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A Convex Combination Least Mean Square Algorithm Based on the Distributed Diffusion Strategy for Sensor Networks

Published: 16 March 2024 Publication History

Abstract

In this paper, we propose a novel convex combination algorithm based on the distributed diffusion strategy, utilizing the least mean square (LMS) approach to enhance the performance of sensor networks. By enabling communication among nodes, the algorithm achieves decentralization and improves the robustness of the network. To address the limitations of slow convergence speed and large static error associated with fixed step size errors, we introduce a convex combination strategy that integrates two filters with variable step sizes. The LMS algorithm with the convex combination variable step size assigns a higher weight to the filter with a larger step size when the error is significant, ensuring rapid convergence. Conversely, the convex combination small step size filter is assigned a higher weight when the error is small, reducing the error in the stable state. The convergence behavior of the proposed algorithm is analyzed through theoretical analysis, and its complexity is compared with that of the distributed diffusion LMS algorithm through extensive experimental simulations. The results demonstrate that the combination of the LMS algorithm with the distributed diffusion strategy offers advantages in challenging external environments, including improved convergence speed and reduced stability error. This study makes significant contributions to the existing research field by introducing a novel convex combination algorithm that addresses the shortcomings of fixed step size errors and expands the range of available algorithms. By leveraging the distributed diffusion strategy, our approach enhances the robustness of sensor networks and achieves improved performance. The findings of this study provide valuable insights for researchers working on decentralized algorithms and highlight the potential of combining the LMS algorithm with the distributed diffusion strategy in challenging environmental conditions.

