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An integrated method based on refined composite multivariate hierarchical permutation entropy and random forest and its application in rotating machinery

机译:一种基于精制复合多变量分层置换熵和随机林的综合方法及其在旋转机械中的应用

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摘要

Fault feature extraction of rotating machinery is crucial and challenging due to its nonlinear and nonstationary characteristics. In order to resolve this difficulty, a quality nonlinear fault feature extraction method is required. Hierarchical permutation entropy has been proven to be a promising nonlinear feature extraction method for fault diagnosis of rotating machinery. Compared with multiscale permutation entropy, hierarchical permutation entropy considers the fault information hidden in both high frequency and low frequency components. However, hierarchical permutation entropy still has some shortcomings, such as poor statistical stability for short time series and inability of analyzing multichannel signals. To address such disadvantages, this paper proposes a new entropy method, called refined composite multivariate hierarchical permutation entropy. Refined composite multivariate hierarchical permutation entropy can extract rich fault information hidden in multichannel signals synchronously. Based on refined composite multivariate hierarchical permutation entropy and random forest, a novel fault diagnosis framework is proposed in this paper. The effectiveness of the proposed method is validated using experimental and simulated signals. The results demonstrate that the proposed method outperforms multivariate multiscale fuzzy entropy, refined composite multivariate multiscale fuzzy entropy, multivariate multiscale sample entropy, multivariate multiscale permutation entropy, multivariate hierarchical permutation entropy, and composite multivariate hierarchical permutation entropy in recognizing the different faults of rotating machinery.
机译:由于其非线性和非间断特性,旋转机械的故障特征提取至关重要和挑战性。为了解决这个困难,需要一种优质的非线性故障特征提取方法。已证明等级排列熵是一种有前途的非线性特征提取方法,用于旋转机械的故障诊断。与多尺度置换熵相比,分层置换熵考虑隐藏在高频和低频分量中的故障信息。然而,等级排列熵仍然具有一些缺点,例如短时间序列统计稳定性差,并且无法分析多通道信号。为了解决此类缺点,本文提出了一种新的熵方法,称为精制复合多变量分层置换熵。精制复合多元分层置换置换熵可以同步地隐藏在多通道信号中的丰富故障信息。基于精制复合多变量等级排列熵和随机森林,本文提出了一种新型故障诊断框架。使用实验和模拟信号验证所提出的方法的有效性。结果表明,所提出的方法优于多变量多尺度模糊熵,精制复合多变量多尺度模糊熵,多变量多尺寸样本熵,多变量多变量置换熵,多变量等级排列熵和复合多变量等级置换熵识别旋转机械的不同故障。

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