A Comparative Analysis of Energy-Efficient and Improved QoS-Driven Task and Resource Scheduling in Mobile Cloud Computing Environment

D. R, L. S
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Abstract

Mobile Cloud Computing (MCC) is a combination of cloud computing in to a mobile environment. It is refers to an infrastructure where data storage and data processing happen outside of the mobile device. MCC is an computing platform located in clouds, which is accessed over the wireless connection. MCC can significantly enhance the computation capability and saves energy of the smart mobile devices. Some built in defects of mobile devices, such as limited battery energy, insufficient storage; the mobile applications faces many challenges in mobility management, Quality of Service (QoS), energy management and security issues. A task is an application which is running in a mobile device and those tasks will be executed by Virtual Machines (VM) which is known as Resources. The pool of VM in a cloud computing data center needs to manage an efficient task and resource scheduling to maintain efficient energy, QoS and resource utilization. This work investigates comparative analysis of energy efficient and improved QoS-driven Task and Resource scheduling in a MCC environment by using Differential Evolution (DF). The evaluation of these algorithms is based on energy and QoS metrics. Based on the analysis of the simulation result, one of the scheduling will be concluded as best scheduling process in terms of energy and QoS.
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移动云计算环境下节能与改进qos驱动任务与资源调度的对比分析
移动云计算(MCC)是云计算与移动环境的结合。它指的是一种基础设施,其中数据存储和数据处理发生在移动设备之外。MCC是一个位于云端的计算平台,可以通过无线连接进行访问。MCC可以显著提高智能移动设备的计算能力,节约能源。一些移动设备的内置缺陷,如电池能量有限,存储不足;移动应用在移动性管理、服务质量(QoS)、能源管理和安全问题等方面面临着诸多挑战。任务是在移动设备上运行的应用程序,这些任务将由称为资源的虚拟机(VM)执行。云计算数据中心的虚拟机池需要进行高效的任务管理和资源调度,以保持高效的能源、QoS和资源利用率。本研究通过差分进化(DF)对MCC环境中能效和改进qos驱动的任务和资源调度进行了比较分析。这些算法的评估是基于能量和QoS指标。通过对仿真结果的分析,得出其中一种调度方法在能量和QoS方面是最优的调度方法。
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