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Published December 30, 2016 | Version v1
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A Study of Global Numerical Maximization using Hybrid Chemical Reaction Algorithms

  • 1. Havyarimana Vincent, Departemnt of Applied Sciences, Ecole Normale SupĂ©rieure, 6983, Bujumbura, Burundi,
  • 1. #S2, 215, Kavuri Hills Jubilee Hills, Hyderabad-500033, India

Description

Several approaches are proposed to solve global numerical optimization problems. Most of researchers have experimented the robustness of their algorithms by generating the result based on minimization aspect. In this paper, we focus on maximization problems by using several hybrid chemical reaction optimization algorithms including orthogonal chemical reaction optimization (OCRO), hybrid algorithm based on particle swarm and chemical reaction optimization (HP-CRO), real-coded chemical reaction optimization (RCCRO) and hybrid mutation chemical reaction optimization algorithm (MCRO), which showed success in minimization. The aim of this paper is to demonstrate that the approaches inspired by chemical reaction optimization are not only limited to minimization, but also are suitable for maximization. Moreover, experiment comparison related to other maximization algorithms is presented and discussed.

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