植绒(纹理)
强化学习
群体行为
计算机科学
人工智能
材料科学
复合材料
作者
Zhilin Li,Lei Lei,Gaoqing Shen,Xiaochang Liu,Xiaojiao Liu
出处
期刊:Transactions on Emerging Telecommunications Technologies
日期:2024-11-01
卷期号:35 (11)
摘要
ABSTRACT Multi‐agent deep reinforcement learning (MADRL) has become a typical paradigm for the flocking motion of UAV swarm in dynamic, stochastic environments. However, sim‐to‐real problems, such as reality gap, training efficiency, and safety issues, restrict the application of MADRL in flocking motion scenarios. To address these problems, we first propose a digital twin (DT)‐enabled training framework. With the assistance of high‐fidelity digital twin simulation, effective policies can be efficiently trained. Based on the multi‐agent proximal policy optimization (MAPPO) algorithm, we then design the learning approach for flocking motion with matching observation space, action space, and reward function. Afterward, we employ a distributed flocking center estimation algorithm based on position consensus. The estimated center is used as a policy input to improve the aggregation behavior. Moreover, we introduce a repulsion scheme, which applies an additional repulsion force to the action to prevent UAVs from colliding with neighbors and obstacles. Simulation results show that our method performs well in maintaining flocking formation and avoiding collisions, and has better decision‐making ability in near‐realistic environments.
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