Supervisor: Southwest Ordnance Industry Bureau
Organizer: Chongqing Ordnance Industry Society
Chongqing University of Technology

Application and prospect of machine learning in air to air missile attack zone calculation

DOI: 10.11809/bqzbgcxb2024.12.017
Keywords: air to air missile; attack zone; machine learning; deep learning; neural network; reinforcement learning; deep reinforcement learning
Abstract: Fast calculation of missile attack zone has always been a hot issue in engineering. With the development of machine learning, using neural network in deep learning to solve missile attack zone has become a hot topic. In order to deeply understand the application of machine learning in the calculation of missile attack zone, the calculation methods of attack zone at home and abroad are summarized. The research status of neural network solution algorithm based on deep learning is mainly introduced. The characteristics of various solution methods are compared and analyzed. On this basis, the application of machine learning in the calculation of attack zone in the future is prospected in combination with reinforcement learning.Using the method of comparison and theoretical analysis, considering the actual engineering level, an optimization strategy based on deep reinforcement learning is proposed, which provides theoretical guidance for the application of machine learning in the calculation of air to air missile attack zone.
Issue: Vol. 45 No. 12 (2024)
Published: 2024-12-30
PDF HTML