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Gear crack level identification based on weighted K nearest neighbor classification algorithm

机译:基于加权K最近邻分类算法的齿轮裂纹等级识别

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摘要

A crack fault is one of the damage modes most frequently occurring in gears. Identifying different crack levels, especially for early cracks is a challenge in gear fault diagnosis. This paper aims to propose a method to classify the different levels of gear cracks automatically and reliably. In this method, feature parameters in time domain, specially designed for gear damage detection and in frequency domain are extracted to characterize the gear conditions. A two-stage feature selection and weighting technique (TFSWT) via Euclidean distance evaluation technique (EDET) is presented and adopted to select sensitive features and remove fault-unrelated features. A weighted K nearest neighbor (WKNN) classification algorithm is utilized to identify the gear crack levels. The gear crack experiments were conducted and the vibration signals were captured from the gears under different loads and motor speeds. The proposed method is applied to identifying the gear crack levels and the applied results demonstrate its effectiveness.
机译:裂纹故障是齿轮中最常见的损坏模式之一。识别不同的裂纹级别,尤其是对于早期裂纹,是齿轮故障诊断中的一个挑战。本文旨在提出一种自动,可靠地对齿轮裂纹的不同等级进行分类的方法。在这种方法中,提取了专门为齿轮损坏检测而设计的时域特征参数和频域特征参数,以表征齿轮状况。提出了一种基于欧氏距离评估技术(EDET)的两阶段特征选择和加权技术(TFSWT),并采用该方法进行敏感特征的选择和与故障无关的特征的去除。加权K最近邻(WKNN)分类算法用于识别齿轮裂纹等级。进行了齿轮裂纹实验,并在不同负载和电机转速下从齿轮捕获了振动信号。将该方法应用于齿轮裂纹识别,结果表明了该方法的有效性。

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