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基于自组织神经网络的空中交通复杂度参数优化及预测
引用本文:闫少华,吴奇.基于自组织神经网络的空中交通复杂度参数优化及预测[J].中国民航飞行学院学报,2014(1):42-45.
作者姓名:闫少华  吴奇
作者单位:中国民航大学空中交通管理学院,天津300300
摘    要:首先介绍了国内外关于空中交通复杂度的定义及研究现状。然后在现有的空中交通复杂度模型中挑选空中交通复杂度参数,再利用自组织神经网络,分析所选取的空中交通复杂度参数之间的关系,达到将高维空中交通复杂度参数进行降维分析的目的。然后对于优化了的空中交通复杂度参数使用RBF神经网络进行预测,比较预测结果,得到最优的空中交通复杂度参数。

关 键 词:空中交通复杂度参数  自组织神经网络  降维分析  RBF预测

Air Traffic Complexity Parameter Optimization and Prediction Based on Self-organizing Neural Network
Yan Shaohua Wu Qi.Air Traffic Complexity Parameter Optimization and Prediction Based on Self-organizing Neural Network[J].Journal of China Civil Aviation Flying College,2014(1):42-45.
Authors:Yan Shaohua Wu Qi
Institution:Yan Shaohua Wu Qi (School of Air Traffic Management, Civil Aviation University of China Tianjin 300300 China)
Abstract:Firstly this paper introduces domestic and international air traffic complexity about the definition and the present research status. Then air traffic complexity parameters are selected in the existing air traffic complexity models. By using the self-organizing neural network, the authors analyze the relationship between the selected air traffic complexity parameters to achieve the purpose of reducing the high-dimensional air traffic complexity parameters. For optimization of the air traffic complexity parameters, they use RBF neural network to predict and compare the prediction results, so that the optimal air traffic complexity parameters are achieved.
Keywords:Air traffic complexity parameter Self-organizing neural network Analysis of dimensionality reduction RBF prediction
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