拒止环境下基于深度强化学习的多无人机协同定位

Translated title of the contribution: Cooperative location of multiple UAVs with deep reinforcement learning in GPS-denied environment

Kaifang Wan, Zhilin Wu, Yunhui Wu, Haozhi Qiang, Yibo Wu, Bo Li

Research output: Contribution to journalArticlepeer-review

Abstract

In strong adversarial scenarios, Unmanned Aerial Vehicles(UAVs)often experience GPS malfunction due to interference, making it difficult to obtain their accurate position. Since UAVs often operate in formations or clusters, this paper proposes a strategy that relies on UAVs within the formation to measure relative spatial positions and locate each other, allowing UAVs to update their position information in real time even after GPS signal loss. Firstly, in response to the GPS-denied environment, the theory of the Partially Observable Markov Decision Process(POMDP)is introduced and the elements of POMDP are analyzed to establish a POMDP decision model based on collaborative positioning and scheduling is established. A belief state update method based on the Extended Kalman Filter(EKF), as well as a Q-value estimation method based on Deep Q-Network(DQN)in deep reinforcement learning, is proposed to achieve accurate collaborative real-time positioning. Application tests in different scenarios show that the proposed model can achieve efficient management and scheduling of UAVs in formation, and can control GPS normal UAVs to effectively coordinate and locate GPS failed UAVs, which verifies the effectiveness of the model.

Translated title of the contributionCooperative location of multiple UAVs with deep reinforcement learning in GPS-denied environment
Original languageChinese (Traditional)
Article number331024
JournalHangkong Xuebao/Acta Aeronautica et Astronautica Sinica
Volume46
Issue number8
DOIs
StatePublished - 25 Apr 2025

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