Study on a novel crowding niche genetic algorithm

Zhang Hu, Zhang Yi, Lu Chao, Han Jun
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引用次数: 2

Abstract

This paper proposes a new crowding niche genetic algorithm to make up the shortages of bad stability, poor local search ability, and inferior universality in conventional crowding niche genetic algorithms. The new algorithm develops a new crowding strategy based on the most similar individuals to maintain the population diversity, designs an improved mutation probability adaptive adjustment method in accordance with the change law of sigmoid function curve to accelerate the convergence speed, and introduces the gradient operator into computation process to enhance the local search capability. Four typical complex functions are selected as test functions and two conventional algorithms are applied as contrast algorithms to assess the performance of algorithm. Test experiments and comparative analysis show that the proposed algorithm has an outstanding performance for maintaining population diversity; it is very effective and universal for solving complex problems. The new algorithm generally outperforms conventional crowding niche genetic algorithms.
一种新的拥挤生态位遗传算法研究
针对传统拥挤生态位遗传算法稳定性差、局部搜索能力差、通用性低等缺点,提出了一种新的拥挤生态位遗传算法。该算法提出了一种新的基于最相似个体的拥挤策略来保持种群多样性,设计了一种改进的根据s型函数曲线变化规律的突变概率自适应调整方法来加快收敛速度,并在计算过程中引入梯度算子来增强局部搜索能力。选取4个典型复函数作为测试函数,采用两种常规算法作为对比算法,对算法的性能进行评估。测试实验和对比分析表明,该算法在保持种群多样性方面具有优异的性能;它对于解决复杂问题是非常有效和通用的。新算法总体上优于传统的拥挤生态位遗传算法。
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