Multi-objective Optimization Algorithm Based on BBO for Virtual Machine Consolidation Problem

Q. Zheng, Jia Li, B. Dong, R. Li, N. Shah, Feng Tian
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引用次数: 30

Abstract

Cloud computing is a promising technology having ability to influence the way of the provision of computing and storage resources through virtual machine (VM). VM Consolidation is an efficient way to improve power efficiency and quality guarantee for on-demand services. However, it is an integer programming problem and as well as a NP-hard problem to find optimal solutions within polynomial time. In this paper, the VM consolidation problem is formulated as a multi-objective optimization problem, which has three conflicting objectives, i.e., reducing power consumption, achieving good load balancing and shortening VM migration time. We propose a multi-objective optimization algorithm based on biogeography-based optimization (BBO) for the VM consolidation problem, which is named as MBBO/DE: Multi-objective Biogeography-Based Optimization algorithm hybrid with Differential Evolution. It utilizes cosine migration model, differential strategies and Gaussian mutation model to improve the quality of habitats and the ability of finding optimal solutions. Experiments have been conducted to evaluate the effectiveness of MBBO/DE using synthetic and real-world instances. Experimental results show that MBBO/DE obtains a better performance while simultaneously reducing power consumption and achieving good load balancing within a satisfactory time as compared to genetic algorithm (GA), differential evolution (DE), ant colony optimization (ACO) and BBO.
基于BBO的虚拟机整合问题多目标优化算法
云计算是一种很有前途的技术,它能够影响通过虚拟机提供计算和存储资源的方式。虚拟机整合是提高按需业务能耗和质量保证的有效途径。然而,它是一个整数规划问题,也是一个在多项式时间内找到最优解的np困难问题。本文将虚拟机整合问题表述为一个多目标优化问题,该问题具有降低功耗、实现良好的负载均衡和缩短虚拟机迁移时间三个相互冲突的目标。针对虚拟机整合问题,提出了一种基于生物地理优化(BBO)的多目标优化算法,命名为MBBO/DE:混合差分进化的多目标生物地理优化算法。它利用余弦迁移模型、微分策略和高斯突变模型来提高栖息地的质量和寻找最优解的能力。利用合成实例和实际实例进行了实验,以评估MBBO/DE的有效性。实验结果表明,与遗传算法(GA)、差分进化算法(DE)、蚁群优化算法(ACO)和BBO算法相比,MBBO/DE算法在降低功耗的同时,在满意的时间内实现了良好的负载均衡。
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