1. Anti-UAV High-Performance Computing Early Warning Neural Network Based on PSO Algorithm.
- Author
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Lei, Yang, Yao, Honglei, Jiang, Bo, Tian, Tian, and Xing, Peifei
- Subjects
- *
GLOBAL optimization , *ALGORITHMS , *MATHEMATICAL optimization , *WARNINGS , *PROBLEM solving - Abstract
In order to effectively solve the problem that the radar detection system is difficult to detect the "low, small, slow" UAV, the high-performance computing early warning neural network is used to recognize the air UAV in real time and extract the target category and image space location information; the PSO algorithm is used to optimize the parameters of the anti-UAV to ensure that the anti-UAV not only relies on factors but also fully combines the dependence of the visual field factor to quickly obtain the optimal solution through analyzing the high-performance computing early warning neural network in this paper. This algorithm is used to initialize the anti-UAV resources and improve the global optimization capability of the algorithm proposed in this paper. Finally, the experimental results show that the proposed PSO algorithm has better high-performance computing early warning performance to meet the actual needs of network high-performance computing early-warning neural networks. [ABSTRACT FROM AUTHOR]
- Published
- 2022
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