强化学习
计算机科学
稳健性(进化)
人工智能
学习迁移
地铁列车时刻表
任务(项目管理)
转移问题
政策学习
钢筋
调度(生产过程)
传输(计算)
机器学习
模拟
自主代理人
空中交通管制
理论(学习稳定性)
作者
Yuzhou Huang,Yaosong Long,Zhongtao Cheng,Ao Shen,M H Liu
摘要
ABSTRACT Aerial multi‐agent reinforcement learning for within‐visual‐range air combat remains challenging due to exploration difficulty, delayed task feedback, high‐dimensional continuous control, non‐stationary opponents, and instability when adapting policies from single‐agent to multi‐agent training. This paper proposes a transfer reinforcement learning via self‐play (TRLSP) framework that integrates curriculum learning, transfer adaptation, and multi‐agent twin delayed deep deterministic policy gradient for autonomous air combat decision‐making. TRLSP is organized as a three‐stage training pipeline. Stage 1 acquires a single‐agent expert policy through curriculum‐guided learning against progressively stronger opponents. Stage 2 transfers the expert policy to the multi‐agent setting through a progressive network unfreezing schedule with an explicit layer‐release order and learning‐rate scaling. Stage 3 performs MATD3‐based self‐play with a fixed‐size historical strategy pool, where opponent snapshots are sampled uniformly at random and updated through a FIFO rule. The framework is evaluated under matched budgets using terminal/combat metrics, cross‐play comparisons, and out‐of‐distribution (OOD) robustness tests with confidence intervals. Experimental results show that TRLSP achieves stronger competitive performance than representative baselines and remains more robust across held‐out opponents and shifted initial conditions.
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