模糊多元变分模态分解及其在脑电分析中的应用

IF 11.9 1区 计算机科学 Q1 COMPUTER SCIENCE, ARTIFICIAL INTELLIGENCE IEEE Transactions on Fuzzy Systems Pub Date : 2025-02-26 DOI:10.1109/TFUZZ.2025.3546121
Hongkai Tang;Xun Yang;Yixuan Yuan;Pierre-Paul Vidal;Danping Wang;Jiuwen Cao;Duanpo Wu
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引用次数: 0

摘要

本文介绍了多元变分模态分解(MVMD)方法的一种新扩展,即模糊模态分解(FMVMD),其目的是增强对准信息的提取。与MVMD相比,FMVMD侧重于通过利用模糊聚类技术捕获更精细的对齐细节。首先,FMVMD采用一种改进的聚类算法,称为模糊c均值(FCM),根据每个信道内的子模式对共同中心频率的贡献将其分类为模糊聚类。其次,建立了一个变分优化模型,扩展了MVMD的原理,以适应FMVMD中使用的模糊聚类方法。最后,采用乘法器交替方向优化方法,推导出FMVMD模型的最优解。实验结果表明,当使用两个和三个模糊聚类时,FMVMD的中心频率对准性能分别比MVMD提高41%和28%,与使用相同簇数的GMVMD相比,FMVMD的中心频率对准性能提高13%。在25 dB信噪比条件下,FMVMD的抗噪性能比具有两个和三个模糊聚类的MVMD分别提高了44%和24%,比GMVMD提高了37%。利用双极导联和共同平均参考形式的脑电图数据进行验证,证实了FMVMD的有效性,取得了一致的良好结果。
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Fuzzy Multivariate Variational Mode Decomposition With Applications in EEG Analysis
This article introduces a novel extension of the multivariate variational mode decomposition (MVMD) method, termed fuzzy MVMD (FMVMD), designed to enhance alignment information extraction. In contrast to MVMD, FMVMD focuses on capturing finer alignment details by leveraging fuzzy clustering techniques. The proposed FMVMD algorithm proceeds through the following steps: First, FMVMD employs a modified clustering algorithm, termed fuzzy C-means (FCM), to categorize submodes within each channel into fuzzy clusters based on their contribution to common center frequencies. Second, a variational optimization model is formulated, extending the principles of MVMD to accommodate the fuzzy clustering approach used in FMVMD. Finally, an optimization technique called the alternating direction method of multipliers is employed to derive the optimal solution for the FMVMD model. Experimental results show that FMVMD achieves a 41% and 28% improvement in center frequency alignment performance compared to MVMD when using two and three fuzzy clusters, respectively, and a 13% improvement compared to GMVMD with the same number of clusters. Under a 25 dB SNR condition, FMVMD demonstrates a noise resistance improvement of 44% and 24% compared to MVMD with two and three fuzzy clusters, respectively, and a 37% improvement compared to GMVMD. Validation using EEG data in the forms of bipolar leads and common average reference confirms the effectiveness of FMVMD, achieving consistently favorable results.
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来源期刊
IEEE Transactions on Fuzzy Systems
IEEE Transactions on Fuzzy Systems 工程技术-工程:电子与电气
CiteScore
20.50
自引率
13.40%
发文量
517
审稿时长
3.0 months
期刊介绍: The IEEE Transactions on Fuzzy Systems is a scholarly journal that focuses on the theory, design, and application of fuzzy systems. It aims to publish high-quality technical papers that contribute significant technical knowledge and exploratory developments in the field of fuzzy systems. The journal particularly emphasizes engineering systems and scientific applications. In addition to research articles, the Transactions also includes a letters section featuring current information, comments, and rebuttals related to published papers.
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