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A novel feature extraction method for bearing fault classification with one dimensional ternary patterns

机译:具有一维三元图案的轴承故障分类的新颖特征提取方法

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摘要

Bearing is one of the most critical parts used in rotary machines. Bearing faults break down the mechanism where it is located. Moreover, the faults may cause to malfunction by spreading to the entire system. Thus this may result in catastrophic failure eventually. Precise and decisive feature extraction from the raw vibration signal maintains to be one of the current topics explored for fault diagnosis in bearings. In this study, vibration signals are obtained from bearings which are formed with artificial faults of specific dimensions from a bearing test setup. Instead of employing traditional feature extraction methods found in the literature, a novel feature extraction method for bearing faults called one-dimensional ternary pattern (1D-TP) is applied. The proposed approach is a statistical method that uses patterns obtained from comparisons between neighbors of each value on vibration signals. The study aims to identify the size (mm) of the fault by determining the bearing part (inner ring, outer ring, ball) from which the faults in the bearings are caused. Several classification techniques were performed by using ternary patterns with RF (Random Forest), k-NN (1<-nearest neighbor), SVM (Support Vector Machine), BayesNet, ANN (Artificial Neural Networks) models. As a result of analyzing the signals obtained from the experimental setup with the proposed model, 91.25% for dataset_1 (different speed), 100% for dataset_2 (fault type - inner ring, outer ring, ball) and 100% for dataset_3 (fault size (mm)) success rates are determined. (C) 2019 ISA. Published by Elsevier Ltd. All rights reserved.
机译:轴承是旋转机器中最关键的部件之一。轴承故障分解它所在的机制。此外,故障可能导致通过扩展到整个系统而发生故障。因此,这可能导致灾难性失败最终。从原始振动信号提取的精确和决定性特征在于,成为用于轴承故障诊断的当前主题之一。在该研究中,振动信号由轴承获得,该轴承从轴承测试设置形成有特定尺寸的人工故障。施加了一种代替在文献中发现的传统特征提取方法,应用用于轴承故障的新颖特征提取方法,用于一维三元图案(1D-TP)。所提出的方法是一种统计方法,它使用从每个值的邻居之间的比较获得的模式进行振动信号。该研究旨在通过确定引起轴承中的轴承部分(内圈,外圈,球)来识别故障的尺寸(mm)。通过使用带有RF(随机林),K-NN(1 <-NeAlest邻居),SVM(支持向量机),Bayesnet,Ann(人工神经网络)模型的三元模式进行了几种分类技术。作为分析从实验设置中获得的信号与所提出的模型,91.25%用于DataSet_1(不同的速度),对于DataSet_2(故障类型 - 内环,外圈,球)和100%用于DataSet_3的100%(故障大小(mm))确定成功率。 (c)2019 ISA。 elsevier有限公司出版。保留所有权利。

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