Univ Coll Automat Harbin 150001 Peoples R China;

    China Ship Dev & Design Ctr Wuhan 430064 Peoples R China;

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