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A New Intelligent Fault Diagnosis Method and Its Application on Bearings

机译:一种新的智能故障诊断方法及其对轴承的应用

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Fault diagnosis is vital in manufacturing system, however, fault diagnosis is divided into three stages: signal preprocessing, feature extraction and fault classification, which destroys the relationship between each stage and causes a part of the loss of fault information. The feature extraction process depends on the experimenter's experience, and the recognition rate of the shallow diagnostic model does not achieve satisfactory results. In view of this problem, this paper proposes a method, the first step is converting raw signals into two-dimensional (2-D) images, the step can extract the features of the converted 2-D images and eliminate the impact of expert's experience on the feature extraction process. Next, an intelligent diagnosis algorithm based on convolutional neural network (CNN) is proposed, which can automatically complete the feature extraction and fault identification of the signal. The effectiveness of the method is verified by using bearing data. Test with different sample sizes and noise signals to analyze their impact on diagnostic capabilities. Compared with other mainstream algorithms, this method has a higher recognition rate and can meet the timeliness of fault diagnosis.
机译:故障诊断在制造系统中至关重要,然而,故障诊断分为三个阶段:信号预处理,特征提取和故障分类,这会破坏每个阶段之间的关系并导致故障信息的一部分丢失。特征提取过程取决于实验者的经验,浅诊断模型的识别率不会达到令人满意的结果。鉴于此问题,本文提出了一种方法,第一步是将原始信号转换为二维(2-D)图像,该步骤可以提取转换后的2-D图像的特征并消除专家体验的影响关于特征提取过程。接下来,提出了一种基于卷积神经网络(CNN)的智能诊断算法,可以自动完成信号的特征提取和故障识别。通过使用轴承数据验证该方法的有效性。用不同的样本尺寸和噪声信号进行测试,以分析它们对诊断功能的影响。与其他主流算法相比,该方法具有更高的识别率,并且可以满足故障诊断的时间性。

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