Computer Science ›› 2023, Vol. 50 ›› Issue (11A): 220800272-7.doi: 10.11896/jsjkx.220800272

• Computer Software & Architecture • Previous Articles     Next Articles

Design of Ship Mission Reliability Simulation System Based on Agent

WEN Haolin, DI Peng, CHEN Tong   

  1. Department of Management Engineering and Equipment Economics,Naval University of Engineering,Wuhan 430033,China
  • Published:2023-11-09
  • About author:WEN Haolin,born in 1995,postgraduate,assistant experimentalist.His main research interests include complex system modeling and simulation,and equipment integrated support.
    DI Peng,born in 1979,Ph.D,associate professor.His main research interests include equipment integrated support and equipment reliability.

Abstract: In view of the complex effect of support resources on mission reliability during ship missions,the autonomy,reactivity and sociality of agent technology are used to solve modeling and calculation problems of many complex influence relationships in mission reliability modeling,the ship task flow,equipment reliability structure,fault and maintenance support resources are simulated.We have established a multi-element,modular,flexible configuration and easy-to-use ship mission reliability simulation system,which can calculate the mission reliability,support resource configurable number and other indicators under diversified mission conditions.It provides technical support for the optimal allocation of ship support resources in the use phase and supportability design of the ship’s equipment in the development phase.

Key words: Mission reliability, Agent, Simulation system, Support resource, Maintenance

CLC Number: 

  • TP391.9
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