Browse > Article
http://dx.doi.org/10.3837/tiis.2016.03.024

Goal-driven Optimization Strategy for Energy and Performance-Aware Data Centers for Cloud-Based Wind Farm CMS  

Elijorde, Frank (Institute of Information and Communication Technology, West Visayas State University)
Kim, Sungho (Department of Control and Robotics Engineering, Kunsan National University)
Lee, Jaewan (Department of Information and Communication Engineering, Kunsan National University)
Publication Information
KSII Transactions on Internet and Information Systems (TIIS) / v.10, no.3, 2016 , pp. 1362-1376 More about this Journal
Abstract
A cloud computing system can be characterized by the provision of resources in the form of services to third parties on a leased, usage-based basis, as well as the private infrastructures maintained and utilized by individual organizations. To attain the desired reliability and energy efficiency in a cloud data center, trade-offs need to be carried out between system performance and power consumption. Resolving these conflicting goals is often the major challenge encountered in the design of optimization strategies for cloud data centers. The work presented in this paper is directed towards the development of an Energy-efficient and Performance-aware Cloud System equipped with strategies for dynamic switching of optimization approach. Moreover, a platform is also provided for the deployment of a Wind Farm CMS (Condition Monitoring System) which allows ubiquitous access. Due to the geographically-dispersed nature of wind farms, the CMS can take advantage of the cloud's highly scalable architecture in order to keep a reliable and efficient operation capable of handling multiple simultaneous users and huge amount of monitoring data. Using the proposed cloud architecture, a Wind Farm CMS is deployed in a virtual platform to monitor and evaluate the aging conditions of the turbine's major components in concurrent, yet isolated working environments.
Keywords
Cloud Data Centers; Cloud Computing; Green Computing; Wind Turbines; Condition Monitoring System;
Citations & Related Records
Times Cited By KSCI : 1  (Citation Analysis)
연도 인용수 순위
1 J. Baliga, R.W.A. Ayre, K. Hinton, R.S. Tucker, "Green cloud computing: balancing energy in processing, storage and transport," in Proc. of the IEEE 2011, Vol 99, No. 1, pp.149-67, 2011. Article (CrossRef Link)
2 J. Knezevic, “Reliability, maintainability and supportability engineering: a probabilistic approach,” McGraw Hill, 1993.
3 M. B. Chhetri, Q. B. Vo, and R. Kowalczyk, "Policy-Based Automation of SLA Establishment for Cloud Computing Services," in Proc. of The 12th IEEE/ACM Int. Symp. on Cluster, Cloud and Grid Computing, 2012. Article (CrossRef Link)
4 M. Macias and J. Guitart, "Client Classification Policies for SLA Enforcement in Shared Cloud Data-centers," in Proc. of The 12th IEEE/ACM Int. Symp. on Cluster, Cloud and Grid Computing, 2012. Article (CrossRef Link)
5 K. Lu, R. Yahyapour, P. Wieder, C. Kotsokalis, E. Yaqub, and A. I. Jehangiri, “Qos-Based Resource Allocation Framework for Multidomain Sla Management in Clouds,” International Journal of Cloud Computing, Vol. 1, No. 1, 2013.
6 G. Schomaker, S. Janacek, and D. Schlitt, “The energy demand of data centers,” ICT Innovations for Sustainability, Springer, pp. 113–124, 2015. Article (CrossRef Link)
7 P. Marshall, K. Keahey, and T. Freeman, "Improving utilization of infrastructure clouds," in Proc. of The 11th IEEE/ACM Int. Symp. on Cluster, Cloud and Grid Computing, 2011. Article (CrossRef Link)
8 J. Subirats and J. Guitart, “Assessing and forecasting energy efficiency on Cloud computing platforms,” Future Generation Computer Systems, 2015. Article (CrossRef Link)
9 F. Elijorde and J. Lee, “Performance Aware and Energy Oriented Resource Provisioning in Cloud Systems Based on Dynamic Thresholds and Host Reputation,” Journal of Korean Society for Internet Information, vol. 14, no. 5, pp. 39-48, 2013.
10 F. Elijorde and J.W. Lee, "Attaining Reliability and Energy Efficiency in Cloud Data Centers Through Workload Profiling and SLA-Aware VM Assignment," International Journal of Advances in Soft Computing & Its Applications, Vol. 7, No.1, pp. 41-58, 2015.
11 Z. Hameed, Y.S. Hong, Y.M. Choa, S.H. Ahn, and C.K. Song, “Condition monitoring and fault detection of wind turbines and related algorithms: a review,” Renewable and Sustainable Energy Reviews, pp. 1-39, 2009. Article (CrossRef Link)   DOI
12 N. Tandon, B.C. Nakra, “Defect detection in rolling element bearings by acoustic emission method,” Journal of Acoustic Emission, Vol 9, No. 1, pp. 25-28, 1990.
13 S. Leske and D. Kitaljevich, “Managing gearbox failure,” Dewek. Dewi Magazine, No. 29, 2006.
14 E. Morfiadakis, K. Papadopoulos, and T.P. Philippidis, “Assessment of the strain gauge technique for measurement of wind turbine blade loads,” Wind Energy, Vol. 3 No. 1, pp. 35-65, 2000. Article (CrossRef Link)   DOI
15 M.A. Rumsey and W. Musial, "Application of infrared thermography nondestructive testing during wind turbine blade Tests," Journal of Solar Energy Engineering, 2001. Article (CrossRef Link)
16 L. Minas and B. Ellison, Energy Efficiency for Information Technology, “How to Reduce Power Consumption in Servers and Data Centers,” Intel Press, 2009.
17 J. MacQueen, "Some methods for classification and analysis of multivariate observations," in Proc of the 5th Berkeley symposium on mathematical statistics and probability, 1967.
18 A. Beloglazov and R. Buyya, “Optimal Online Deterministic Algorithms and Adaptive Heuristics for Energy and Performance Efficient Dynamic Consolidation of Virtual Machines in Cloud Data Centers,” Concurrency and Computation: Practice and Experience, vol.24, pp.1397-1420, 2012. Article (CrossRef Link)   DOI
19 D. Kusic, JO. Kephart, JE. Hanson, N. Kandasamy, G. Jiang, "Power and performance management of virtualized computing environments via lookahead control," in Proc. of the International Conference on Autonomic Computing, pp.3-12, 2008. Article (CrossRef Link)
20 F. Elijorde, S.H. Kim, and J.W. Lee, “A Wind Turbine Fault Detection Approach Based on Cluster Analysis and Frequent Pattern Mining,” KSII Transactions on Internet and Information Systems, Vol. 8, No. 2, pp. 664-677, 2014. Article (CrossRef Link)   DOI
21 J. Han , J. Pei , and Y. Yin, "Mining frequent patterns without candidate generation," in Proc of ACM SIGMOD international conference on management of data, 2000. Article (CrossRef Link)