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A memory based differential evolution algorithm for unconstrained optimization
Affiliation:1. Department of Mathematics, VIT University Vellore Campus, Tamil Nadu, INDIA;2. Department of Mathematics, NIT, Silchar, Assam, India;1. Area of Computer Science, Centre for Research in Mathematics (CIMAT), Callejón Jalisco s/n, Mineral de Valenciana, Guanajuato, Guanajuato 36240, Mexico;2. Evolutionary Computation Group, Department of Computer Science, Center of Research and Advanced Studies, National Polytechnic Institute, Mexico City 07300, Mexico;3. Department of Economics, Quantitative Methods and Economic History, Pablo de Olavide University, Seville, Spain
Abstract:In optimization, the performance of differential evolution (DE) and their hybrid versions exist in the literature is highly affected by the inappropriate choice of its operators like mutation and crossover. In general practice, during simulation DE does not employ any strategy of memorizing the so-far-best results obtained in the initial part of the previous generation. In this paper, a new “Memory based DE (MBDE)” presented where two “swarm operators” have been introduced. These operators based on the pBEST and gBEST mechanism of particle swarm optimization. The proposed MBDE is employed to solve 12 basic, 25 CEC 2005, and 30 CEC 2014 unconstrained benchmark functions. In order to further test its efficacy, five different test system of model order reduction (MOR) problem for single-input and single-output system are solved by MBDE. The results of MBDE are compared with state-of-the-art algorithms that also solved those problems. Numerical, statistical, and graphical analysis reveals the competency of the proposed MBDE.
Keywords:Differential Evolution  Mutation  Crossover  Elitism  Unconstrained optimization
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