2022
DOI: 10.3389/fnbot.2022.996412
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Autonomous maneuver decision-making method based on reinforcement learning and Monte Carlo tree search

Abstract: Autonomous maneuver decision-making methods for air combat often rely on human knowledge, such as advantage functions, objective functions, or dense rewards in reinforcement learning, which limits the decision-making ability of unmanned combat aerial vehicle to the scope of human experience and result in slow progress in maneuver decision-making. Therefore, a maneuver decision-making method based on deep reinforcement learning and Monte Carlo tree search is proposed to investigate whether it is feasible for ma… Show more

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Cited by 7 publications
(1 citation statement)
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“…Regarding the formal description of the shooter recommendation problem above [17] . According to the target processing, shooter matching, and launch execution stages are divided into three phases.…”
Section: Behavior Tree Agent Model Of Shooter Recommendationmentioning
confidence: 99%
“…Regarding the formal description of the shooter recommendation problem above [17] . According to the target processing, shooter matching, and launch execution stages are divided into three phases.…”
Section: Behavior Tree Agent Model Of Shooter Recommendationmentioning
confidence: 99%