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The Development of Rule-based AI Engagement Model for Air-to-Air Combat Simulation

공대공 전투 모의를 위한 규칙기반 AI 교전 모델 개발

  • Minseok, Lee (Aerospace Technology Research Institute, Agency for Defense Development) ;
  • Jihyun, Oh (Aerospace Technology Research Institute, Agency for Defense Development) ;
  • Cheonyoung, Kim (Aerospace Technology Research Institute, Agency for Defense Development) ;
  • Jungho, Bae (Defense AI Center, Agency for Defense Development) ;
  • Yongduk, Kim (Defense AI Center, Agency for Defense Development) ;
  • Cheolkyu, Jee (Aerospace Technology Research Institute, Agency for Defense Development)
  • 이민석 (국방과학연구소 항공기술연구원) ;
  • 오지현 (국방과학연구소 항공기술연구원) ;
  • 김천영 (국방과학연구소 항공기술연구원) ;
  • 배정호 (국방과학연구소 국방인공지능센터) ;
  • 김용덕 (국방과학연구소 국방인공지능센터) ;
  • 지철규 (국방과학연구소 항공기술연구원)
  • Received : 2022.09.29
  • Accepted : 2022.11.29
  • Published : 2022.12.05

Abstract

Since the concept of Manned-UnManned Teaming(MUM-T) and Unmanned Aircraft System(UAS) can efficiently respond to rapidly changing battle space, many studies are being conducted as key components of the mosaic warfare environment. In this paper, we propose a rule-based AI engagement model based on Basic Fighter Maneuver(BFM) capable of Within-Visual-Range(WVR) air-to-air combat and a simulation environment in which human pilots can participate. In order to develop a rule-based AI engagement model that can pilot a fighter with a 6-DOF dynamics model, tactical manuals and human pilot experience were configured as knowledge specifications and modeled as a behavior tree structure. Based on this, we improved the shortcomings of existing air combat models. The proposed model not only showed a 100 % winning rate in engagement with human pilots, but also visualized decision-making processes such as tactical situations and maneuvering behaviors in real time. We expect that the results of this research will serve as a basis for development of various AI-based engagement models and simulators for human pilot training and embedded software test platform for fighter.

Keywords

References

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