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基于遗传算法的空空导弹消耗规律神经网络预测方法
引用本文:梁勇,赵贺伟,王志强,王锐.基于遗传算法的空空导弹消耗规律神经网络预测方法[J].海军航空工程学院学报,2019,34(1):151-162.
作者姓名:梁勇  赵贺伟  王志强  王锐
作者单位:海军航空大学,山东烟台,264001;91404部队,河北秦皇岛,066000;陆军研究院工程设计研究所,北京,100042
摘    要:针对弹药预测问题,介绍了基于遗传算法的BP神经网络的相关原理及理论,研究了基于遗传算法的空空导弹消耗量BP神经网络预测方法,弥补了传统的BP神经网络法在弹药预测方面存在许多缺点,采用遗传算法求得影响弹药消耗各因素的权值及阈值,具有较高的准确性;同时,优化过程是对神经网络算法的权值及阈值进行优化,由适应度函数计算出染色体的适应度值,再经过选择、交叉及复制等操作,得到适应度最高的个体。对历次空战空空导弹消耗量数据进行归一化处理,将处理结果带入传统BP测,得到预测结果并对比分析,预测结果显示了遗传算法优化的有效性,避免了传统BP算法局部性强的缺点,预测结果较优化前较大提升,验证了改进算法的有效性和先进性。

关 键 词:弹药消耗  预测方法  遗传算法  BP神经网络

Neural Network Prediction Method for the Law of Air to Air Missile Consumption Based on Genetic Algorithm
LIANG Yong,ZHAO Hewei,WANG Zhiqiang and WANG Rui.Neural Network Prediction Method for the Law of Air to Air Missile Consumption Based on Genetic Algorithm[J].Journal of Naval Aeronautical Engineering Institute,2019,34(1):151-162.
Authors:LIANG Yong  ZHAO Hewei  WANG Zhiqiang and WANG Rui
Institution:Naval Aviation University, Yantai Shandong 264001, China,Naval Aviation University, Yantai Shandong 264001, China,The 91404th Unit of PLA, Qinhuangdao Hebei 066000, China and Institute of Engineering Design, Army Academy, Beijing 100042, China
Abstract:The problem of ammunition prediction was discussed in this paper. The principle and theory of GA-BP was in.troduced and the BP neural network prediction method of air to air missile consumption based on genetic algorithm wasstudied for remedying the shortcomings of traditional BP neural network method in the prediction of ammunition. Theweights and thresholds of all factors affecting ammunition consumption were obtained by genetic algorithm with high accu.racy. At the same time, the optimization process was that optimizing the weights and thresholds of the neural network algo.rithm, and the fitness values of chromosomes were calculated from fitness function. After selection, crossover and duplica.tion, the highest fitness individuals were obtained. Finally, normalization of air to air missile consumption data of previousair combat was carried out, the resultsed were brought into the traditional BP model and the BP algorithm optimized by ge.netic algorithm to make predictions and comparative analysis. The prediction results show the effectiveness of genetic algo.rithm optimization that avoids the disadvantages of the traditional BP algorithm with strong locality, and the effectivenessand advance of the improved algorithm are verified.
Keywords:ammunition consumption  prediction methed  genetic algorithm  BP neural network
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