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Automated Detection and Characterization of Singularities in Functions Using Neural Networks-From FFT Signals

Automated Detection and Characterization of Singularities in Functions Using Neural Networks-From FFT Signals

Year:    2024

Author:    Zheng Chen, Seulip Lee, Lin Mu

International Journal of Numerical Analysis and Modeling, Vol. 21 (2024), Iss. 5 : pp. 629–651

Abstract

Singularities, distinctive features signifying abrupt changes in function behavior, hold pivotal importance across numerous scientific disciplines. Accurate detection and characterization of these singularities are essential for understanding complex systems and performing data analysis. In this manuscript, we introduce a novel approach that employs neural networks and machine learning for the automated detection and characterization of singularities based on spectral data obtained through fast Fourier transform (FFT). Our methodology uses neural networks trained on known singular functions, along with the corresponding singularity information, to efficiently identify the location and characterize the nature of singularities within FFT data from arbitrary functions. Several tests have been provided to demonstrate the performance of our approach, including singularity detection for functions with single singularities and multiple singularities.

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Journal Article Details

Publisher Name:    Global Science Press

Language:    English

DOI:    https://doi.org/10.4208/ijnam2024-1025

International Journal of Numerical Analysis and Modeling, Vol. 21 (2024), Iss. 5 : pp. 629–651

Published online:    2024-01

AMS Subject Headings:    Global Science Press

Copyright:    COPYRIGHT: © Global Science Press

Pages:    23

Keywords:    Deep neural network singularity detection spectral data.

Author Details

Zheng Chen Email

Seulip Lee Email

Lin Mu Email