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An approach for bearing fault diagnosis based on PCA and multiple classifier fusion

机译:基于PCA和多分类器融合的轴承故障诊断方法

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The purpose of this paper is to propose a new system, with both high efficiency and accuracy for fault diagnosis of rolling bearing. After pretreatment and choosing sensitive features of different working conditions of bearing from both time and frequency domain, principal component analysis(PCA) is conducted to compress the data dimension and eliminate the correlation among different statistical features. The first several principal components are sent to the classifier for recognition. However, recognition method with a single classifier usually has only a limited classification capability that is insufficient for real applications. An ongoing strategy is the decision fusion techniques. The system proposed in this paper develops a decision fusion algorithm for fault diagnosis, which integrates decisions of multiple classifiers. First, the front four principle components are chosen as input of individual classifier. A selection process of the classifiers is then operated on the basis of correlation measure for the purpose of finding an optimal sequence of them. Finally, classifier fusion algorithm based on Bayesian belief method is applied to generate the final decision. The result of experiments show that this new bearing fault diagnosis system recognize different working conditions of bearing more accurately and more stably than a single classifier does, which demonstrates the high efficiency of the proposed system.
机译:本文的目的是提出一种高效且准确的新系统,用于滚动轴承的故障诊断。经过预处理并从时域和频域中选择了轴承不同工作条件的敏感特征后,进行主成分分析(PCA)以压缩数据维并消除不同统计特征之间的相关性。前几个主要组成部分发送到分类器进行识别。然而,具有单个分类器的识别方法通常仅具有有限的分类能力,这对于实际应用是不足的。正在进行的策略是决策融合技术。本文提出的系统开发了一种故障诊断的决策融合算法,该算法融合了多个分类器的决策。首先,选择前四个主要组成部分作为各个分类器的输入。然后基于相关性度量来操作分类器的选择过程,以找到分类器的最佳顺序。最后,应用基于贝叶斯置信方法的分类器融合算法来生成最终决策。实验结果表明,该新型轴承故障诊断系统比单个分类器能够更准确,更稳定地识别轴承的不同工况,证明了该系统的高效率。

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