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Application of Deep Reinforcement Learning in Maneuver Planning of Beyond-Visual-Range Air Combat

Dongyuan Hu, Rennong Yang, Jialiang Zuo, Ze Zhang, Jun Wu, Ying Wang

2021IEEE Access84 citationsDOIOpen Access PDF

Abstract

Beyond-visual-range (BVR) engagement becomes more and more popular in the modern air battlefield. The key and difficulty for pilots in the fight is maneuver planning, which reflects the tactical decision-making capacity of the both sides and determinates success or failure. In this paper, we propose an intelligent maneuver planning method for BVR combat with using an improved deep Q network (DQN). First, a basic combat environment builds, which mainly includes flight motion model, relative motion model and missile attack model. Then, we create a maneuver decision framework for agent interaction with the environment. Basic perceptive variables are constructed for agents to form continuous state space. Also, considering the threat of each side missile and the constraint of airfield, the reward function is designed for agents to training. Later, we introduce a training algorithm and propose perceptional situation layers and value fitting layers to replace policy network in DQN. Based on long short-term memory (LSTM) cell, the perceptional situation layer can convert basic state to high-dimensional perception situation. The fitting layer does well in mapping action. Finally, three combat scenarios are designed for agent training and testing. Simulation result shows the agent can avoid the threat of enemy and gather own advantages to threat the target. It also proves the models and methods of agents are valid and intelligent air combat can be realized.

Topics & Concepts

Reinforcement learningComputer scienceAir combatAdversaryMissileRange (aeronautics)Function (biology)Collision avoidanceArtificial intelligenceKey (lock)BattlefieldSimulationComputer securityEngineeringCollisionAerospace engineeringBiologyHistoryEvolutionary biologyAncient historyGuidance and Control SystemsMilitary Defense Systems AnalysisArtificial Intelligence in Games
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