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Publication Type : Journal Article
Publisher : International Journal of Electrical and Computer Engineering
Source : International Journal of Electrical and Computer Engineering, Volume 10, Issue 2, p.1524-1532 (2020)
Campus : Coimbatore
School : School of Engineering
Department : Computer Science
Verified : Yes
Year : 2020
Abstract : The flourishing development of the cloud computing paradigm provides several services in the industrial business world. Power consumption by cloud data centers is one of the crucial issues for service providers in the domain of cloud computing. Pursuant to the rapid technology enhancements in cloud environments and data centers augmentations, power utilization in data centers is expected to grow unabated. A diverse set of numerous connected devices, engaged with the ubiquitous cloud, results in unprecedented power utilization by the data centers, accompanied by increased carbon footprints. Nearly a million physical machines (PM) are running all over the data centers, along with (5 – 6) million virtual machines (VM). In the next five years, the power needs of this domain are expected to spiral up to 5% of global power production. The virtual machine power consumption reduction impacts the diminishing of the PM’s power, however further changing in power consumption of data center year by year, to aid the cloud vendors using prediction methods. The sudden fluctuation in power utilization will cause power outage in the cloud data centers. This paper aims to forecast the VM power consumption with the help of regressive predictive analysis, one of the Machine Learning (ML) techniques. The potency of this approach to make better predictions of future value, using Multi-layer Perceptron (MLP) regressor which provides 91% of accuracy during the prediction process.
Cite this Research Publication : D. T. and Dr. Prakash P, “Power Consumption Prediction in Cloud Data Center using Machine Learning”, International Journal of Electrical and Computer Engineering, vol. 10, no. 2, pp. 1524-1532, 2020.