基于sax关联规则挖掘的轴承缺陷特征分析

Tangbo Bai, Yulong Zhang, Xuduo Wang, Li-xiang Duan, Jinjiang Wang
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引用次数: 3

摘要

关联规则挖掘替代传统的正向故障诊断步骤,为轴承缺陷特征分析提供了一种逆方法,直接挖掘标记缺陷与缺陷特征之间的关联。不同于关联规则挖掘中常用的统一划分方法,提出了一种基于离散化方法符号聚合近似(Symbolic Aggregate approXimation, SAX)的关联规则挖掘方法。在该方法中,根据数据的均匀分布,对提取的传感测量特征进行离散化并转换为符号序列。其次,挖掘离散特征与标记缺陷模式(或缺陷严重程度)之间的关联关系,生成规则;该方法均衡地划分数据,避免了数据的集中或分散,从而获得了更有效的轴承缺陷分析关联规则。对轴承测试数据的实验研究表明,该方法能够在轴承缺陷中生成大量有意义的关联规则,并且优于基于等密度和等宽度技术的离散化方法。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Bearing defect signature analysis based on a SAX-based association rule mining
Association rule mining provides the feasibility by taking an inverse approach for bearing defect signature analysis to directly mine associations between labeled defects and defect features instead of traditional forward fault diagnosis steps. Different from the common uniform partitioning approach used in association rule mining, a novel association rule mining approach has been proposed, based on a discretization method Symbolic Aggregate approXimation (SAX). In the presented method, the extracted features from sensing measurements are discretized and transformed into symbolic sequences according to the equalized distribution of the data. Next, the association relation between discretized features and labeled defect modes (or defect severities) is dug to generate the rules. The presented method partitions data equiprobably and avoids centralization or dispersion of the data, thus achieving more effective association rules for analyzing bearing defects. Experimental studies on bearing test data reveal that the proposed method is capable of generating a number of meaningful association rules in bearing defects and outperforms the discretization methods based on equal density and equal width technique.
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