Litcius/Paper detail

An energy and carbon-aware algorithm for renewable energy usage maximization in distributed cloud data centers

Daming Zhao, Jiantao Zhou

2022Journal of Parallel and Distributed Computing43 citationsDOIOpen Access PDF

Abstract

The vigorous development and the increasing popularity of cloud computing highlight the necessity of reducing data center energy consumption and the environmental impact of carbon dioxide emissions. For geographically distributed data centers, cloud servers are connected to the conventional power grid and in addition they are supported by an attached renewable energy source. Since the carbon footprint rate of energy consumption has dynamic differences in space, reducing energy consumption does not mean decrease carbon emission, which indicates that energy consumption and carbon footprint need to be synergistically optimized. In this paper, an energy and carbon-aware algorithm for virtual machine placement is proposed. The goal is to obtain a virtual machine allocation scheme that aims to achieve the trade-off between energy consumption and carbon emissions by improving renewable energy utilization. The experimental results show that the proposed approach is more energy-efficient and greener, which can also maximize the renewable energy utilization with 73.11% while ensuring the SLA violation with 0.2% in comparison to the baseline algorithms.

Topics & Concepts

Computer scienceCarbon footprintEnergy consumptionRenewable energyData centerCloud computingGreen computingVirtual machineGreenhouse gasAlgorithmEnvironmental economicsDistributed computingComputer networkOperating systemElectrical engineeringEconomicsBiologyEcologyEngineeringCloud Computing and Resource ManagementIoT and Edge/Fog ComputingGreen IT and Sustainability