| Literature DB >> 26941469 |
Abstract
This paper presents a parallel simulated annealing algorithm that is able to achieve 90% parallel efficiency in iteration on up to 192 processors and up to 40% parallel efficiency in time when applied to a 5000-dimension Rastrigin function. Our algorithm breaks scalability barriers in the method of Chu et al. (1999) by abandoning adaptive cooling based on variance. The resulting gains in parallel efficiency are much larger than the loss of serial efficiency from lack of adaptive cooling. Our algorithm resamples the states across processors periodically. The resampling interval is tuned according to the success rate for each specific number of processors. We further present an adaptive method to determine the resampling interval based on the adoption rate. This adaptive method is able to achieve nearly identical parallel efficiency but higher success rates compared to the fixed interval one using the best interval found.Entities:
Keywords: MPI; Rastrigin function; evolutionary computation; global optimization; parallel algorithm; stochastic optimization
Year: 2016 PMID: 26941469 PMCID: PMC4770898 DOI: 10.1016/j.parco.2016.02.001
Source DB: PubMed Journal: Parallel Comput ISSN: 0167-8191 Impact factor: 0.986