A novel algorithm for the decomposition of non-stationary multidimensional and multivariate signals
Roberto Cavassi, Antonio Cicone, Enza Pellegrino, Haomin Zhou

TL;DR
The paper introduces MdMvFIF, a new algorithm extending Fast Iterative Filtering to decompose complex, non-stationary signals varying in space and time, improving analysis in multidimensional data.
Contribution
It presents the first multidimensional and multivariate FIF algorithm, enabling effective decomposition of non-stationary signals in higher dimensions.
Findings
Successfully applied to artificial signals demonstrating accuracy.
Effective on real-world multidimensional data.
Outperforms traditional methods in non-stationary contexts.
Abstract
The decomposition of a signal is a fundamental tool in many fields of research, including signal processing, geophysics, astrophysics, engineering, medicine, and many more. By breaking down complex signals into simpler oscillatory components we can enhance the understanding and processing of the data, unveiling hidden information contained in them. Traditional methods, such as Fourier analysis and wavelet transforms, which are effective in handling mono-dimensional stationary signals struggle with non-stationary data sets and they require, this is the case of the wavelet, the selection of predefined basis functions. In contrast, the Empirical Mode Decomposition (EMD) method and its variants, such as Iterative Filtering (IF), have emerged as effective nonlinear approaches, adapting to signals without any need for a priori assumptions. To accelerate these methods, the Fast Iterative…
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Taxonomy
TopicsMachine Fault Diagnosis Techniques · Fault Detection and Control Systems · Blind Source Separation Techniques
