Optimized LMS algorithm for system identification and noise cancellation

Abstract Optimization by definition is the action of making most effective or the best use of a resource or situation and that is required almost in every field of engineering. In this work, the optimization of Least Mean square (LMS) algorithm is carried out with the help of Particle Swarm Optimization (PSO) and Ant Colony Optimization (ACO). Efforts have been made to find out the advantages and disadvantages of combining gradient based (LMS) algorithm with Swarm Intelligence SI (ACO, PSO). This optimization of LMS algorithm will help us in further extending the uses of adaptive filtering to the system having multi-model error surface that is still a gray area of adaptive filtering. Because the available version of LMS algorithm that plays an important role in adaptive filtering is a gradient based algorithm, that get stuck at the local minima of system with multi-model error surface considering it global minima, resulting in an non-optimized convergence. By virtue of the proposed method we have got a profound solution for the problem associated with system with multimodal error surface. The results depict significant improvements in the performance and displayed fast convergence rate, rather stucking at local minima. Both the SI techniques displayed their own advantage and can be separately combined with LMS algorithm for adaptive filtering. This optimization of LMS algorithm will further help to resolve serious interference and noise issues and holds a very important application in the field of biomedical science.

[1]  Wei-Der Chang Coefficient estimation of IIR filter by a multiple crossover genetic algorithm , 2006, Comput. Math. Appl..

[2]  Riccardo Poli,et al.  Particle swarm optimization , 1995, Swarm Intelligence.

[3]  Zheng-yi Wang,et al.  Parameters optimization of SVM based on the swarm intelligence , 2020 .

[4]  Rui Dinis,et al.  A new combination of adaptive channel estimation methods and TORC equalizer in MC-CDMA systems , 2020, Int. J. Commun. Syst..

[5]  Jacob Benesty,et al.  An optimized NLMS algorithm for system identification , 2016, Signal Process..

[6]  Manabu Arikawa,et al.  Wide range rate adaptation of QAM-based probabilistic constellation shaping using a fixed FEC with blind adaptive equalization. , 2020, Optics express.

[7]  Mingli Chen,et al.  Linear minimum mean-square error filtering for evoked responses: application to fetal MEG , 2006, IEEE Transactions on Biomedical Engineering.

[8]  Ashutosh Sharma,et al.  A trust management scheme to secure mobile information centric networks , 2020, Comput. Commun..

[9]  Paulo Sergio Ramirez,et al.  Introduction to Adaptive Filtering , 2002 .

[10]  Richard Alan Peters,et al.  Particle Swarm Optimization: A survey of historical and recent developments with hybridization perspectives , 2018, Mach. Learn. Knowl. Extr..

[11]  Handbook of Research on Metaheuristics for Order Picking Optimization in Warehouses to Smart Cities , 2019, Advances in Human Resources Management and Organizational Development.

[12]  Ashutosh Sharma,et al.  A Holistic Survey on Disaster and Disruption in Optical Communication Network , 2020 .

[13]  Paulo Sergio Ramirez Conventional RLS Adaptive Filter , 2002 .

[14]  Hemraj Saini,et al.  A Secure, Energy- and SLA-Efficient (SESE) E-Healthcare Framework for Quickest Data Transmission Using Cyber-Physical System , 2019, Sensors.

[15]  Lei Luo,et al.  Steady-state mean-square deviation analysis of improved ℓ0-norm-constraint LMS algorithm for sparse system identification , 2020, Signal Process..

[16]  Guru Gobind Step Size Optimization of LMS Algorithm Using Particle Swarm Optimization Algorithm in System Identification , 2013 .

[17]  A. Choubey,et al.  Quantum Behaved Particle Swarm Optimization Technique Applied to FIR-Based Linear and Nonlinear Channel Equalizer , 2018, Advances in Intelligent Systems and Computing.

[18]  Rajiv Kumar,et al.  Prediction of the price of Ethereum blockchain cryptocurrency in an industrial finance system , 2020, Comput. Electr. Eng..

[19]  Constantin Paleologu,et al.  On the Step-Size optimization of the LMS Algorithm , 2019, 2019 42nd International Conference on Telecommunications and Signal Processing (TSP).

[20]  G. Wittum,et al.  Adaptive filtering , 1997 .

[21]  Meera Dash,et al.  Distributed parameter estimation of IIR system using diffusion particle swarm optimization algorithm , 2017, Journal of King Saud University - Engineering Sciences.

[22]  Thomas Stützle,et al.  Ant Colony Optimization: Overview and Recent Advances , 2018, Handbook of Metaheuristics.

[23]  Jacob Benesty,et al.  A Connection Between the Kalman Filter and an Optimized LMS Algorithm for Bilinear Forms , 2018, Algorithms.

[24]  Wu Deng,et al.  An Improved Ant Colony Optimization Algorithm Based on Hybrid Strategies for Scheduling Problem , 2019, IEEE Access.

[25]  Paulo Alexandre Crisóstomo Lopes Bayesian step least mean squares algorithm for Gaussian signals , 2020, IET Signal Process..