首页> 外文会议>2010 International Conference on E-Health Networking, Digital Ecosystems and Technologie.;vol. 1. >The Application of Morphology Analysis and RFFSVM to Intelligent Fault Diagnosis on the Bearing of Ships
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The Application of Morphology Analysis and RFFSVM to Intelligent Fault Diagnosis on the Bearing of Ships

机译:形态分析和RFFSVM在船舶轴承智能故障诊断中的应用

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摘要

Support Vector Machine SVM is widely applied to fault diagnosis of machines. However, this classification method has some weaknesses. For example, it can not separate fuzzy information, particularly sensitive to the interference and the isolated points of the training samples. In view of the problems mentioned above, a random forest fuzzy SVM multi-classification algorithm (RFFSVM) has been put forward. This paper focuses on the study of the application of the Morphology Analysis and the theory RFFSVM (MA-RFFSVM) to fault diagnosis on the bearing of ships. Simulation experiments show that the algorithm has better anti-interference ability and classification effects than others. Consideration should be taken into account that it can be further applicable to the diagnosis on other mechanical faults of ships.
机译:支持向量机支持向量机广泛应用于机器的故障诊断。但是,这种分类方法有一些缺点。例如,它不能分离模糊信息,特别是对训练样本的干扰和孤立点敏感的模糊信息。针对上述问题,提出了一种随机森林模糊支持向量机多分类算法(RFFSVM)。本文着重研究形态分析和RFFSVM理论(MA-RFFSVM)在船舶轴承故障诊断中的应用。仿真实验表明,该算法具有比其他算法更好的抗干扰能力和分类效果。应该考虑到它可以进一步应用于诊断船舶的其他机械故障。

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