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강화학습을 활용한 기만행위 모의방법 연구 : 해병대 상륙양동 사례를 중심으로
A Study on Reinforcement Learning Method for the Deception Behavior : Focusing on Marine Corps Amphibious Demonstrations 원문보기

韓國軍事科學技術學會誌 = Journal of the KIMST, v.25 no.4, 2022년, pp.390 - 400  

박대국 (국방대학교 국방과학학과) ,  조남석 (국방대학교 국방과학학과)

Abstract AI-Helper 아이콘AI-Helper

Military deception is an action executed to deliberately mislead enemy's decision by deceiving friendly forces intention. In the lessons learned from war history, deception appears to be a critical factor in the battlefield for successful operations. As training using war-game simulation is growing ...

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참고문헌 (31)

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