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Solving Multi-Objective Optimization Problems using Differential Evolution Algorithm with Different Population Initialization Techniques

机译:使用具有不同种群初始化技术的差分进化算法求解多目标优化问题

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The researchers of Evolutionary Computing (EC) community proposing new and different algorithmic strategies to tackle the increasing issues in handling optimization problems. As the number of objectives in an optimization problem increases the algorithmic complexity in solving the problem also increases. The way the initial population for an optimization problem generated is greatly affecting the performance of the Evolutionary Algorithms (EAs). This paper investigates the performance of Differential Evolution (DE) in solving Mutli-Objective optimization problems (MOOP) with two different population initialization (PI) techniques. The performance of different instances of DE is compared based on the solution accuracy obtained. The results obtained shows that DE shows different performance for different PI techniques.
机译:进化计算(EC)社区的研究人员提出了新的和不同算法策略,以解决处理优化问题的日益增长的问题。随着优化问题中的目标次数增加,解决问题的算法复杂性也增加了。所产生的优化问题的初始群体的方式极大地影响了进化算法的性能(EAS)。本文调查了差异演化(DE)在解决多种群体初始化(PI)技术的求解umli-目标优化问题(MOOP)中的性能。基于所获得的溶液精度比较不同的DE实例的性能。得到的结果表明,DE表明了不同PI技术的不同性能。

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