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New Technology of Library and Information Service  2007, Vol. 2 Issue (6): 20-23    DOI: 10.11925/infotech.1003-3513.2007.06.05
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Design of Dynamic Alliance Resource Sharing Platform on Networks
Jin Huibin  Yuan Leping
(Research Institute of Civil Aviation Safety, Civil Aviation University of China,Tianjin 300300,China)
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Aiming at the characters of problems about dynamic alliance resource sharing on networks, an information sharing platform based on MAS is designed. After discussing the classifying and layering of Agent, a framework and flow of platform has been designed, with emphasis on cooperant control strategy of solving distributed problem and interactive function of blackboard. At last, realization technology of the system is gone deep into discussion.

Key wordsNetwork      Dynamic alliance      Resource sharing      MAS     
Received: 29 April 2007      Published: 25 June 2007


Corresponding Authors: Jin Huibin     E-mail:
About author:: Jin Huibin,Yuan Leping

Cite this article:

Jin Huibin,Yuan Leping. Design of Dynamic Alliance Resource Sharing Platform on Networks. New Technology of Library and Information Service, 2007, 2(6): 20-23.

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1靳慧斌.动态联盟运行过程中关键问题的研究[学位论文].天津:天津大学, 2006:12
2Spraque R H.A Framework for the Development of Decision Support System.MIS Quarterly,1980(4):10-26

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