基于SCA-SVM的电子电路故障诊断

Z. Jing, Liang Ying
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引用次数: 4

摘要

针对模拟电路故障诊断中样本不足、诊断精度低的问题,提出了一种基于正弦余弦算法(SCA)的容差模拟电路软故障诊断方法。首先对实验电路进行蒙特卡罗分析,然后采集输出电压信号作为数据集。然后对经过小波变换的数据集计算小波熵,形成故障特征数据集。采用主成分分析(PCA)降低特征维数。最后,利用SCA优化的支持向量机(SVM)对故障数据集进行分类。基于Sallen-Key带通滤波电路的实验分析表明,与GridSearch、遗传算法和粒子群算法相比,SCA-SVM分类器具有更高的分类精度和更快的迭代速度。对四运培双路高通滤波电路的验证实验表明,该电路在模拟电路故障诊断中具有良好的自适应能力。
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Electronic Circuit Fault Diagnosis Based on SCA-SVM
With an eye to solving the problems on lack of the sample and low accuracy in analog circuit fault diagnosis, one effective method based on the Sine Cosine Algorithm(SCA) is proposed for soft fault diagnosis in analog circuit with tolerance. Primarily, monte carlo analysis is performed on the experimental circuit and then the output voltage signal collected as dataset. Then the wavelet entropy is calculated from dataset transformed by the wavelet transform, which forms the fault feature dataset. The principal component analysis(PCA) is used for lowering the feature dimension. Finally, support vector machine(SVM) optimized by SCA is employed for classification of the fault dataset. Experiment on the Sallen-Key band-pass filter circuit analysis shows that the SCA-SVM classifier has higher classification accuracy and faster iteration speed than GridSearch, Genetic Algorithm and Particle Swarm Optimization. Verification experiment on the four-opamp biquad highpass filter circuit indicates excellent adaptive capacity in analog circuit fault diagnosis.
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