A great deluge and tabu search hybrid with two-stage memory support for quadratic assignment problem

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Elsevier

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info:eu-repo/semantics/closedAccess

Abstract

A two-stage memory architecture is maintained within the framework of great deluge algorithm for the solution of single-objective quadratic assignment problem. Search operators exploiting the accumulated experience in memory are also implemented to direct the search towards more promising regions of the solution space. The level-based acceptance criterion of the great deluge algorithm is applied for each best solution extracted in a particular iteration. The use of short- and long-term memory-based search supported by effective move operators resulted in a powerful combinatorial optimization algorithm. A successful variant of tabu search is employed as the local search method that is only applied over a few randomly selected memory elements when the second stage memory is updated. The success of the presented approach is illustrated using sets of well-known benchmark problems and evaluated in comparison to well-known combinatorial optimization algorithms. Experimental evaluations clearly demonstrate that the presented approach is a competitive and powerful alternative for solving quadratic assignment problems. (C) 2015 Elsevier B.V. All rights reserved.

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Combinatorial optimization, Great deluge algorithm, Memory-based search, Metaheuristics, Quadratic assignment problem, Tabu search

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Applied Soft Computing

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36

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