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Intelligent fault diagnosis of rotating machinery using support vector machine with ant colony algorithm for synchronous feature selection and parameter optimization

机译:支持向量机结合蚁群算法的旋转机械智能故障诊断及特征选择与参数优化

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摘要

The failure of rotating machinery can result in fatal damage and economic loss since rotating machinery plays an important role in the modern manufacturing industry. The development of a reliable and efficient intelligent fault diagnosis approach is an ongoing attempt. Support vector machine (SVM) is a widely used machine learning method in intelligent fault diagnosis. But finding out good features that can discriminate different fault conditions and optimizing parameters for support vector machine can be regarded as the most two important problems that can highly affect the final diagnosis accuracy of support vector machine. Until now, the two issues of feature selection and parameter optimization are usually treated separately, weakening the effects of both efforts. Therefore, an ant colony algorithm for synchronous feature selection and parameter optimization for support vector machine in intelligent fault diagnosis of rotating machinery is presented. Comparing with other methods, the advantages of the proposed method are evaluated on an experiment of rotor system and an engineering application of locomotive roller bearings, which proves it can attain much better results. (C) 2015 Elsevier B.V. All rights reserved.
机译:由于旋转机械在现代制造业中起着重要的作用,因此旋转机械的故障会导致致命的伤害和经济损失。可靠且有效的智能故障诊断方法的开发是正在进行的尝试。支持向量机(SVM)是智能故障诊断中广泛使用的机器学习方法。但是,找出能够区分不同故障条件的良好特征并为支持向量机优化参数可以被视为对支持向量机的最终诊断准确性产生极大影响的最重要的两个问题。到目前为止,特征选择和参数优化这两个问题通常是分开处理的,从而削弱了两者的效果。因此,提出了一种用于旋转机械智能故障诊断的支持向量机同步特征选择和参数优化的蚁群算法。与其他方法相比,通过转子系统的实验和机车滚子轴承的工程应用,对所提方法的优点进行了评价,证明了该方法的效果。 (C)2015 Elsevier B.V.保留所有权利。

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