Litcius/Paper detail

DECA: A Dynamic Energy Cost and Carbon Emission-Efficient Application Placement Method for Edge Clouds

Ehsan Ahvar, Shohreh Ahvar, Zoltán Ádám Mann, Noël Crespi, Roch Glitho, Joaquín García-Alfaro

2021IEEE Access37 citationsDOIOpen Access PDF

Abstract

As an increasing amount of data processing is done at the network edge, high energy costs and carbon emission of Edge Clouds (ECs) are becoming significant challenges. The placement of application components (e.g., in the form of containerized microservices) on ECs has an important effect on the energy consumption of ECs, impacting both energy costs and carbon emissions. Due to the geographic distribution of ECs, there is a variety of resources, energy prices and carbon emission rates to consider, which makes optimizing the placement of applications for cost and carbon efficiency even more challenging than in centralized clouds. This paper presents a Dynamic Energy cost and Carbon emission-efficient Application placement method (DECA) for ECs. DECA addresses both the initial placement of applications on ECs and the re-optimization of the placement using migrations. DECA considers geographically varying energy prices and carbon emission rates as well as optimizing the usage of both network and computing resources at the same time. By combining a prediction-based A* algorithm with a Fuzzy Sets technique, DECA makes intelligent decisions to optimize energy cost and carbon emissions. Simulation results show the ability of DECA in providing a tradeoff and optimizing energy cost and carbon emission at the same time.

Topics & Concepts

Deca-Computer scienceEnergy consumptionCarbon fibersEnhanced Data Rates for GSM EvolutionEfficient energy useGreenhouse gasEnergy (signal processing)Cloud computingAlgorithmElectrical engineeringTelecommunicationsEngineeringMathematicsOperating systemEcologyAstronomyBiologyStatisticsPhysicsComposite numberCloud Computing and Resource ManagementIoT and Edge/Fog ComputingSoftware-Defined Networks and 5G