使用混合 ACO-GWO 在云数据中心进行高能效的通信感知虚拟机安置

Rashmi Keshri, Deo Prakash Vidyarthi
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摘要

虚拟机放置(VMP)是将虚拟机映射到物理机的过程,对于云数据中心的资源利用非常重要。因此,虚拟机放置是一个 NP 级问题,所以研究人员经常为此应用元启发式。在本研究中,我们应用了一种混合元启发式,它结合了蚁群优化(ACO)和灰狼优化(GWO),以最大限度地减少资源浪费、能源消耗和带宽使用。对所提工作的性能研究是在不同资源相关系数的虚拟机数量上进行的。根据观察结果,与多目标 GA、ACO、FFD 和基于随机的算法相比,功耗分别提高了 2.85%、7.61%、15.78% 和 19.41%,资源浪费分别提高了 26.44%、57.83%、77.90% 和 83.89%,带宽利用率分别提高了 2.94%、8.20%、9.99% 和 10.72%。为了研究拟议方法的收敛性,将其与最近的几种混合元启发式算法(即 ACO-PSO、GA-PSO、GA-ACO 和 GA-GWO)进行了比较,结果表明拟议的混合方法收敛更快。
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Energy-efficient communication-aware VM placement in cloud datacenter using hybrid ACO–GWO

Virtual machine placement (VMP) is the process of mapping virtual machines to physical machines, which is very important for resource utilization in cloud data centres. As such, VM placement is an NP-class problem, and therefore, researchers have frequently applied meta-heuristics for this. In this study, we applied a hybrid meta-heuristic that combines ant colony optimisation (ACO) and grey wolf optimisation (GWO) to minimise resource wastage, energy consumption, and bandwidth usage. The performance study of the proposed work is conducted on variable number of virtual machines with different resource correlation coefficients. According to the observations, there is 2.85%, 7.61%, 15.78% and 19.41% improvement in power consumption, 26.44%, 57.83%, 77.90% and 83.89% improvement in resource wastage and 2.94%, 8.20%, 9.99% and 10.72% improvement in bandwidth utilisation as compared to multi-objective GA, ACO, FFD and random based algorithm respectively. To study the convergence of the proposed method, it is compared with few recent hybrid meta-heuristic algorithms, namely ACO–PSO, GA–PSO, GA–ACO and GA–GWO which exhibits that the proposed hybrid method converges faster.

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