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Intelligent Method for Faults Diagnosis of Rolling Bearings via Chaos Optimized Support Vector Machine

机译:基于混沌优化支持向量机的滚动轴承故障诊断智能方法。

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In a transmission system, the faults of rolling bearings occur very frequently. A tiny crack may cause huge damage on the system. Therefore, it is essential to detect the faults of rolling bearings. However, the single fault has been researched extensively while very few works have been done on the multiply faults detection (i.e., simultaneous existence of 2 or more fault types). To deal with this problem, a new method is proposed to diagnosis multi-fault of rolling bearings in this study. The vibration data was analyzed in the time and frequency domains. Then the Support Vector Machine (SVM) was used to recognize the fault patterns. In order to enhance the generalization ability of the SVM diagnosis model, the Chaos algorithm was adopted to optimize the structural parameters of the SVM. Experimental tests have been carried out on a fault simulation setup. The fault detection results show that the proposed method is competent for the multi-fault diagnosis of rolling bearings. The fault detection rate is beyond 90.0%.
机译:在传动系统中,滚动轴承的故障非常频繁地发生。微小的裂缝可能会对系统造成巨大损害。因此,检测滚动轴承的故障至关重要。但是,对单个故障已进行了广泛的研究,而在多重故障检测方面(即,同时存在两种或两种以上的故障类型)所做的工作很少。针对这一问题,提出了一种新的滚动轴承多故障诊断方法。在时域和频域中分析了振动数据。然后,使用支持向量机(SVM)识别故障模式。为了提高支持向量机诊断模型的泛化能力,采用混沌算法对支持向量机的结构参数进行优化。已经在故障模拟设置上进行了实验测试。故障检测结果表明,所提出的方法能够有效地解决滚动轴承的多故障诊断问题。故障检测率超过90.0%。

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