EIRP Based Energy Modelling For GreenCloud Services

Cloud Computing and the virtualization techniques have helped in developing better SaaS (Software as a Service) platforms. Simulated Software architecture has helped to schedule the VMs (Virtual Machines) in a Cloud provider. The obligation of providing high quality of service to customers leads to the necessity in dealing with the energy and performance trade-off, as aggressive consolidation may lead to performance degradation. This in-turn produces an excess carbon footprint due to the IT sector. The proposed EIRP (Energy/Instruction Rate Performance) based Energy efficient modelling and the subsequent algorithms proved 27% more efficient than the legacy systems. We employed real time Planet Lab workload for our simulations. The proposed algorithms significantly reduced energy consumption, while ensuring a high level of adherence to the SLA (Service Level Agreements).

[1]  Albert Y. Zomaya,et al.  A Taxonomy and Survey of Energy-Efficient Data Centers and Cloud Computing Systems , 2010, Adv. Comput..

[2]  Massoud Pedram,et al.  Power-Aware On-Demand Routing Protocols for Mobile Ad Hoc Networks , 2004, Low-Power Processors and Systems on Chips.

[3]  Bo Hong,et al.  Towards Profitable Virtual Machine Placement in the Data Center , 2011, 2011 Fourth IEEE International Conference on Utility and Cloud Computing.

[4]  Gargi Dasgupta,et al.  Server Workload Analysis for Power Minimization using Consolidation , 2009, USENIX Annual Technical Conference.

[5]  Rajkumar Buyya,et al.  Power‐aware provisioning of virtual machines for real‐time Cloud services , 2011, Concurr. Comput. Pract. Exp..

[6]  Ching-Hsien Hsu,et al.  Energy-Aware Task Consolidation Technique for Cloud Computing , 2011, 2011 IEEE Third International Conference on Cloud Computing Technology and Science.

[7]  Yi Liang,et al.  On P2P mechanisms for VM image distribution in cloud data centers: Modeling, analysis and improvement , 2012, 4th IEEE International Conference on Cloud Computing Technology and Science Proceedings.

[8]  W. Cleveland Robust Locally Weighted Regression and Smoothing Scatterplots , 1979 .

[9]  W. Cleveland,et al.  Smoothing by Local Regression: Principles and Methods , 1996 .

[10]  Robert D. van der Mei,et al.  Dynamic Load Balancing and Job Replication in a Global-Scale Grid Environment: A Comparison , 2009, IEEE Transactions on Parallel and Distributed Systems.

[11]  Jie Xu,et al.  Customer-aware resource overallocation to improve energy efficiency in realtime Cloud Computing data centers , 2011, 2011 IEEE International Conference on Service-Oriented Computing and Applications (SOCA).

[12]  Dong Seong Kim,et al.  Performability Analysis of IaaS Cloud , 2011, 2011 Fifth International Conference on Innovative Mobile and Internet Services in Ubiquitous Computing.

[13]  Rajkumar Buyya,et al.  Optimal online deterministic algorithms and adaptive heuristics for energy and performance efficient dynamic consolidation of virtual machines in Cloud data centers , 2012, Concurr. Comput. Pract. Exp..

[14]  Filip De Turck,et al.  Efficient resource management for virtual desktop cloud computing , 2012, The Journal of Supercomputing.

[15]  Marcharla Anjaneyulu Bhagyaveni,et al.  Trust Based VM Consolidation in Cloud Data Centers , 2014, SNDS.

[16]  Mohsen Sharifi,et al.  Power-efficient distributed scheduling of virtual machines using workload-aware consolidation techniques , 2012, The Journal of Supercomputing.

[17]  Christine Morin,et al.  Energy Management in IaaS Clouds: A Holistic Approach , 2012, 2012 IEEE Fifth International Conference on Cloud Computing.

[18]  Ideguchi Tetsuo,et al.  Queuing Theoretic Approach to Server Allocation Problem in Time-delay Cloud Computing Systems , 2011 .

[19]  M. A. Bhagyaveni,et al.  Co-operative Scheduled Energy Aware Load-Balancing technique for an Efficient Computational Cloud , 2011 .

[20]  Yu Hua Zhang,et al.  Discussion of Intelligent Cloud Computing System , 2010, 2010 International Conference on Web Information Systems and Mining.