Title of article
Real parameter optimization by an effective differential evolution algorithm
Author/Authors
Mohamed, Ali Wagdy King Abdulaziz University - Faculty of Science - Statistics Department, Saudi Arabia , Mohamed, Ali Wagdy Cairo University - Institute of Statistical Studies and Research - Operations Research Department, Egypt , Sabry, Hegazy Zaher Cairo University - Institute of Statistical Studies and Research - Mathematical Statistics Department, Egypt , Abd-Elaziz, Tareq Cairo University - Institute of Statistical Studies and Research - Operations Research Department, Egypt
From page
37
To page
53
Abstract
This paper introduces an Effective Differential Evolution (EDE) algorithm for solving real parameter optimization problems over continuous domain. The proposed algorithm proposes a new mutation rule based on the best and the worst individuals among the entire population of a particular generation. The mutation rule is combined with the basic mutation strategy through a linear decreasing probability rule. The proposed mutation rule is shown to promote local search capability of the basic DE and to make it faster. Furthermore, a random mutation scheme and a modified Breeder Genetic Algorithm (BGA) mutation scheme are merged to avoid stagnation and/or premature convergence. Additionally, the scaling factor and crossover of DE are introduced as uniform random numbers to enrich the search behavior and to enhance the diversity of the population.The effectiveness and benefits of the proposed modifications used in EDE has been experimentally investigated. Numerical experiments on a set of bound-constrained problems have shown that the new approach is efficient, effective and robust. The comparison results between the EDE and several classical differential evolution methods and state-of-the-art parameter adaptive differential evolution variants indicate that the proposed EDE algorithm is competitive with , and in some cases superior to, other algorithms in terms of final solution quality, efficiency, convergence rate, and robustness.
Keywords
Differential evolution , Best–worst mutation , Global optimization , Modified BGA mutation
Journal title
Egyptian Informatics Journal
Journal title
Egyptian Informatics Journal
Record number
2620903
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