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Hierarchical Reinforcement Learning for Air-to-Air Combat

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 نشر من قبل Jaime Ide
 تاريخ النشر 2021
  مجال البحث الهندسة المعلوماتية
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Artificial Intelligence (AI) is becoming a critical component in the defense industry, as recently demonstrated by DARPA`s AlphaDogfight Trials (ADT). ADT sought to vet the feasibility of AI algorithms capable of piloting an F-16 in simulated air-to-air combat. As a participant in ADT, Lockheed Martin`s (LM) approach combines a hierarchical architecture with maximum-entropy reinforcement learning (RL), integrates expert knowledge through reward shaping, and supports modularity of policies. This approach achieved a $2^{nd}$ place finish in the final ADT event (among eight total competitors) and defeated a graduate of the US Air Forces (USAF) F-16 Weapons Instructor Course in match play.

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