Multi-mutation scheme adaptive differential evolution for solving truss sizing optimization

Main Article Content

Natee Panagant
Sujin Bureerat

Abstract

A novel adaptive differential evolution algorithm called Multi-Mutation Scheme Adaptive Differential Evolution (MMADE) is developed in this article. Several truss sizing optimization problems have been posed for performance test. The proposed adaptive algorithm is integrated with adaptive scaling factor, crossover ratio and mutation schemes selection. Results obtained from the proposed algorithm are compared to recent adaptive algorithms from literature. The MMADE show very competitive performance compared to those state-of-the-art adaptive algorithms.

Article Details

How to Cite
Panagant, N., & Bureerat, S. (2018). Multi-mutation scheme adaptive differential evolution for solving truss sizing optimization. Asia-Pacific Journal of Science and Technology, 23(3), APST–23. https://doi.org/10.14456/apst.2018.5
Section
Research Articles

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