期刊文献+

基于RS的GMDH神经网络在空袭目标识别中的应用

Application of GMDH Neural Network to Air Attack Target Identification Based on Rough Sets
下载PDF
导出
摘要 针对目标属性识别的特点,建立了基于粗糙集(Rough Sets,RS)的数据分组处理(GroupMethod of Data Handling,GMDH)神经网络分类模型。该模型较好地解决了采用高维数据集训练神经网络效率低,神经网络结构规模较大的问题。同时为了提高高维数据集合的属性约简效率,改进了集合近似质量属性约简算法。最后,通过与BP(Back-Propagation,BP)神经网络分类能力的仿真对比,结果表明,基于粗糙集的数据分组处理神经网络分类模型分类能力优于BP神经网络模型,满足现代防空作战对目标属性识别的需求,基于快速求核和集合近似质量的属性约简算法快速有效。 In the modem aerial defense fight, target attributes recognition is related to many factors, recognition process is complex, which calls for high time efficiency. A group method of data handling neural networks classification model is set up based on rough sets, aimed at characteristics of target attributes recognition. By using the model a lot of problems are solved, such as the low efficiency while high dimension data sets are used to train the neural networks and the neural networks configuration scale is great. Meanwhile, in order to boost the attributes reduction efficiency of high dimension data sets, the set approximate quality reduction algorithm is improved. Finally, in contrast with the simulation result of BP neural networks, the result shows that the classification quality of group method of data handling neural networks classification model based on rough sets is better than that of BP neural networks model, which satisfies the requirement for target attributes recognition in modem aerial defense fight, the attributes reduction algorithm based on speediness seeking core and set approximate quality is rapid and efficient.
出处 《空军工程大学学报(自然科学版)》 CSCD 北大核心 2010年第1期31-35,共5页 Journal of Air Force Engineering University(Natural Science Edition)
基金 国家自然科学基金资助项目(60773209)
关键词 粗糙集 神经网络 成组数据处理 约简 rough sets neural networks group method of data handling reduction
  • 相关文献

参考文献9

  • 1马飞,华继学,白冬婴.GMDH神经网络在空袭目标识别中的应用[J].微计算机信息,2008,24(19):258-260. 被引量:5
  • 2Edward Waltz. Information Warfare Principle and Operation [ M]. Boston: Artech House, 1998.
  • 3刘志杰.防空作战空袭目标识别辅助决策研究[D].西安:空军工程大学,2005.
  • 4吴耿锋,彭虎,储阅春,傅忠谦,周佩玲.具有混沌特征的GMDH网络在降雨量预测中的应用[J].小型微型计算机系统,2000,21(2):135-137. 被引量:9
  • 5Kordik P, Naplara P, Snorek M, et al. Modified GMDH Method and Models Quality Evaluation by Visualization [ J ]. Control Systems and Computer, 2003 (2) : 68 - 75.
  • 6马飞.基于粗糙集的GMDH神经网络技术及其在股市预测中的应用[D].西安:空军工程大学,2007.
  • 7Nikolaev N Y. Polynomial Harmonic GMDH Learning Networks for Time Series Modeling [ J ]. Neural Networks,2003, 16: 1527 - 1540.
  • 8Fuijimoto K. Applying GMDH Algorithm to Extract Rules From Examples [J]. SAMA,2003, 43(10) : 1311 -1319.
  • 9Zaychenko Yu P. The Fuzzy CMDH and Its Application to the Tasks of the ME Indexes Forecasting [J]. SAMA,2003, 43 (10) : 1321 - 1329.

二级参考文献6

共引文献10

相关作者

内容加载中请稍等...

相关机构

内容加载中请稍等...

相关主题

内容加载中请稍等...

浏览历史

内容加载中请稍等...
;
使用帮助 返回顶部