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POWER ELECTRONIC CIRCUIT FAULT DIAGNOSIS METHOD BASED ON OPTIMIZING DEEP BELIEF NETWORK

机译:基于优化深信度网络的电力电子电路故障诊断方法

摘要

A fault diagnosis method for power electronic circuits based on optimizing a deep belief network, including steps. (1) Use RT-LAB hardware-in-the-loop simulator to set up fault experiments and collect DC-link output voltage signals in different fault types. (2) Use empirical mode decomposition to extract the intrinsic function components of the output voltage signal and its envelope spectrum and calculate various statistical features to construct the original fault feature data set. (3) Based on the feature selection method of extreme learning machine, remove the redundancy and interference features, as fault sensitive feature data set. (4) Divide the fault sensitive feature set into training samples and test samples, and primitively determine the structure of the deep belief network. (5) Use the crow search algorithm to optimize the deep belief network. (6) Obtain the fault diagnosis result.
机译:基于优化深度信念网络的电力电子电路故障诊断方法,包括步骤。 (1)使用RT-LAB硬件在环仿真器进行故障实验,并收集不同故障类型的直流母线输出电压信号。 (2)使用经验模式分解来提取输出电压信号的固有函数分量及其包络谱,并计算各种统计特征以构造原始故障特征数据集。 (3)根据极限学习机的特征选择方法,去除冗余和干扰特征,作为故障敏感特征数据集。 (4)将故障敏感特征集分为训练样本和测试样本,并初步确定深度置信网络的结构。 (5)使用乌鸦搜索算法优化深度置信网络。 (6)获取故障诊断结果。

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