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Journal of Industrial and Management Optimization (JIMO)
 

A hybrid method combining genetic algorithm and Hooke-Jeeves method for constrained global optimization
Pages: 1279 - 1296, Issue 4, October 2014

doi:10.3934/jimo.2014.10.1279      Abstract        References        Full text (447.3K)           Related Articles

Qiang Long - School of Science, Information, Technology and Engineering, University of Ballarat, Mt Helen, 3350, Victoria, Australia (email)
Changzhi Wu - School of Built Environment, Curtin University, Perth 4845, WA, Australia (email)

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