Computer Science ›› 2018, Vol. 45 ›› Issue (10): 306-312.doi: 10.11896/j.issn.1002-137X.2018.10.057

• Interdiscipline & Frontier • Previous Articles     Next Articles

Flexibility Measurement Model of Command and Control Information Chain for Networked Operations

NAN Ming-li1,2, LI Jian-hua1, CUI Qiong1, RAN Hao-dan1,3   

  1. Information and Navigation College,Air Force Engineering University,Xi’an 710077,China 1
    The Unit 95801 of PLA,Beijing 100843,China 2
    Information and Communication College,National University of Defense Technology,Xi’an 710106,China 3
  • Received:2017-09-19 Online:2018-11-05 Published:2018-11-05

Abstract: Flexibility is the key ability for command and control information chain to effectively response dynamic complexity and uncertainty,which plays an important role in ensuring command and control information flowing efficiently.Aiming at the flexibility measurement problem of command and control information chain for networked operations,in this paper,firstly,concepts of operational node,command and control information flow,command and control information chain for networked operations and flexibility were defined,abstract structure of information chain was built,and flexibility intension of command and control information and action process were analyzed.Secondly,nine flexibility factor measuring indexes were proposed from design,implement and control phases,and corresponding computing methods were given.Thirdly,index weight determination and aggregation method were given,and command and control information chain flexibility measurement model was built.According to the measurement results,flexibility degree can be judged.Finally,taking regional joint air defense operations as example,the feasibility and effectiveness of the model are validated.

Key words: Networked operations, Command and control information chain, Flexibility, Measurement, Model

CLC Number: 

  • E917
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