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Hybridizing Adaptive Biogeography-Based Optimization with Differential Evolution for Multi-Objective Optimization Problems

机译:基于自适应生物地理学的优化与差分进化的混合解决多目标优化问题

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In order to improve the performance of optimization, we apply a hybridization of adaptive biogeography-based optimization (BBO) algorithm and differential evolution (DE) to multi-objective optimization problems (MOPs). A model of multi-objective evolutionary algorithms (MOEAs) is established, in which the habitat suitability index (HSI) is redefined, based on the Pareto dominance relation, and density information among the habitat individuals. Then, we design a new algorithm, in which the modification probability and mutation probability are changed, according to the relation between the cost of fitness function of randomly selected habitats of last generation, and average cost of fitness function of all habitats of last generation. The mutation operators based on DE algorithm, are modified, and the migration operators based on number of iterations, are improved to achieve better convergence performance. Numerical experiments on different ZDT and DTLZ benchmark functions are performed, and the results demonstrate that the proposed MABBO algorithm has better performance on the convergence and the distribution properties comparing to the other MOEAs, and can solve more complex multi-objective optimization problems efficiently.
机译:为了提高优化的性能,我们将基于自适应生物地理的优化(BBO)算法和差分进化(DE)的混合技术应用于多目标优化问题(MOP)。建立了多目标进化算法(MOEA)模型,其中基于帕累托优势关系和生境个体之间的密度信息,重新定义了生境适宜性指数(HSI)。然后,根据后代随机选择生境的适应度函数代价与后代所有生境的适应度函数平均代价之间的关系,设计了一种新的算法,改变了修改概率和变异概率。修改了基于DE算法的变异算子,并改进了基于迭代次数的迁移算子,以实现更好的收敛性能。对不同的ZDT和DTLZ基准函数进行了数值实验,结果表明,与其他MOEA相比,所提出的MABBO算法在收敛性和分布特性上具有更好的性能,可以有效地解决更复杂的多目标优化问题。

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