Browse > Article
http://dx.doi.org/10.22156/CS4SMB.2019.9.1.019

A Study on Energy Saving Monitoring System of Data Center based on Context Awareness  

Lee, Hwa-Jeong (Department of Computer Science & Engineering, GNTECH)
Jung, Min-Yong (Department of Computer Science & Engineering, GNTECH)
Kim, Chang-Geun (Department of Computer Science & Engineering, GNTECH)
Kim, Hyun-Ju (Department of Computer Science & Engineering, GNTECH)
Publication Information
Journal of Convergence for Information Technology / v.9, no.1, 2019 , pp. 19-27 More about this Journal
Abstract
In recent years, with the advancement of IT technology, we expect data size of the world to increase 10 times in 2025. The rapid development of this Internet technology leads to the downsizing of the server system of the data center which manages and operates the data, the capacity of the storage medium, and the power consumption of the data center. In this paper, we propose an energy conservation policy and analyze it in real time by analyzing the power consumption pattern of the server system of the data center. The proposed system can monitor and analyze the power consumption pattern of the individual server system in the data center, and it can be expected that about 10% of the total power consumption of the data center will be saved by efficiently managing the actual operation time of the server system.
Keywords
Energy Saving; Context Awareness; Data Center; Monitoring System; Power Consumption;
Citations & Related Records
Times Cited By KSCI : 3  (Citation Analysis)
연도 인용수 순위
1 J. Y. Oh, D. Y. Y. Yun E. S. Jung, Y. T. Lee & K. G. Chung. (2015). Virtualization based server-client model for reducing power consumption. Korea Information Science Society, 1170-1172.
2 Y. Zhan. (2012). Virtualization and cloud computing, Lecture Notes in Electrical Engineerin,. 143.
3 B. J. Jun, D. B. Yun & S. S. Shin. (2017). Improved integrated monitoring system design and construction, Convergence Society for SMB, 7(1), 25-33.   DOI
4 H. K. Kim. (2010). Present and future of context aware computing. Veta research & Consulting VETA Report.
5 H. J. Lee. J. S. Han, Y. K. Jung, I. U. Lee & S. H. Lee. (2012). A technology of context-aware based building management for energy efficiency, Convergence Society for SMB, 2(1), 69-75.
6 B. C. Jung & W. S. Na. (2016). A study on the smart fire detection system using the wireless communication, Convergence Society for SMB, 6(3), 37-41.
7 H. J. Lee, M. Y. Jung, G. S. Lee & H. Y. Kim. (2018). A study on energy conservation system of university of computing center based on machine learning. Proceedings conference on knowledge information technology and system, 12(1).
8 H. J. Lee, M. Y. Jung, G. S. Lee & H. Y. Kim. (2017). A study of efficient power management for intelligent data center system, Proceedings conference on knowledge information technology and system, 11(2).
9 M. Y. Jung, H. J. Lee, G. S. Lee & H. Y. Kim. (2017). A study on energy conservation system of integrated computing center based on context awareness, Proceedings conference on knowledge information technology and system, 11(1).
10 H. J. Lee, M. Y. Jung, C. G. Kim & H. Y. Kim. (2018). A study on monitoring tool of web server system for effective power management policy of data center, Proceedings conference on knowledge information.
11 Weichao Ma & S. H. Lee. (2014). Modelling and development of control algorithm of endoscopy, Convergence Society for SMB, 4(2), 33-39.
12 W. S. Na. (2017). A study on the development of educational software for web-based visual effects interactive environments, Convergence Society for SMB, 7(5), 89-93.   DOI
13 https://www.lenovo.com/kr/ko/data-center/systems-management/xclarity-energy-manager/
14 https://www.rohde-schwarz.com/kr/products/test-and-measurement/overview/test-measurement-overview_229579.html
15 https://search.cisco.com/search?query=Catalyst%204500-X%20Series%20Switches:%20Product%20Overview:%20Cisco%20Energy%20Wise&locale=enUS&bizcontext=&cat=QUESTIONS&mode=text&clktyp=click&autosuggest=true
16 Y. S. Sim, J. W. Jung & I. C. Choi. (2005). A computational comparison of cluster validity indices for K-measns algorithm, Proceedings conference on KIIE, 27.
17 Y. H. Lee & H. S. Kim. (2014). A study on computer center maintenance savings through NT server consolidate virtualization, J ournal of the Korea Society of Computer and Information, 19(2) , 11-19.   DOI
18 https://01.org/blogs/2014/running-average-powerlimit-%E2%80%93-rapl