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K-nearest neighbors based methods for identification of different gear crack levels under different motor speeds and loads: Revisited

机译:基于K近邻的识别不同电机转速和负载下不同齿轮裂纹等级的方法

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摘要

Gears are the most commonly used components in mechanical transmission systems. Their failures may cause transmission system breakdown and result in economic loss. Identification of different gear crack levels is important to prevent any unexpected gear failure because gear cracks lead to gear tooth breakage. Signal processing based methods mainly require expertize to explain gear fault signatures which is usually not easy to be achieved by ordinary users. In order to automatically identify different gear crack levels, intelligent gear crack identification methods should be developed. The previous case studies experimentally proved that K-nearest neighbors based methods exhibit high prediction accuracies for identification of 3 different gear crack levels under different motor speeds and loads. In this short communication, to further enhance prediction accuracies of existing K-nearest neighbors based methods and extend identification of 3 different gear crack levels to identification of 5 different gear crack levels, redundant statistical features are constructed by using Daubechies 44 (db44) binary wavelet packet transform at different wavelet decomposition levels, prior to the use of a K-nearest neighbors method. The dimensionality of redundant statistical features is 620, which provides richer gear fault signatures. Since many of these statistical features are redundant and highly correlated with each other, dimensionality reduction of redundant statistical features is conducted to obtain new significant statistical features. At last, the K-nearest neighbors method is used to identify 5 different gear crack levels under different motor speeds and loads. A case study including 3 experiments is investigated to demonstrate that the developed method provides higher prediction accuracies than the existing K-nearest neighbors based methods for recognizing different gear crack levels under different motor speeds and loads. Based on the new significant statistical features, some other popular statistical models including linear discriminant analysis, quadratic discriminant analysis, classification and regression tree and naive Bayes classifier, are compared with the developed method. The results show that the developed method has the highest prediction accuracies among these statistical models. Additionally, selection of the number of new significant features and parameter selection of K-nearest neighbors are thoroughly investigated.
机译:齿轮是机械传动系统中最常用的组件。它们的故障可能导致传输系统故障并造成经济损失。识别不同的齿轮裂纹等级对于防止任何意外的齿轮故障很重要,因为齿轮裂纹会导致齿轮齿断裂。基于信号处理的方法主要需要专业知识来解释齿轮故障信号,这通常是普通用户不容易实现的。为了自动识别不同的齿轮裂纹等级,应该开发智能的齿轮裂纹识别方法。先前的案例研究通过实验证明,基于K近邻的方法在识别不同电动机速度和负载下的3种不同齿轮裂纹级别时具有较高的预测准确性。在这种简短的交流中,为了进一步增强基于K近邻的现有方法的预测准确性,并将3种不同齿轮裂纹级别的识别范围扩展到5种不同齿轮裂纹级别的识别范围,使用Daubechies 44(db44)二进制小波构造了冗余统计特征在使用K最近邻方法之前,先在不同的小波分解级别进行数据包变换。冗余统计特征的维数为620,可提供更丰富的齿轮故障特征。由于许多这些统计特征是冗余的并且彼此高度相关,因此进行冗余统计特征的降维以获得新的重要统计特征。最后,采用K近邻法确定了在不同转速和负载下5种不同的齿轮裂纹等级。案例研究(包括3个实验)表明,与现有的基于K近邻的方法相比,该方法可提供更高的预测精度,从而可在不同的电动机速度和负载下识别不同的齿轮裂纹等级。基于新的重要统计特征,将其他一些流行的统计模型(包括线性判别分析,二次判别分析,分类和回归树以及朴素贝叶斯分类器)与开发的方法进行了比较。结果表明,所开发的方法在这些统计模型中具有最高的预测准确性。另外,对新的重要特征的数量的选择和K近邻的参数选择进行了彻底的研究。

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