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Niching method using clustering crowding

机译:利用聚类拥挤的小生境方法

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This study analyzes drift phenomena of deterministic crowding and probabilistic crowding by using equivalence class model and expectation proportion equations. It is proved that the replacement errors of deterministic crowding cause the population converging to a single individual, thus resulting in premature stagnation or losing optional optima. And probabilistic crowding can maintain equilibrium multiple subpopulations as the population size is adequate large. An improved niching method using clustering crowding is proposed. By analyzing topology of fitness landscape using hill valley function and extending the search space for similarity analysis, clustering crowding determines the locality of search space more accurately, thus greatly decreasing replacement errors of crowding. The integration of deterministic and probabilistic replacement increases the capacity of both parallel local hill climbing and maintaining multiple subpopulations. The experimental results optimizing various multimodal functions show that, the performances of clustering crowding, such as the number of effective peaks maintained, average peak ratio and global optimum ratio are uniformly superior to those of the evolutionary algorithms using fitness sharing, simple deterministic crowding and probabilistic crowding.
机译:本研究通过使用等价类模型和期望比例方程来分析确定性拥挤和概率性拥挤的漂移现象。事实证明,确定性拥挤的替换错误会导致总体收敛到单个个体,从而导致过早的停滞或失去最优选择。并且,由于人口规模足够大,概率性拥挤可以维持多个子种群的均衡。提出了一种改进的利用聚类拥挤的小生境方法。通过使用山谷函数分析健身景观拓扑并扩展搜索空间以进行相似性分析,聚类拥挤可以更准确地确定搜索空间的位置,从而大大减少了拥挤的替换错误。确定性替换和概率替换的集成增加了并行本地爬坡和维护多个子种群的能力。优化各种多峰函数的实验结果表明,聚类拥挤的性能,如保持的有效峰数,平均峰比率和全局最优比率,均优于使用适应度共享,简单确定性拥挤和概率的进化算法。拥挤。

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