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In order to solve the problems of low decision-making efficiency,simple decision rules,and low intelligence during the game between red-party and blue-party on the battlefield,an intelligent selfgame platform is constructed,by using the combination of artificial intelligence and traditional simulation platform. In the intelligent self-game platform,the red-party agent and the blue-party agent with decisionmaking ability can be trained and made intelligent in the platform. Through the 1 V1 air combat simulation experiment,it is proved that the red and blue agents in the experiment which have the decision-making ability,can generate a good level of engagement decision,and can complete the process of intelligent selfgame. The results of experimental and research have guiding significance for advancing the future military simulation intelligence.
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Basic Information:
DOI:10.16358/j.issn.1009-1300.2019.8.176
China Classification Code:TP18;O225
Citation Information:
[1]Lu Ruixuan,Sun Ying,Yang Qi ,et al.Research on Intelligent Self-game Platform Based on Artificial Intelligence Technology[J].Tactical Missile Technology,2019,No.194(02):47-52+98.DOI:10.16358/j.issn.1009-1300.2019.8.176.