RVLBPNN: A Workload Forecasting Model for Smart Cloud Computing
Given the increasing deployments of Cloud datacentres and the excessive usage of server resources, their associated energy and environmental implications are also increasing at an alarming rate. Cloud service providers are under immense pressure to significantly reduce both such implications for pro...
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Online Access: | http://dx.doi.org/10.1155/2016/5635673 |
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doaj-f53682f7b09247b0b08e88c1d6802cc72021-07-02T01:24:51ZengHindawi LimitedScientific Programming1058-92441875-919X2016-01-01201610.1155/2016/56356735635673RVLBPNN: A Workload Forecasting Model for Smart Cloud ComputingYao Lu0John Panneerselvam1Lu Liu2Yan Wu3School of Computer Science and Telecommunication Engineering Jiangsu University, Jiangsu, ChinaDepartment of Computing and Mathematics, University of Derby, Derby, UKSchool of Computer Science and Telecommunication Engineering Jiangsu University, Jiangsu, ChinaSchool of Computer Science and Telecommunication Engineering Jiangsu University, Jiangsu, ChinaGiven the increasing deployments of Cloud datacentres and the excessive usage of server resources, their associated energy and environmental implications are also increasing at an alarming rate. Cloud service providers are under immense pressure to significantly reduce both such implications for promoting green computing. Maintaining the desired level of Quality of Service (QoS) without violating the Service Level Agreement (SLA), whilst attempting to reduce the usage of the datacentre resources is an obvious challenge for the Cloud service providers. Scaling the level of active server resources in accordance with the predicted incoming workloads is one possible way of reducing the undesirable energy consumption of the active resources without affecting the performance quality. To this end, this paper analyzes the dynamic characteristics of the Cloud workloads and defines a hierarchy for the latency sensitivity levels of the Cloud workloads. Further, a novel workload prediction model for energy efficient Cloud Computing is proposed, named RVLBPNN (Rand Variable Learning Rate Backpropagation Neural Network) based on BPNN (Backpropagation Neural Network) algorithm. Experiments evaluating the prediction accuracy of the proposed prediction model demonstrate that RVLBPNN achieves an improved prediction accuracy compared to the HMM and Naïve Bayes Classifier models by a considerable margin.http://dx.doi.org/10.1155/2016/5635673 |
collection |
DOAJ |
language |
English |
format |
Article |
sources |
DOAJ |
author |
Yao Lu John Panneerselvam Lu Liu Yan Wu |
spellingShingle |
Yao Lu John Panneerselvam Lu Liu Yan Wu RVLBPNN: A Workload Forecasting Model for Smart Cloud Computing Scientific Programming |
author_facet |
Yao Lu John Panneerselvam Lu Liu Yan Wu |
author_sort |
Yao Lu |
title |
RVLBPNN: A Workload Forecasting Model for Smart Cloud Computing |
title_short |
RVLBPNN: A Workload Forecasting Model for Smart Cloud Computing |
title_full |
RVLBPNN: A Workload Forecasting Model for Smart Cloud Computing |
title_fullStr |
RVLBPNN: A Workload Forecasting Model for Smart Cloud Computing |
title_full_unstemmed |
RVLBPNN: A Workload Forecasting Model for Smart Cloud Computing |
title_sort |
rvlbpnn: a workload forecasting model for smart cloud computing |
publisher |
Hindawi Limited |
series |
Scientific Programming |
issn |
1058-9244 1875-919X |
publishDate |
2016-01-01 |
description |
Given the increasing deployments of Cloud datacentres and the excessive usage of server resources, their associated energy and environmental implications are also increasing at an alarming rate. Cloud service providers are under immense pressure to significantly reduce both such implications for promoting green computing. Maintaining the desired level of Quality of Service (QoS) without violating the Service Level Agreement (SLA), whilst attempting to reduce the usage of the datacentre resources is an obvious challenge for the Cloud service providers. Scaling the level of active server resources in accordance with the predicted incoming workloads is one possible way of reducing the undesirable energy consumption of the active resources without affecting the performance quality. To this end, this paper analyzes the dynamic characteristics of the Cloud workloads and defines a hierarchy for the latency sensitivity levels of the Cloud workloads. Further, a novel workload prediction model for energy efficient Cloud Computing is proposed, named RVLBPNN (Rand Variable Learning Rate Backpropagation Neural Network) based on BPNN (Backpropagation Neural Network) algorithm. Experiments evaluating the prediction accuracy of the proposed prediction model demonstrate that RVLBPNN achieves an improved prediction accuracy compared to the HMM and Naïve Bayes Classifier models by a considerable margin. |
url |
http://dx.doi.org/10.1155/2016/5635673 |
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