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KASIA approach vs. Differential Evolution in Fuzzy Rule-Based meta-schedulers for Grid computing

机译:网格计算中基于模糊规则的元调度程序中的KASIA方法与差分进化

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Many efforts have been made in the last few years to solve the high-level scheduling problem in Grid computing, i.e., the efficient resources utilization and allocation of workload within resources domains. Nowadays, some trends are based on the consideration of Fuzzy Rule-Based Systems, whose performance is critically conditioned to theirs knowledge bases quality. In this sense, Genetic Algorithms have been extensively used to obtain such knowledge bases, mainly founded on Pittsburgh approach. However, new strategies are recently emerging showing improvement over genetic-based learning methods. In this work, comparative results of two non-genetic learning strategies derived from bio-inspired algorithms, Differential Evolution and Particle Swarm Optimization, are presented for the evolution of fuzzy rule-based meta-schedulers in Grid computing.
机译:在过去的几年中,已经做出了许多努力来解决网格计算中的高级调度问题,即,有效的资源利用和资源域内工作负载的分配。如今,一些趋势是基于对基于模糊规则的系统的考虑,而基于模糊规则的系统的性能对其知识库质量至关重要。从这个意义上讲,遗传算法已被广泛用于获取此类知识库,主要基于匹兹堡方法。但是,最近出现了新的策略,显示出比基于基因的学习方法有所改进。在这项工作中,针对网格计算中基于模糊规则的元调度程序的演化,提出了两种基于生物启发算法的非遗传学习策略的差异结果,它们分别是差分进化算法和粒子群优化算法。

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