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Genetic algorithm-based tabu search for optimal energy-aware allocation of data center resources

机译:基于遗传算法的禁忌搜索数据中心资源的最佳能量感知分配

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Cloud computing delivers practical solutions for long-term image archiving systems. Cloud data centers consume enormous amounts of electrical energy that increases their operational costs. This shows the importance of investing on energy consumption techniques. Dynamic placement of virtual machines to appropriate physical nodes using metaheuristic algorithms is among the methods of reducing energy consumption. In metaheuristic algorithms, there should be a balance between both exploration and exploitation aspects so that they can find better solutions in a search space. Exploration means looking for a solution in a wider area, while exploitation is producing new solutions from existence ones. Artificial bee colony optimization, which is a biological metaheuristic algorithm, is a sign-oriented approach. It has a strong exploration ability, but a relatively weaker exploitation power. On the other hand, tabu search is a popular algorithm that shows better exploitation in comparison with ABC. In this study, cloud computing environments are detailed with an allocation protocol for efficient energy and resource management. The technique of energy-aware allocation splits data centers (DCs) resources among client applications end routes to enhance energy efficacy of DCs and also achieves anticipated quality of service (QoS) for everyone. Heuristic protocols are exercised for optimizing the distribution of resources to upgrade the efficiency of DC. In the current paper, energy-aware resources allotment technique is employed and optimized in clouds via a new approach called Tabu Job Master (JM). Tabu JM claims the benefits of some variables and also rapid convergence speeds. Results are duly achieved for energy consumption-the count of virtual machines (VMs) migration and also makespan. The results shown by Tabu JM are benchmarked by using genetic algorithm (GA), artificial bee colony (ABC), ABC with crossover and technique of mutation, the basic tabu search techniques, and Tabu Job Master.
机译:云计算为长期图像归档系统提供了实用的解决方案。云数据中心消耗了增加其运营成本的巨大电能。这表明投资能耗技术的重要性。使用成群质算法将虚拟机的动态放置到适当的物理节点之一是降低能量消耗的方法之一。在Metaheuristic算法中,勘探和开发方面之间应该存在平衡,以便他们可以在搜索空间中找到更好的解决方案。探索意味着寻找更广泛区域的解决方案,而剥削是从存在的影响中产生新的解决方案。作为一种生物成群质算法的人造蜜蜂殖民地优化是一种面向符号的方法。它具有很强的勘探能力,但剥削权力相对较弱。另一方面,禁忌搜索是一种流行的算法,其显示与ABC相比的更好的利用。在本研究中,云计算环境详细说明了用于高效能量和资源管理的分配协议。能量感知分配技术在客户端应用结束路由中拆分数据中心(DCS)资源,以提高DCS的能量功效,并且对于每个人来说也实现了预期的服务质量(QoS)。启发式协议是为了优化资源分配而升级DC的效率。在本文中,通过称为禁忌作业主站(JM)的新方法在云中使用和优化能量感知资源分配技术。禁忌JM声称一些变量的好处,也是快速收敛速度。结果适当地实现了能耗 - 虚拟机(VMS)迁移的计数和Mepespan。禁忌JM所示结果是通过使用遗传算法(GA),人工蜂殖民地(ABC),ABC具有交叉和突变技术,基本的禁忌搜索技术和禁忌作业主站来基准。

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