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Euclidean distance based feature ranking and subset selection for bearing fault diagnosis

机译:基于欧几里德距离的特征排名和轴承故障诊断的子集选择

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Bearing failure can cause hazardous effects on rotating machinery. The diagnosis of the fault is very critical for reliable operation. The main steps for the machine learning process involve feature extraction, selection, and classification. Feature selection contains an identification of noble features that performs for better classification accuracy with fewer features and with less computational time. For a large feature dimension; a critical study is required to catch the best feature subset for proper diagnosis. So, this paper presents a unique feature ordering and selection technique called Feature Ranking and Subset Selection based on Euclidean distance (FRSSED). Two bearing databases have considered for verification of the robustness of the proposed technique. One database was obtained from the experiment, and the other publicly available database was collected from Case Western Reserve University (CWRU). Initially, the vibration signals have captured from bearings having an individual as well as combined defects in various components along with healthy bearing. EEMD was applied to these signals, and then, the sensitive IMF was selected by the envelope spectrum. In the later stage, the feature extraction was carried out from the selected IMF using fifteen statistical features. Afterward, the extracted features were introduced into FRSSED algorithm for feature ordering. These ordered features were fed into various classifiers. The comparison was made for classification accuracy and time consumption among generalized method (without feature ordering), principal component analysis (PCA), and FRSSED. The diagnostic outcomes describe that the suggested feature reduction technique improves the classification accuracy with fewer feature subset along with considerable time-saving. (C) 2020 Elsevier Ltd. All rights reserved.
机译:轴承故障可能对旋转机械造成危险作用。故障的诊断对于可靠的操作非常关键。机器学习过程的主要步骤涉及特征提取,选择和分类。特征选择包含高贵功能的标识,可执行更好的分类准确性,具有更少的功能和较少的计算时间。对于一个大的特征维度;需要一个关键的研究来捕获最佳特征子集以进行适当的诊断。因此,本文提出了一种独特的特征排序和选择技术,称为基于欧几里德距离(FRSSED)的特征排序和子集选择。两个轴承数据库已考虑验证所提出的技术的稳健性。从实验中获得一个数据库,并从案例西部储备大学(CWRU)收集其他公共数据库。最初,振动信号已经从具有个体的轴承捕获以及各种部件的组合缺陷以及健康的轴承。将EEMD应用于这些信号,然后,通过包络光谱选择敏感的IMF。在后期的阶段,使用十五个统计特征,从所选的IMF进行特征提取。之后,将提取的特征引入FRSSED算法以进行特征排序。这些有序功能被送入各种分类器。对广义方法(无功能排序),主成分分析(PCA)和FRSSED进行的分类准确性和时间消耗进行了比较。诊断结果描述了建议的特征减少技术提高了具有较少特征子集的分类精度,以及相当多的节省时间。 (c)2020 elestvier有限公司保留所有权利。

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