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基于白胸翡翠优化器改进的带自适应噪声的完备总体经验模态分解、改进的多尺度加权排列熵以及海星优化算法-最小二乘支持向量机的转向架齿轮箱故障诊断

Fault Diagnosis of a Bogie Gearbox Based on Pied Kingfisher Optimizer-Improved Complete Ensemble Empirical Mode Decomposition with Adaptive Noise, Improved Multi-Scale Weighted Permutation Entropy, and Starfish Optimization Algorithm-Least-Squares Support Vector Machine.

作者信息

Zhang Guangjian, Ma Shilun, Wang Xulong

机构信息

School of Automobile and Transportation, Tianjin University of Technology and Education, Tianjin 300222, China.

出版信息

Entropy (Basel). 2025 Aug 26;27(9):905. doi: 10.3390/e27090905.

Abstract

Current methods of detecting bogie gearbox faults mainly depend on manual judgment, which leads to inaccurate fault identification. In this study, a fault diagnosis model is proposed based on a pied kingfisher optimizer-improved complete ensemble empirical mode decomposition with adaptive noise (PKO-ICEEMDAN), improved multi-scale weighted permutation entropy (IMWPE), and a starfish optimization algorithm optimizing a least-squares support vector machine (SFOA-LSSVM). Firstly, the acceleration signals of a bogie gearbox under six different working conditions were extracted through experiments. Secondly, the acceleration signals were decomposed by ICEEMDAN optimized by PKO to obtain the intrinsic mode function (IMF). Thirdly, IMFs with rich fault information were selected to reconstruct the signals according to the double screening criteria of both the correlation coefficient and variance contribution rate, and the IMWPE of the reconstructed signals was extracted. Finally, IMWPE as a feature vector was input into LSSVM optimized by the SFOA for fault diagnosis and compared with various models. The results show that the average accuracy of the training data of the proposed model was 99.13%, and the standard deviation was 0.09, while the average accuracy of the testing data was 99.44%, and the standard deviation was 0.12. Thus, the effectiveness of the proposed fault diagnosis model for the bogie gearbox was verified.

摘要

目前检测转向架齿轮箱故障的方法主要依赖人工判断,这导致故障识别不准确。在本研究中,提出了一种基于白腹鱼狗优化器改进的带自适应噪声的完备总体经验模态分解(PKO-ICEEMDAN)、改进的多尺度加权排列熵(IMWPE)以及基于海星优化算法优化的最小二乘支持向量机(SFOA-LSSVM)的故障诊断模型。首先,通过实验提取了转向架齿轮箱在六种不同工况下的加速度信号。其次,对经PKO优化的ICEEMDAN分解加速度信号,以获得本征模态函数(IMF)。第三,根据相关系数和方差贡献率的双重筛选准则,选择具有丰富故障信息的IMF来重构信号,并提取重构信号的IMWPE。最后,将IMWPE作为特征向量输入经SFOA优化的LSSVM进行故障诊断,并与各种模型进行比较。结果表明,所提模型训练数据的平均准确率为99.13%,标准差为0.09,而测试数据的平均准确率为99.44%,标准差为0.12。从而验证了所提转向架齿轮箱故障诊断模型的有效性。

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