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Asynchronous Strategy of Parallel Hybrid Approach of GA and EDA for Function Optimization

机译:GA和EDA并行混合方法的异步优化功能

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This paper adapts parallel master-slave estimation of distribution and genetic algorithms (GAs and EDAs) hybridization. The master selects portions of the search space, and slaves perform, in parallel and independently, a GA that solves the problem on the assigned portion of the search space. The master's work is to progressively narrow the areas explored by the slave's GAs, using parallel dynamic $K$-means clustering to determine the basins of attraction of the search space. Coordination of activities between master and slaves is done in an asynchronous way (i.e. no waiting is entertained among the processes). The proposed asynchronous model has managed to reduce computation time while maintaining the quality of solutions.
机译:本文采用分布和遗传算法(GA和EDA)混合的并行主从估计。主服务器选择搜索空间的一部分,而从服务器并行且独立地执行可解决搜索空间分配部分问题的GA。主机的工作是使用并行动态$ K $-均值聚类来确定搜索空间的吸引域,从而逐渐缩小从机的GA探索的区域。主站和从站之间的活动协调是通过异步方式完成的(即在各个进程之间无需等待)。所提出的异步模型设法减少了计算时间,同时又保持了解决方案的质量。

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