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Dynamic Genetic Algorithm-based Feature Selection Scheme for Machine Health Prognostics

机译:基于动态遗传算法的机器健康预测特征选择方案

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This paper proposed a dominant feature selection scheme to enable the high performance prognostics of machine health. Statistical features were extracted from decomposed sub-modes by wavelet transform. Fisher ratio was employed to evaluate the extracted feature vectors, and dynamic searching strategy-based genetic algorithm was used to select the optimal feature subsets on the basis of maximizing the fitness function. Then dominant features with minimum mean square errors were used to predict the performance of machine health. Experimental results on predicting the lifetime of an unbalance vibration rotor system demonstrated that the proposed method can achieve better prognosis performance with less predicting errors.
机译:本文提出了一种占优势的特征选择方案,以实现机器健康的高性能预测。通过小波变换从分解的子模式中提取统计特征。采用Fisher比率对提取的特征向量进行评估,并在最大化适应度函数的基础上,采用基于动态搜索策略的遗传算法选择最优特征子集。然后使用具有最小均方误差的主要特征来预测机器运行状况的性能。预测不平衡振动转子系统寿命的实验结果表明,该方法可以实现更好的预测性能,且预测误差较小。

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