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DEEP BELIEF NETWORK FEATURE EXTRACTION-BASED ANALOGUE CIRCUIT FAULT DIAGNOSIS METHOD

机译:基于深层神经网络特征提取的模拟电路故障诊断方法

摘要

A Deep Belief Network (DBN) feature extraction-based analogue circuit fault diagnosis method comprises the following steps: a time-domain response signal of a tested analogue circuit is acquired, where the acquired time-domain response signal is an output voltage signal of the tested analogue circuit; DBN-based feature extraction is performed on the acquired voltage signal, wherein learning rates of restricted Boltzmann machines in a DBN are optimized and acquired by virtue of a quantum-behaved particle swarm optimization (QPSO); a support vector machine (SVM)-based fault diagnosis model is constructed, wherein a penalty factor and a width factor of an SVM are optimized and acquired by virtue of the QPSO; and feature data of test data are input into the SVM-based fault diagnosis model, and a fault diagnosis result is output, where the feature data of the test data is generated by performing the DBN-based feature extraction on the test data.
机译:基于深度信念网络特征提取的模拟电路故障诊断方法包括以下步骤:获取被测模拟电路的时域响应信号,其中,所获取的时域响应信号为被测模拟电路的输出电压信号。经过测试的模拟电路;对获取的电压信号进行基于DBN的特征提取,其中借助量子行为粒子群优化(QPSO)优化和获取DBN中受限Boltzmann机器的学习率。建立基于支持向量机的故障诊断模型,利用QPSO对惩罚因子和宽度因子进行优化和获取。然后,将测试数据的特征数据输入到基于SVM的故障诊断模型中,并输出故障诊断结果,其中通过对测试数据执行基于DBN的特征提取来生成测试数据的特征数据。

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