Application of local outlier factor method and back-propagation neural network for steel plates fault diagnosis

Zeqi Zhao, Jun Yang, Weining Lu, Xueqian Wang
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引用次数: 6

Abstract

Fault diagnosis, which is a task to identify the nature of the occurred fault, is of paramount importance to ensure the steadiness of industrial and domestic machinery. Essentially, fault diagnosis is a problem of classification. A method based on Local Outlier Factor (LOF) anomaly detection and BP neural network is proposed to apply to steel plates fault diagnosis. The LOF method is firstly used to find the anomaly samples and process the relevant samples detected. Then the processed samples are used to train a back-propagation neural network (BPNN) to classify steel plate faults. It is to be noted that the LOF method's effect of outlier elimination nicely overcomes the specific defect of the BP neural network model in which the training process is very sensitive to singularities in the training samples. Results of contrastive experiments indicate that the proposed method can reliably improve the classification accuracy and decrease the training time.
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局部离群因子法和反向传播神经网络在钢板故障诊断中的应用
故障诊断是一项识别所发生故障性质的任务,对保证工业和家用机械的稳定性至关重要。故障诊断本质上是一个分类问题。提出了一种基于局部离群因子(LOF)异常检测和BP神经网络的钢板故障诊断方法。首先利用LOF方法找到异常样本,并对检测到的相关样本进行处理。然后利用处理后的样本训练反向传播神经网络(BPNN)对钢板故障进行分类。值得注意的是,LOF方法的离群值消除效果很好地克服了BP神经网络模型训练过程对训练样本中的奇异点非常敏感的特定缺陷。对比实验结果表明,该方法能够可靠地提高分类精度,减少训练时间。
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