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A Reliable Parallel Interval Global Optimization Algorithm Based On Mind Evolutionary Computation

机译:基于思想进化计算的可靠并行间隔全局优化算法

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In this paper, we investigate the parallel reliable computational model and propose a parallel interval evolutionary algorithm that integrates interval arithmetic and Mind Evolutionary Computation method. The major aim is to explorer the new parallel interval decomposition scheme can solve computation intensive problem and can determine the all optimal solution reliably. The proposed algorithm is experimentally testified on the ZiQiang 3000 cluster of Shanghai High Education Grid-e-Grid Computational Application Platform with a test suit containing 6 complex multi-modal function optimization benchmarks.
机译:本文研究了并行可靠的计算模型,并提出了一种平行间隔进化算法,其集成了间隔算术和思维进化计算方法。主要目的是探索新的并行间隔分解方案可以解决计算密集型问题,可以可靠地确定所有最佳解决方案。该算法在上海高等教育网格电网计算应用平台上的Ziqiang 3000集群上进行了实验证实,具有包含6个复杂的多模态功能优化基准测试的测试套装。

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