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Gene Suppressor: An added phase toward solving large scale optimization problems in genetic algorithm
Affiliation:1. Department of Computer Science, Pondicherry University, Pondicherry, India;2. Department of ECE/MIT, Pondicherry, India;3. Department of Computer Science, RGET, Pondicherry, India;1. School of Electronic Information, Wuhan University, Wuhan 430072, China;2. Second Ship Design and Research Institute, Wuhan 430064, China;1. Department of Mechanical Engineering, Universiti Teknologi Petronas, Malaysia;2. Department Civil Engineering, Universiti Teknologi Petronas, Malaysia;1. Departamento de Lenguajes y Sistemas Informáticos, Universidad de Sevilla, Avd. Reina Mercedes s/n, 41012 Seville, Spain;2. Department of Computer Science, School of Engineering, Pablo de Olavide University, Ctra. Utrera km. 1, 41013 Seville, Spain;1. Department of Information Systems Management and GREC Group, Esade – Universitat Ramon Llull, Barcelona, Spain;2. Department of Neonatology, Máxima Medical Center, The Netherlands;3. Department of Applied Mathematics 2 and GREC Group, Technical University of Catalonia, UPC-BarcelonaTech, Barcelona, Spain;1. Pondicherry University (A Central University of India), India;2. Periyar Govt. College, Cuddalore, India;3. National University of Kaohsiung, Taiwan
Abstract:Genetic algorithm (GA) is a branch of evolutionary algorithm, has proved its effectiveness in solving constrain based complex real world problems in variety of dimensions. The individual phases of GA are the mimic of the basic biological processes and hence the self-adaptability of GA varied in accordance to the adjustable natural processes. In some instances, self-adaptability in GA fails in identifying adaptable genes to form a solution set after recombination, which leads converge toward infeasible solution, sometimes, this, infeasible solution could not be converted into feasible form by means of any of the repairing techniques. In this perspective, Gene Suppressor (GS), a bio-inspired process is being proposed as a new phase after recombination in the classical GA life cycle. This phase works on new individuals generated after recombination to attain self-adaptability by adapting best genes in the environment to regulate chromosomes expression for achieving desired phenotype expression. Repairing in this phase converts infeasible solution into feasible solution by suppressing conflicting gene from the environment. Further, the solution vector expression is improved by inducing best genes expression in the environment within the set of intended constrains. Multiobjective Multiple Knapsack Problems (MMKP), one of the popular NP hard combinatorial problems is being considered as the test-bed for proving the competence of the proposed new phase of GA. The standard MMKP benchmark instances obtained from OR-library 22] are used for the experiments reported in this paper. The outcomes of the proposed method is compared with the existing repairing techniques, where the analyses proved the proficiency of the proposed GS model in terms of better error and convergence rates for all instances.
Keywords:Bio-inspired process  Evolutionary computation  Gene Suppression  Genetic algorithm  Multiple Knapsack Problem  Optimization
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