Journal ArticleUnknown
Accelerating Differential Evolution Using an Adaptive Local Search
Authors
Author Affiliations
The University of Tokyo, University of Dhaka, Ube Frontier University
Published InIEEE Transactions on Evolutionary Computation
Year2008
Citations605
Abstract
We propose a crossover-based adaptive local search (LS) operation for enhancing the performance of standard differential evolution (DE) algorithm. Incorporating LS heuristics is often very useful in designing an effective evolutionary algorithm for global optimization. However, determining a single LS length that can serve for a wide range of problems is a critical issue. We present a LS technique to solve this problem by adaptively adjusting the length of the search, using a hill-climbing heuristic. The emphasis of this paper is to demonstrate how this LS scheme can improve the performance of DE. Experimenting with a wide range of benchmark functions, we show that the proposed new version of DE, with the adaptive LS, performs better, or at least comparably,…
View at Publisher
BORR does not host full-text PDFs. The button above takes you to the original publisher.