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作者简介: 柯天元(1996-),男,安徽望江人,本科,研究方向为作战辅助决策。 |
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杨露菁(1966-),女,教授,博士生导师。 |
收稿日期: 2017-10-13
修回日期: 2017-12-11
网络出版日期: 2022-05-19
Optimization of Weapon Equipment Application Scheme Based on Simulation Technology and RBF Neural Network
Received date: 2017-10-13
Revised date: 2017-12-11
Online published: 2022-05-19
柯天元 , 杨露菁 , 孙仲尧 . 基于仿真技术和RBF神经网络的武器装备运用方案优选[J]. 指挥控制与仿真, 2018 , 40(3) : 82 -85 . DOI: 10.3969/j.issn.1673-3819.2018.03.018
A simulation system which can simulate the use of weapon equipment with dynamic effect is constructed. The black box model, factor analysis model are plugged in this system. The weapon equipment schemes are evaluated with relative membership degree based on the information dominance, the loss rate of equipment, the damage effectiveness of weapon equipment. The simulation data is put in the RBF neural network to help the neural network learn and understand the simulation system. On this basis, the neural network can make quick prediction on the relative membership degree of the weapon equipment schemes. Good maneuverability and practicability are shown by the system, which is based on the battlefield simulation and RBF neural network. A good theoretical basis and realization means are provided for the weapons and equipment optimization and selection.
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