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Fault Diagnosis of Rolling Element Bearings with a Two-Step Scheme Based on Permutation Entropy and Random Forests

机译:基于置换熵和随机森林的两步法滚动轴承故障诊断

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摘要

This study presents a two-step fault diagnosis scheme combined with statistical classification and random forests-based classification for rolling element bearings. Considering the inequality of features sensitivity in different diagnosis steps, the proposed method utilizes permutation entropy and variational mode decomposition to depict vibration signals under single scale and multiscale. In the first step, the permutation entropy features on the single scale of original signals are extracted and the statistical classification model based on Chebyshev’s inequality is constructed to detect the faults with a preliminary acquaintance of the bearing condition. In the second step, vibration signals with fault conditions are firstly decomposed into a collection of intrinsic mode functions by using variational mode decomposition and then multiscale permutation entropy features derived from each mono-component are extracted to identify the specific fault types. In order to improve the classification ability of the characteristic data, the out-of-bag estimation of random forests is firstly employed to reelect and refine the original multiscale permutation entropy features. Then the refined features are considered as the input data to train the random forests-based classification model. Finally, the condition data of bearings with different fault conditions are employed to evaluate the performance of the proposed method. The results indicate that the proposed method can effectively identify the working conditions and fault types of rolling element bearings.
机译:这项研究提出了一种两步故障诊断方案,该方案结合了滚动轴承的统计分类和基于随机森林的分类。考虑到特征灵敏度在不同诊断步骤中的不等式,该方法利用置换熵和变分模式分解来描述单尺度和多尺度下的振动信号。第一步,提取原始信号单尺度上的置换熵特征,并基于切比雪夫不等式构建统计分类模型,以初步了解轴承状况来检测故障。在第二步中,首先使用变分模式分解将具有故障条件的振动信号分解为一组固有模式函数,然后提取从每个单分量得出的多尺度置换熵特征以识别特定的故障类型。为了提高特征数据的分类能力,首先采用随机森林的袋外估计来重新选择和完善原始的多尺度置换熵特征。然后,将经过提炼的特征视为输入数据,以训练基于森林的随机分类模型。最后,利用不同故障条件下的轴承状态数据来评估该方法的性能。结果表明,所提出的方法可以有效地识别滚动轴承的工作条件和故障类型。

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