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Review Paper

A survey of simulated annealing as a tool for single and multiobjective optimization

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Pages 1143-1160 | Received 01 Dec 2004, Accepted 01 Jul 2005, Published online: 21 Dec 2017
 

Abstract

This paper presents a comprehensive review of simulated annealing (SA)-based optimization algorithms. SA-based algorithms solve single and multiobjective optimization problems, where a desired global minimum/maximum is hidden among many local minima/maxima. Three single objective optimization algorithms (SA, SA with tabu search and CSA) and five multiobjective optimization algorithms (SMOSA, UMOSA, PSA, WDMOSA and PDMOSA) based on SA have been presented. The algorithms are briefly discussed and are compared. The key step of SA is probability calculation, which involves building the annealing schedule. Annealing schedule is discussed briefly. Computational results and suggestions to improve the performance of SA-based multiobjective algorithms are presented. Finally, future research in the area of SA is suggested.

Acknowledgements

The correspondence of Balram Suman with Kiran Mishra, graduate student, The State University of New Jersey, Rutgers and her valuable suggestions are gratefully acknowledged.

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