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首页> 外文期刊>Journal of ambient intelligence and humanized computing >Opposition-based learning inspired particle swarm optimization (OPSO) scheme for task scheduling problem in cloud computing
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Opposition-based learning inspired particle swarm optimization (OPSO) scheme for task scheduling problem in cloud computing

机译:基于反对的学习灵感云计算任务调度问题的粒子群优化(OPSO)方案

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The problem of scheduling of tasks in distributed, heterogeneous, and multiprocessing computing environment like grid and cloud computing is considered as one of the most important issue from research perspective. As the performance of such kind of systems is highly depends upon the way, how tasks are allocated among the multiple processing units for their efficient execution. The underlying objective of any task scheduling mechanism is to minimize the overall makespan for the execution of given set of jobs/tasks and computing machines. Scheduling of tasks in cloud computing falls in the class of NP-hard optimization problem. As a result, many meta-heuristic algorithms have been applied and tested to solve this problem but still lot of scope is there for the better strategies. The characteristic of the good algorithm is that it must be adaptable to the dynamic environment. Through this paper, we are proposing task scheduling mechanism based on particle swarm optimization (PSO) in which opposition-based learning technique is used to avoid premature convergence and to accelerate the convergence of standard PSO and compared same with the well-established task scheduling strategies based on PSO, mPSO (modified PSO), genetic algorithm GA, max-min, minimum completion time and minimum execution time. The results obtained for the various class of experiments clearly establish that the proposed opposition-based learning inspired particle swarm optimization based scheduling strategy performs better in comparison to its peers which are taken into the consideration.
机译:像网格和云计算等分布式,异常和多处理计算环境中任务的问题的问题被认为是研究视角的最重要问题之一。由于这种系统的性能高度取决于方式,因此如何在多个处理单元之间分配任务,以便其有效执行。任何任务调度机制的潜在目标是最小化用于执行给定的作业/任务和计算机器集的整体Mapspan。 NP-Hard优化问题类中云计算中任务的调度。因此,许多元启发式算法已经应用和测试以解决这个问题,但仍有很多范围是有更好的策略。良好算法的特征是它必须适应动态环境。通过本文,我们提出了基于粒子群优化(PSO)的任务调度机制,其中基于对立的学习技术用于避免过早收敛,并加速标准PSO的收敛并与良好的任务调度策略相相同基于PSO,MPSO(修改的PSO),遗传算法GA,MAX-MIN,最小完成时间和最小执行时间。为各种实验获得的结果明确确定了基于拟议的基于反对派的学习灵感的粒子群优化的调度策略与其对其同步的同比相比表现出了更好的表现。

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