云计算环境下任务调度的非抢占混沌猫群优化方案

Danlami Gabi, Nasiru Muhammad Dankolo, A. Ismail, A. Zainal, Z. Zakaria
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引用次数: 3

摘要

随着访问云服务的客户数量呈指数级增长,在云数据中心调度任务在时间和成本方面对满足最终用户的服务质量(QoS)期望提出了最大的挑战。最近的研究利用元启发式任务调度技术来解决这个问题。然而,元启发式技术存在一定的局限性,如过早收敛,全局和局部不平衡,导致云虚拟机之间的任务分配不足。因此,导致了低效率的QoS期望。为了在满足终端用户QoS期望的同时解决这些问题,本文提出了一种非抢占式混沌猫群优化(NCCSO)方案作为理想的解决方案。在该方案中,引入混沌过程以减少局部最优处的陷入和克服过早收敛,并采用Pareto优势策略解决最优性问题。在CloudSim模拟器工具中实现了所开发的方案,仿真结果表明,与本文采用的基准方案相比,所开发的NCCSO方案的执行时间分别减少了42.87%、35.47%和25.49%,执行成本分别减少了38.62%、35.32%和25.56%。最后,我们还揭示了95%保密区间的统计显著性表明我们开发的NCCSO方案可以提供显着的性能,可以满足最终用户的QoS期望。
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Non-preemptive chaotic cat swarm optimization scheme for task scheduling on cloud computing environment
With exponential growth in the number of customers accessing the cloud services, scheduling tasks at cloud datacenter poses the greatest challenge in meeting end-user’s quality of service (QoS) expectations in terms of time and cost. Recent research makes use of metaheuristic task scheduling techniques in addressing this concern. However, metaheuristic techniques are attributed with certain limitation such as premature convergence, global and local imbalance which causes insufficient task allocation across cloud virtual machines. Thus, resulting in inefficient QoS expectation. To address these concerns while meeting end-users QoS expectation, this paper puts forward a non-preemptive chaotic cat swarm optimization (NCCSO) scheme as an ideal solution. In the developed scheme, chaotic process is introduced to reduce entrapment at local optima and overcome premature convergence and Pareto dominant strategy is used to address optimality problem. The developed scheme is implemented in the CloudSim simulator tool and simulation results show the developed NCCSO scheme compared to the benchmarked schemes adopted in this paper can achieve 42.87%, 35.47% and 25.49% reduction in term of execution time, and also 38.62%, 35.32%, 25.56% in term of execution cost. Finally, we also unveiled that a statistical significance on 95% confidential interval has shown that our developed NCCSO scheme can provide a remarkable performance that can meet end-user QoS expectations.
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