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Main Authors: Zhou, Wei, Li, Wei-Jian, Zhu, Desen, Xu, Hongbin, Ren, Wei-Xin
Format: Preprint
Published: 2025
Subjects:
Online Access:https://arxiv.org/abs/2507.11919
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author Zhou, Wei
Li, Wei-Jian
Zhu, Desen
Xu, Hongbin
Ren, Wei-Xin
author_facet Zhou, Wei
Li, Wei-Jian
Zhu, Desen
Xu, Hongbin
Ren, Wei-Xin
contents While time-frequency analysis provides rich representations of multicomponent signals, current decomposition methods often overlook the morphological structure where components manifest as distinct regions. This study introduces time-frequency mode decomposition (TFMD), a novel framework that formulates signal decomposition as a generalized morphological segmentation problem within the continuous phase space. TFMD establishes an operator-theoretic framework utilizing the short-time Fourier transform as a canonical tight frame. The methodology employs unsupervised k-means clustering to identify high-energy pixels, followed by connected component labeling to establish core regions. A novel iterative competitive dilation algorithm is then applied to expand these core regions to recover the full support of each mode and define its specific time-frequency mask for mode reconstruction. This approach automatically determines the number of components without prior specification while strictly enforcing mutual exclusivity between modes. Comprehensive numerical investigations demonstrate TFMD's superior reconstruction fidelity, noise robustness, and computational efficiency compared to benchmark methods. TFMD achieves the lowest individual mode errors across diverse non-stationary signals and secures the second-best runtime. Practical validation through wind turbine vibration analysis confirms TFMD's ability to isolate both dominant fundamental frequencies and weaker harmonic components across discrete operational states, overcoming limitations of mode splitting and mixing issues observed in benchmark methods.
format Preprint
id arxiv_https___arxiv_org_abs_2507_11919
institution arXiv
publishDate 2025
record_format arxiv
spellingShingle Time-Frequency Mode Decomposition: A Morphological Segmentation Framework for Signal Analysis and Its Application
Zhou, Wei
Li, Wei-Jian
Zhu, Desen
Xu, Hongbin
Ren, Wei-Xin
Signal Processing
While time-frequency analysis provides rich representations of multicomponent signals, current decomposition methods often overlook the morphological structure where components manifest as distinct regions. This study introduces time-frequency mode decomposition (TFMD), a novel framework that formulates signal decomposition as a generalized morphological segmentation problem within the continuous phase space. TFMD establishes an operator-theoretic framework utilizing the short-time Fourier transform as a canonical tight frame. The methodology employs unsupervised k-means clustering to identify high-energy pixels, followed by connected component labeling to establish core regions. A novel iterative competitive dilation algorithm is then applied to expand these core regions to recover the full support of each mode and define its specific time-frequency mask for mode reconstruction. This approach automatically determines the number of components without prior specification while strictly enforcing mutual exclusivity between modes. Comprehensive numerical investigations demonstrate TFMD's superior reconstruction fidelity, noise robustness, and computational efficiency compared to benchmark methods. TFMD achieves the lowest individual mode errors across diverse non-stationary signals and secures the second-best runtime. Practical validation through wind turbine vibration analysis confirms TFMD's ability to isolate both dominant fundamental frequencies and weaker harmonic components across discrete operational states, overcoming limitations of mode splitting and mixing issues observed in benchmark methods.
title Time-Frequency Mode Decomposition: A Morphological Segmentation Framework for Signal Analysis and Its Application
topic Signal Processing
url https://arxiv.org/abs/2507.11919