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On-Load Tap-Changer Mechanical Fault Diagnosis Method Based on CEEMDAN Sample Entropy and Improved Ensemble Probabilistic Neural Network

机译:基于CeeMDAN样本熵和改进的集合概率神经网络的负载分接开关改变器机械故障诊断方法

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The vibration signals of on-load tap-changer (OLTC) contain a rich of operating status information and will effectively diagnose the mechanical fault of OLTC. For the purpose of improving the level of OLTC diagnosis in mechanical condition, this study used the complete ensemble empirical mode decomposition with adaptive noise (CEEMDAN) sample entropy (SampEn) combined with K-L divergence as a vibration signal. Meanwhile, an improved ensemble probabilistic neural network was used for mechanical condition. Then the OLTC mechanical vibration signals under different conditions were measured by experiments. The original vibration signals were decomposed into IMF components with different frequency distributions by CEEMDAN, and then calculate K-L divergence between them. Next, calculate the sample entropy of selected IMF component as the vibration signal feature vector. At the same time, construct a probabilistic neural network (PNN) and optimize the smooth factor. Then the optimized PNN and other weak classifiers were combined as the base classifier of bootstrap aggregating (bagging) algorithm, which greatly improves the classification accuracy of PNN. The final experimental results prove that the improved model can exhibit a high diagnostic efficiency and accuracy rate, which can effectively extract mechanical characteristics and generate some meaningful help for the research of other mechanical fault diagnosis.
机译:负载分接开关(OLTC)的振动信号包含丰富的运行状态信息,并有效地诊断OLTC的机械故障。为了提高机械状况中的OLTC诊断水平,本研究使用了具有自适应噪声(CeeMDAN)样本熵(Sampen)的完整集合经验模式分解(Sampen)与K-L发散作为振动信号。同时,改进的集合概率神经网络用于机械条件。然后通过实验测量不同条件下的OLTC机械振动信号。原始振动信号用CeeMDAN的不同频率分布分解成IMF组件,然后计算它们之间的K-L发散。接下来,计算所选择的IMF分量作为振动信号特征向量的样本熵。同时,构建概率性神经网络(PNN)并优化平滑因子。然后,优化的PNN和其他弱分类器被组合为引导集合(袋装)算法的基础分类器,这大大提高了PNN的分类精度。最终的实验结果证明,改进的模型可以表现出高诊断效率和精度率,这可以有效提取机械特性并对其他机械故障诊断的研究产生一些有意义的帮助。

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