DOI QR코드

DOI QR Code

Policy Adjuster-driven Grid Workflow Management for Collaborative Heart Disease Identification System

  • Published : 2008.09.30

Abstract

This paper proposes a policy adjuster-driven Grid workflow management system for collaborative healthcare platform, which supports collaborative heart disease diagnosis applications. To select policies according to service level agreement of users and dynamic resource status, we devised a policy adjuster to handle workflow management polices and resource management policies using policy decision scheme. We implemented this new architecture with workflow management functions based on policy quorum based resource management system for providing poincare geometrycharacterized ECG analysis and virtual heart simulation service. To evaluate our proposed system, we executed a heart disease identification application in our system and compared the performance to that of the general workflow system and PQRM system under different types of SLA.

Keywords

References

  1. K Krauter, R Buyya, M Maheswaran, "Taxonomy of Resource Management in Grid", Software Practice and Experience, 2002
  2. K Yang, A Galis, C Todd, "Policy-based active Grid management architecture", ICON 2002. 10th IEEE International
  3. Dong Su Nam et al., "QoS-constraint Quorum Management scheme for a Grid-based Electrocardiogram", LNCS 3043 pp.352-359, 2004
  4. Eun Bo Shim et al., "Development of a 3D virtual heart including the mechanism of human cardiac cell physiology-electric conduction of cardiac tissue-heart mechanics", The Korean Society of Mechanical Engineers 60th anniversary fall conference 2005, The Korean Society of Mechanical Engineers, pp58-58, 2005
  5. Sang-Il Lee, YoungJoo Han, Hyewon Song, Changhee Han, Chan-Hyun Youn, "Grid Policy Administrator with MDP-Based Resource Management Scheme", Proc. The 2006 Int. Conf. on Grid Computing & Applications, pp. 25-31, June 2006
  6. T. Oinn, M. Addis, J. Ferris, D. Marvin, M. Senger, M. Greenwood, T. Carver and K. Glover, M.R. Pocock, A. Wipat, and P. Li, "Taverna: a tool for the composition and enactment of bioinformatics workflows". Bioinformatics, 20(17):3045-3054, Oxford University Press, London, UK, 2004 https://doi.org/10.1093/bioinformatics/bth361
  7. Ian J. Taylor et al., "Workflows for e-Science", chap. 13. Oxford: Clarendon, 1892, pp.190–191
  8. T. Tannenbaum, D. Wright, K. Miller, and M. Livny, "Condor-A Distributed Job Scheduler", Beowulf Cluster Computing with Linux, The MIT Press, MA, USA, 2002
  9. J Yu, R Buyya 1, "A Taxonomy of Scientific Workflow Systems for Grid Computing", Workflow in Grid Systems Workshop, GGF-10, Berlin, March 9, 2004
  10. Christos G. Cassandras, "Discrete Event Systems: Modeling and Performance Analysis", Aksen Associates Incorporated Publishers, 1993
  11. www.accessgrid.org
  12. http://www.anl.gov/Media_Center/logos21-2/grid.htm
  13. http://www.library.uams.edu/accessgrid/aghome.aspx
  14. http://cci.uchicago.edu/projects/abc/
  15. L.Altintas et al., "a framework for the design and reuse of grid workflows," Porc. Scientific Appications of Grid computing, LNCS 3458, Springer, 2005, pp. 119-132
  16. E. Neubauser et al., "Workflow-based grid applications," Future Generation Computer System, Jan. 2006, pp. 6-15
  17. B. Ludascher, I. Altintas, C. Berkley, D. Higgins, E. Jaeger, M. Jones, E. A. Lee, J. Tao, and Y. Zhao, "Scientific Workflow Management and the KEPLER System". Concurrency and Computation: Practice & Experience, Special Issue on Scientific Workflows, to appear, 2005

Cited by

  1. Adaptive Failure Identification for Healthcare Risk Analysis and Its Application on E-Healthcare vol.2014, 2014, https://doi.org/10.1155/2014/865241
  2. Effects of 12-week circuit weight training and aerobic exercise on body composition, physical fitness, and pulse wave velocity in obese collegiate women vol.16, pp.3, 2012, https://doi.org/10.1007/s00500-011-0724-1