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Load balancing for grid computing environments using auto controlled Ant colony optimization technique

机译:使用自动控制蚁群优化技术的网格计算环境负载均衡

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摘要

An auto controlled Ant colony optimization algorithm it controls the behavior of the ant colony algorithm automatically based on a priori heuristic models. Lazy ants are basically mutated version of active ants that remains alive till the fitter lazy ants are generated in the successive generations. This work presents an improved auto controlled ACO algorithm using the lazy ant concept. Grid Scheduling is defined as the process of making scheduling decisions involving resources over multiple administrative domains. An Improved Enhanced Gridsim with Deadline Control (IEGDC) model is used to reduce load balancing. It enhances the utilization of the resources and prevents the resource overloading. It enhances the utilization of the resources and prevents the resource overloading. Our selection method considers the state of resource bandwidth and capacity of the resources. The incorporation of the said features of the proposed method makes it quite attractive in grid applications. During the experimental study of auto controlled ACO algorithm on grid scheduling problem, it was observed that the induction of lazy ants not only reduces the time complexity of the algorithm but also produces better the results on the given objectives. It is Simulated GridSim Platform.
机译:一种自动控制的蚁群优化算法,它基于先验启发式模型自动控制蚁群算法的行为。懒惰的蚂蚁基本上是活着的蚂蚁的变异体,直到活泼的懒惰的蚂蚁在连续的世代中产生之前,它们都保持活跃。这项工作提出了一种改进的使用惰性蚂蚁概念的自动控制ACO算法。网格计划被定义为制定涉及多个管理域中资源的计划决策的过程。带有截止时间控制(IEGDC)模型的改进的增强Gridsim用于减少负载平衡。这样可以提高资源利用率,并防止资源过载。这样可以提高资源利用率,并防止资源过载。我们的选择方法考虑了资源带宽的状态和资源的容量。所提出的方法的所述特征的结合使其在网格应用中相当有吸引力。在针对网格调度问题的自动控制ACO算法的实验研究过程中,观察到惰性蚂蚁的引入不仅降低了算法的时间复杂度,而且在给定的目标上产生了更好的结果。这是模拟的GridSim平台。

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