RRCNN: A novel signal decomposition approach based on recurrent residue convolutional neural network (2307.01725v1)
Abstract: The decomposition of non-stationary signals is an important and challenging task in the field of signal time-frequency analysis. In the recent two decades, many signal decomposition methods led by the empirical mode decomposition, which was pioneered by Huang et al. in 1998, have been proposed by different research groups. However, they still have some limitations. For example, they are generally prone to boundary and mode mixing effects and are not very robust to noise. Inspired by the successful applications of deep learning in fields like image processing and natural language processing, and given the lack in the literature of works in which deep learning techniques are used directly to decompose non-stationary signals into simple oscillatory components, we use the convolutional neural network, residual structure and nonlinear activation function to compute in an innovative way the local average of the signal, and study a new non-stationary signal decomposition method under the framework of deep learning. We discuss the training process of the proposed model and study the convergence analysis of the learning algorithm. In the experiments, we evaluate the performance of the proposed model from two points of view: the calculation of the local average and the signal decomposition. Furthermore, we study the mode mixing, noise interference, and orthogonality properties of the decomposed components produced by the proposed method. All results show that the proposed model allows for better handling boundary effect, mode mixing effect, robustness, and the orthogonality of the decomposed components than existing methods.
- The empirical mode decomposition and the Hilbert spectrum for nonlinear and non-stationary time series analysis, Proceedings of the Royal Society of London. Series A: Mathematical, Physical and Engineering Sciences 454 (1998) 903–995.
- Semantic decomposition and recognition of long and complex manipulation action sequences, International Journal of Computer Vision 122 (2017) 84–115.
- M. Thilagaraj, M. P. Rajasekaran, An empirical mode decomposition (EMD)-based scheme for alcoholism identification, Pattern Recognition Letters 125 (2019) 133–139.
- EMD2FNN: A strategy combining empirical mode decomposition and factorization machine based neural network for stock market trend prediction, Expert Systems with Applications 115 (2019) 136–151.
- J. S. Smith, The local mean decomposition and its application to EEG perception data, Journal of the Royal Society Interface 2 (2005) 443–454.
- Empirical mode decomposition: an analytical approach for sifting process, IEEE Signal Processing Letters 12 (2005) 764–767.
- Analysis of intrinsic mode functions: A PDE approach, IEEE Signal Processing Letters 17 (2009) 398–401.
- Local integral mean-based sifting for empirical mode decomposition, IEEE Signal Processing Letters 16 (2009) 841–844.
- Adaptive local iterative filtering for signal decomposition and instantaneous frequency analysis, Applied and Computational Harmonic Analysis 41 (2016) 384–411.
- A. Cicone, E. Pellegrino, Multivariate fast iterative filtering for the decomposition of nonstationary signals, IEEE Transactions on Signal Processing 70 (2022) 1521–1531.
- Iterative nonlinear chirp mode decomposition: A Hilbert-Huang transform-like method in capturing intra-wave modulations of nonlinear responses, Journal of Sound and Vibration 485 (2020) 115571.
- S. Peng, W.-L. Hwang, Null space pursuit: An operator-based approach to adaptive signal separation, IEEE Transactions on Signal processing 58 (2010) 2475–2483.
- An alternative formulation for the empirical mode decomposition, IEEE Transactions on Signal Processing 60 (2012) 2236–2246.
- T. Y. Hou, Z. Shi, Adaptive data analysis via sparse time-frequency representation, Advances in Adaptive Data Analysis 3 (2011) 1–28.
- A multicomponent proximal algorithm for empirical mode decomposition, in: 2012 Proceedings of the 20th European Signal Processing Conference (EUSIPCO), IEEE, 2012, pp. 1880–1884.
- Empirical mode decomposition revisited by multicomponent non-smooth convex optimization, Signal Processing 102 (2014) 313–331.
- K. Dragomiretskiy, D. Zosso, Variational mode decomposition, IEEE Transactions on Signal Processing 62 (2013) 531–544.
- N. ur Rehman, H. Aftab, Multivariate variational mode decomposition, IEEE Transactions on Signal Processing 67 (2019) 6039–6052.
- Optimal averages for nonlinear signal decompositions—another alternative for empirical mode decomposition, Signal Processing 121 (2016) 17–29.
- Synchrosqueezed wavelet transforms: An empirical mode decomposition-like tool, Applied and Computational Harmonic Analysis 30 (2011) 243–261.
- J. Gilles, Empirical wavelet transform, IEEE Transactions on Signal Processing 61 (2013) 3999–4010.
- The Fourier decomposition method for nonlinear and non-stationary time series analysis, Proceedings of the Royal Society A: Mathematical, Physical and Engineering Sciences 473 (2017) 20160871.
- P. Singh, Novel Fourier quadrature transforms and analytic signal representations for nonlinear and non-stationary time-series analysis, Royal Society open science 5 (2018) 181131.
- Adaptive fourier decomposition for multi-channel signal analysis, IEEE Transactions on Signal Processing 70 (2022) 903–918.
- H. Li, Deep learning for natural language processing: advantages and challenges, National Science Review 5 (2018) 24–26.
- Deep learning of dynamics and signal-noise decomposition with time-stepping constraints, Journal of Computational Physics 396 (2019) 483–506.
- Seismic signal denoising and decomposition using deep neural networks, IEEE Transactions on Geoscience and Remote Sensing 57 (2019) 9476–9488.
- Ensemble deep learning for automated visual classification using EEG signals, Pattern Recognition 102 (2020) 107147.
- Deep learning-based system to predict cardiac arrhythmia using hybrid features of transform techniques, Intelligent Systems with Applications 16 (2022) 200127.
- Mine microseismic time series data integrated classification based on improved wavelet decomposition and ELM, Cognitive Computation (2022) 1–21.
- Detecting regions of maximal divergence for spatio-temporal anomaly detection, IEEE Transactions on Pattern Analysis and Machine Intelligence 41 (2019) 1088–1101.
- Learning modulation filter networks for weak signal detection in noise, Pattern Recognition 109 (2021) 107590.
- S. Bubeck, et al., Convex optimization: Algorithms and complexity, Foundations and Trends in Machine Learning 8 (2015) 231–357.
- Deep residual learning for image recognition, in: Proceedings of the IEEE Conference on Computer Vision and Pattern Recognition, 2016, pp. 770–778.
- Faster ICA under orthogonal constraint, in: 2018 IEEE International Conference on Acoustics, Speech and Signal Processing (ICASSP), 2018, pp. 4464–4468.
- A new first-order algorithmic framework for optimization problems with orthogonality constraints, SIAM Journal on Optimization 28 (2018) 302–332.
- A new view of nonlinear water waves: the Hilbert spectrum, Annual Review of Fluid Mechanics 31 (1999) 417–457.
- Z. Wu, N. E. Huang, Ensemble empirical mode decomposition: A noise-assisted data analysis method, Advances in Adaptive Data Analysis 1 (2009) 1–41.