K. Seshadri Sastry

Work place: Department of AE&IEGandhi Institute of Engineering and Technology,Gunupur, Odisha, India

E-mail: aditya_shas@yahoo.com

Website:

Research Interests: Engineering

Biography

K.Seshadri Sastry was born in Srikakulam, Andhra Pradesh, India in 1978. He received B.E. degree in Electronics and CommunicationsEngineering from GulbargaUniversity, India in 2001, M.Tech in VLSI Design from Bharath University, Chennai, India in 2005. From 2001 to 2003 he worked as Assistant professor in SISTAM engineering collage, India and from 2005 to 2008 he worked as Associate professor in Chaitanya Engineering collage, Visakhapatnam, India. Since April 2008 he completed his Phd under the guidance of Prof.M.S.Prasad Babu, Department of Computer Science and Systems Engineering, Andhra University, Visakhapatnam, India. He published six research papers in International journals, attended and presented five research papers at three international conferences in India and China. He is presented working in Gandhi Institute of Engineering and Technology, Gunupur, Odisha as Associate Professor.

Author Articles
Adaptive Population Sizing Genetic Algorithm Assisted Maximum Likelihood Detection of OFDM Symbols in the Presence of Nonlinear Distortions

By K. Seshadri Sastry M.S.Prasad Babu

DOI: https://doi.org/10.5815/ijcnis.2013.07.07, Pub. Date: 8 Jun. 2013

This paper presents Adaptive Population Sizing Genetic Algorithm (AGA) assisted Maximum Likelihood (ML) estimation of Orthogonal Frequency Division Multiplexing (OFDM) symbols in the presence of Nonlinear Distortions. The proposed algorithm is simulated in MATLAB and compared with existing estimation algorithms such as iterative DAR, decision feedback clipping removal, iteration decoder, Genetic Algorithm (GA) assisted ML estimation and theoretical ML estimation. Simulation results proved that the performance of the proposed AGA assisted ML estimation algorithm is superior compared with the existing estimation algorithms. Further the computational complexity of GA assisted ML estimation increases with increase in number of generations or/and size of population, in the proposed AGA assisted ML estimation algorithm the population size is adaptive and depends on the best fitness. The population size in GA assisted ML estimation is fixed and sufficiently higher size of population is taken to ensure good performance of the algorithm but in proposed AGA assisted ML estimation algorithm the size of population changes as per requirement in an adaptive manner thus reducing the complexity of the algorithm.

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