References

[1]
Arenas-Garcia J and Figueiras-Vidal A Adaptive combination of normalised filters for robust system identification Electron. Lett. 2005 41 15 874-875
[2]
Arenas-García J, Martínez-Ramón M, Navia-Vazquez A, and Figueiras-Vidal AR Plant identification via adaptive combination of transversal filters Signal Process. 2006 86 9 2430-2438
[3]
Ashkezari-Toussi S and Sadoghi-Yazdi H Robust diffusion LMS over adaptive networks Signal Process. 2019 158 201-209
[4]
Carini A and Sicuranza GL Fourier nonlinear filters Signal Process. 2014 94 183-194
[5]
Carini A and Sicuranza GL Recursive even mirror Fourier nonlinear filters and simplified structures IEEE Trans. Signal Process. 2014 62 24 6534-6544
[6]
Carini A and Sicuranza GL BIBO-stable recursive functional link polynomial filters IEEE Trans. Signal Process. 2016 65 6 1595-1606
[7]
Carini A and Sicuranza GL A study about Chebyshev nonlinear filters Signal Process. 2016 122 24-32
[8]
Cattivelli FS and Sayed AH Diffusion LMS strategies for distributed estimation IEEE Trans. Signal Process. 2009 58 3 1035-1048
[9]
Chan SC and Zou YX A recursive least M-estimate algorithm for robust adaptive filtering in impulsive noise: Fast algorithm and convergence performance analysis IEEE Trans. Signal Process. 2004 52 4 975-991
[10]
Chang H and Li W Correction-based diffusion LMS algorithms for distributed estimation Circ. Syst. Signal Process. 2020 39 4136-4154
[11]
Das DP and Panda G Active mitigation of nonlinear noise processes using a novel filtered-s LMS algorithm IEEE Trans. Speech Audio Process. 2004 12 3 313-322
[12]
X. Guo, J. Jiang, J. Chen, S. Du, L. Tan, Convex combination recursive even mirror Fourier nonlinear filter for nonlinear active noise control, in 2019 22nd International Conference on Electrical Machines and Systems (ICEMS), IEEE, pp. 1-6 (2019)
[13]
Guo X, Li Y, Jiang J, Dong C, Du S, and Tan L Adaptive function expansion 3-D diagonal-structure bilinear filter for active noise control of saturation nonlinearity IEEE Access 2018 6 65139-65150
[14]
Huang W, Li L, Li Q, and Yao X Diffusion robust variable step-size LMS algorithm over distributed networks IEEE Access 2018 6 47511-47520
[15]
Le DC, Zhang J, and Pang Y A bilinear functional link artificial neural network filter for nonlinear active noise control and its stability condition Appl. Acoust. 2018 132 19-25
[16]
R. Leahy, Z. Zhou, Y.C. Hsu, Adaptive filtering of stable processes for active attenuation of impulsive noise, in 1995 international conference on acoustics, speech, and signal processing, IEEE, pp. 2983-2986 (1995)
[17]
Lopes CG and Sayed AH Incremental adaptive strategies over distributed networks IEEE Trans. Signal Process. 2007 55 8 4064-4077
[18]
Lu L and Zhao H Adaptive Volterra filter with continuous lp-norm using a logarithmic cost for nonlinear active noise control J. Sound Vib. 2016 364 14-29
[19]
Luo L and Sun J A novel bilinear functional link neural network filter for nonlinear active noise control Appl. Soft Comput. 2018 68 636-650
[20]
Mateos G, Schizas ID, and Giannakis GB Distributed recursive least-squares for consensus-based in-network adaptive estimation IEEE Trans. Signal Process. 2009 57 11 4583-4588
[21]
Ni J, Chen J, and Chen X Diffusion sign-error LMS algorithm: formulation and stochastic behavior analysis Signal Process. 2016 128 142-149
[22]
Patel V, Gandhi V, Heda S, and George NV Design of adaptive exponential functional link network-based nonlinear filters IEEE Trans. Circuits Syst. I Regul. Pap. 2016 63 9 1434-1442
[23]
M.O.B. Saeed, A. Zerguine, A new variable step-size strategy for adaptive networks, in 2011 Conference Record of the Forty Fifth Asilomar Conference on Signals, Systems and Computers (ASILOMAR), IEEE, pp. 312–315 (2011)
[24]
M.O.B. Saeed, A. Zerguine, S.A. Zummo, Variable step-size least mean square algorithms over adaptive networks, in 10th International Conference on Information Science, Signal Processing and their Applications (ISSPA 2010), IEEE, pp. 381–384 (2010)
[25]
Schizas ID, Mateos G, and Giannakis GB Distributed LMS for consensus-based in-network adaptive processing IEEE Trans. Signal Process. 2009 57 6 2365-2382
[26]
Sicuranza GL and Carini A A generalized FLANN filter for nonlinear active noise control IEEE Trans. Audio Speech Lang. Process. 2011 19 8 2412-2417
[27]
Sicuranza GL and Carini A On the BIBO stability condition of adaptive recursive FLANN filters with application to nonlinear active noise control IEEE Trans. Audio Speech Lang. Process. 2011 20 1 234-245
[28]
Tan L, Dong C, and Du S On implementation of adaptive bilinear filters for nonlinear active noise control Appl. Acoust. 2016 106 122-128
[29]
Tan L and Jiang J Adaptive Volterra filters for active control of nonlinear noise processes IEEE Trans. Signal Process. 2001 49 8 1667-1676
[30]
P. Thanigai, S.M. Kuo, R. Yenduri, Nonlinear active noise control for infant incubators in neo-natal intensive care units, in 2007 IEEE International Conference on Acoustics, Speech and Signal Processing-ICASSP’07, IEEE, pp. 1–109 (2007)
[31]
Wang G, Zhao H, and Song P Robust variable step-size reweighted zero-attracting least mean M-estimate algorithm for sparse system identification IEEE Trans. Circuits Syst. II Express Briefs 2019 67 6 1149-1153
[32]
Wu L, He H, and Qiu X An active impulsive noise control algorithm with logarithmic transformation IEEE Trans. Audio Speech Lang. Process. 2010 19 4 1041-1044
[33]
Yu Y and Zhao H Robust incremental normalized least mean square algorithm with variable step sizes over distributed networks Signal Process. 2018 144 1-6
[34]
Yu Y, Zhao H, Wang W, and Lu L Robust diffusion Huber-based normalized least mean square algorithm with adjustable thresholds Circ. Syst. Signal Process. 2020 39 2065-2093
[35]
L. Yun, H. Xiaobin, G. Qianqian, Diffusion variable step size algorithm based on maximum correntropy criterion, in 2021 IEEE International Conference on Power Electronics, Computer Applications (ICPECA), IEEE, pp. 558–561 (2021)
[36]
Zayyani H Communication reducing diffusion LMS robust to impulsive noise using smart selection of communication nodes Circ. Syst. Signal Process. 2022 41 3 1788-1802
[37]
Zhao H, Zeng X, He Z, and Li T Adaptive RSOV filter using the FELMS algorithm for nonlinear active noise control systems Mech. Syst. Signal Process. 2013 34 1–2 378-392
[38]
Zhao H, Zeng X, He Z, Yu S, and Chen B Improved functional link artificial neural network via convex combination for nonlinear active noise control Appl. Soft Comput. 2016 42 351-359

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Information & Contributors

Information

Published In

cover image Circuits, Systems, and Signal Processing
Circuits, Systems, and Signal Processing  Volume 43, Issue 6
Jun 2024
684 pages

Publisher

Birkhauser Boston Inc.

United States

Publication History

Published: 16 March 2024
Accepted: 07 February 2024
Revision received: 06 February 2024
Received: 21 March 2023

Author Tags

  1. Distributed diffusion strategy
  2. Convex combination
  3. Sensor network

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