Massively parallel analog tabu search using neural networks applied to simple plant location problems

Massively parallel analog tabu search using neural networks applied to simple plant location problems

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Article ID: iaor199989
Country: Netherlands
Volume: 93
Issue: 2
Start Page Number: 317
End Page Number: 330
Publication Date: Sep 1996
Journal: European Journal of Operational Research
Authors: , ,
Keywords: neural networks, combinatorial analysis, combinatorial optimization
Abstract:

Neural networks and tabu search are two very significant techniques which have emerged recently for the solution of discrete optimization problems. Neural networks possess the desirable quality of implementability in massively parallel hardware while the tabu search metaheuristic shows great promise as a powerful global search method. Tabu Neural Network (TANN) integrates an analog version of the short term memory component of tabu search with neural networks to generate a massively parallel, analog global search strategy that is hardware implementable. In TANN, both the choice of the element to enter the tabu list as well as the maintenance of the decision elements in tabu status is accomplished via neuronal activities. In this paper we apply TANN to the simple plant location problem. Comparisons with the Hopfield–Tank network show an average improvement of about 85% in the quality of solutions obtained.

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