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New Fault Detection Method for Sliding Bearings Using Empirical Mode Decomposition, Genetic Algorithm and Support Vector Machine

机译:基于经验模态分解,遗传算法和支持向量机的滑动轴承故障检测新方法

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The failures of the sliding bearings in the marine diesel engines may lead to terrible disaster for the ship operations. It is therefore imperative to detect the faults of the sliding bearings in the early stage. However, the fault detection efficiency is affected by the structure parameters of the support vector machine (SVM). Improper SVM parameters may decrease the fault detection precision. To overcome these problems, a new fault detection approach based on empirical mode decomposition (EMD), improved genetic algorithm (GA) and SVM is proposed in this paper. The EMD can deal with the nonlinear and stochastic characteristics of the vibration data of the sliding bearings. Useful fault features may be extracted by EMD. Then, the improved GA used energy entropy to select individuals to optimize the training procedure of the SVM. The effectiveness of the proposed method has been evaluated with the experimental data. The experiment result shows that the proposed method outperforms the standard GA-SVM method with respect to the detection rate.
机译:船用柴油机中滑动轴承的故障可能会给船舶操作造成严重的灾难。因此,必须尽早检测滑动轴承的故障。但是,故障检测效率受支持向量机(SVM)的结构参数影响。 SVM参数不正确可能会降低故障检测精度。为了克服这些问题,提出了一种基于经验模态分解(EMD),改进的遗传算法(GA)和支持向量机的故障检测新方法。 EMD可以处理滑动轴承振动数据的非线性和随机特性。有用的故障特征可以通过EMD提取。然后,改进的遗传算法利用能量熵来选择个体以优化SVM的训练过程。实验数据评估了该方法的有效性。实验结果表明,该方法在检测率上优于标准GA-SVM方法。

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