Abstract

In recent years, due to the growing demand for computational resources, particularly in cloud computing systems, the data centers’ energy consumption is continually increasing, which directly causes price rise and reductions of resources’ productivity. Although many energy-aware approaches attempt to minimize the consumption of energy, they cannot minimize the violation of service-level agreements at the same time. In this paper, we propose a method using a granular neural network, which is used to model data processing. This method identifies the physical hosts’ workloads before the overflow and can improve energy consumption while also reducing violation of service-level agreements. Unlike the other techniques that use a single criterion, namely, worked on the basis of the history of using the processor, we simultaneously use all the productivity rates criteria, that is, processor productivity rates, main memory, and bandwidth. Extensive real-world simulations using the CloudSim simulator show the high efficiency of the proposed algorithm.

Highlights

  • Cloud computing has become one of the most essential tools in recent years for delivering advanced service demand through the public Internet

  • According to the results presented in this paper, it can be concluded that the Gradient-descent-based regression (Gdr) algorithm improves energy consumption better than the Maximize Correlation Percentage (MCP) algorithm

  • Evaluation Criteria. e methods discussed are from four aspects of energy consumption, namely, Service-Level Agreement (SLA), Energy SLA Violation (ESV), and makespan

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Summary

Introduction

Cloud computing has become one of the most essential tools in recent years for delivering advanced service demand through the public Internet. The cloud computing platform requires the installation of infrastructure, software, and platform to remove a specific application. Since cloud computing as a successful business area is developing, using this area is desirable for the enterprises and organizations too; the volume of presented services is very high so the volume of related data is increasing too. Inattention to the high speed of advance and the high volume of demand for using of resources, because of high maintenance costs and limited resources of cloud computing, the resources management, and control approach has become an essential and important challenge in this area

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