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A Reinforcement Learning Method for Optimizing Air Combat Threat Assessment via Cross-attention Mechanisms and Expert-guided Reward Shaping
更新时间:2025-12-29
    • A Reinforcement Learning Method for Optimizing Air Combat Threat Assessment via Cross-attention Mechanisms and Expert-guided Reward Shaping

    • Acta Armamentarii   Vol. 46, Issue S1, Pages: 337-350(2025)
    • DOI:10.12382/bgxb.2025.0606    

      CLC:
    • Published:2025

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  • 孙康, 薛丁瑞, 范继, et al. A Reinforcement Learning Method for Optimizing Air Combat Threat Assessment via Cross-attention Mechanisms and Expert-guided Reward Shaping[J]. Acta Armamentarii, 2025, 46(S1): 337-350. DOI: 10.12382/bgxb.2025.0606.

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