A Novel Cost Optimization Method for Mobile Cloud Computing by Capacity Planning of Green Data Center With Dynamic Pricing

H. Yeganeh, A. Salahi, M. Pourmina
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引用次数: 13

Abstract

Due to the large volume of data, high processing time, and power consumption, operators are looking for ways to reduce the energy consumption and subsequently optimize the energy consumption of data centers. Appropriate pricing of services and control of user demands along with considering renewable energy in the data center lead to a reduction in energy consumption of both users and data centers. The proposed methods for simultaneous reduction in the cost of energy consumption and an increase in the number of processed demands in data centers are not very practical. This paper proposed the capacity planning with dynamic pricing algorithm considering different factors in energy consumption reduction in green data centers of the fourth/fifth generation of mobile system networks delivering mobile cloud computing services. The proposed algorithm determines the optimal number of servers and addresses the tradeoff between the cost of operation and the delay of services. A penalty function for cost was derived and various scenarios were designed and different qualities of services were considered using the Lyapunov optimization to set up the simulation environment. The provided results illustrate the efficiency of the proposed scheme and validate the mathematical model.
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基于绿色数据中心容量规划的动态定价移动云计算成本优化方法
由于数据量大,处理时间长,功耗高,运营商正在寻找降低能耗的方法,从而优化数据中心的能耗。适当的服务定价和对用户需求的控制,以及考虑在数据中心使用可再生能源,可以减少用户和数据中心的能源消耗。提出的同时降低能源消耗成本和增加数据中心处理需求数量的方法不太实用。针对提供移动云计算服务的第四代/第五代移动系统网络绿色数据中心,提出了考虑不同能耗降低因素的动态定价算法容量规划。该算法确定了服务器的最优数量,并解决了运行成本和服务延迟之间的权衡问题。推导了成本惩罚函数,并利用Lyapunov优化方法设计了不同的场景,考虑了不同的服务质量,建立了仿真环境。仿真结果表明了该方案的有效性,并验证了数学模型的正确性。
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期刊介绍: The Canadian Journal of Electrical and Computer Engineering (ISSN-0840-8688), issued quarterly, has been publishing high-quality refereed scientific papers in all areas of electrical and computer engineering since 1976
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