Article ID: | iaor20082912 |
Country: | United Kingdom |
Volume: | 6 |
Issue: | 3 |
Start Page Number: | 433 |
End Page Number: | 454 |
Publication Date: | Sep 2007 |
Journal: | Journal of Mathematical Modelling and Algorithms |
Authors: | Sait Sadiq M., Ali Mustafa Imran, Zaidi Ali Mustafa |
Keywords: | computers, heuristics: genetic algorithms, optimization |
Simulated Evolution (SimE) is an evolutionary metaheuristic that has produced results comparable to well established stochastic heuristics such as SA, TS and GA, with shorter runtimes. However, for optimization problems with a very large set of elements, such as in VLSI cell placement and routing, runtimes can still be very large and parallelization is an attractive option for reducing runtimes. Compared to other metaheuristics, parallelization of SimE has not been extensively explored. This paper presents a comprehensive set of parallelization approaches for SimE when applied to multi objective VLSI cell placement problem. Each of these approaches is evaluated with respect to SimE characteristics and the constraints imposed by the problem instance. Conclusions drawn can be extended to parallelization of SimE when applied to other optimization problems.