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基于改进多变量变分模态分解和集成精炼复合多变量多尺度色散熵的风力发电机组齿轮箱故障诊断

Fault Diagnosis of Wind Turbine Gearbox Based on Improved Multivariate Variational Mode Decomposition and Ensemble Refined Composite Multivariate Multiscale Dispersion Entropy.

作者信息

Xia Xin, Wang Xiaolu, Chen Weilin

机构信息

School of Mechanical and Electrical Engineering, Suqian University, Suqian 223800, China.

BLUE.x.y Intelligent Technology Co., Ltd., Suqian 223800, China.

出版信息

Entropy (Basel). 2025 Feb 13;27(2):192. doi: 10.3390/e27020192.

Abstract

Wind turbine planetary gearboxes have complex structures and operating environments, which makes it difficult to extract fault features effectively. In addition, it is difficult to achieve efficient fault diagnosis. To improve the efficiency of feature extraction and fault diagnosis, a fault diagnosis method based on improved multivariate variational mode decomposition (IMVMD) and ensemble refined composite multivariate multiscale dispersion entropy (ERCmvMDE) with multi-channel vibration data is proposed. Firstly, the IMVMD is proposed to obtain the optimal parameters of the MVMD, which would make the MVMD more effective. Secondly, the ERCmvMDE is proposed to extract rich and effective feature information. Finally, the fault diagnosis of the planetary gearbox is achieved using the least squares support vector machine (LSSVM) with features consisting of ERCmvMDE. Simulations and experimental studies indicate that the proposed method performs feature extraction well and obtains higher fault diagnosis accuracy.

摘要

风力发电机组行星齿轮箱结构复杂且运行环境特殊,这使得有效提取故障特征变得困难。此外,实现高效的故障诊断也颇具挑战。为提高特征提取和故障诊断的效率,提出了一种基于改进的多变量变分模态分解(IMVMD)和多通道振动数据的集成精炼复合多变量多尺度分散熵(ERCmvMDE)的故障诊断方法。首先,提出IMVMD以获得MVMD的最优参数,从而使MVMD更有效。其次,提出ERCmvMDE以提取丰富有效的特征信息。最后,使用由ERCmvMDE组成特征的最小二乘支持向量机(LSSVM)实现行星齿轮箱的故障诊断。仿真和实验研究表明,所提方法具有良好的特征提取能力,并获得了更高的故障诊断准确率。

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