航空学报 > 1994, Vol. 15 Issue (7): 877-881

双并联前向神经网络及其在飞行故障检测仿真研究中的应用

何明一   

  1. 西北工业大学神经网络研究室,西安,710072
  • 收稿日期:1992-01-03 修回日期:1993-02-13 出版日期:1994-07-25 发布日期:1994-07-25

DOUBLEPARALLEL FEEDFORWARD NEURAL NETWORK WITH APPLICATION TO SIMULATION STUDY OF FLIGHT FAULT INSPECTION

He Mingyi   

  1. Institute of Neural Networks,Northwestern Polytechnical University,Xi′an,7 10072
  • Received:1992-01-03 Revised:1993-02-13 Online:1994-07-25 Published:1994-07-25

摘要: 首次把飞行故障检测视为一个非线性数据分类问题,从而可望借助人工神经网络来处理。为了克服MLFNN在数据分类中存在的学习慢与分类精度低,发展了由MLFNN和SLFNN并联并可接收编码输入的DPFNN模型,还将训练MLP的有关算法推广到DPFNN情形。用计算机仿真了若干飞行故障模式并用于测试DPFNN。

关键词: 飞行危险-故障-检验, 神经网, 前馈控制, 仿真

Abstract: Flight fault inspection which will be one of the key problems in pilot-aided equipment in the next generation of avionic system is first considered to be a nonlinear mapping,or classifi-cation problem,which provides a possibility to solve it with artificial neural networks(ANN).To overcome the problems of learning speed and classification accuracy in data classification with ANNs,the Double Parallel Feedforward Neural Network(DPFNN) model with encoded input is developed and training algorithms for MLP-like networks are extended to training the DPFNNs.TheDPFNN considered to be a parallel connection of an MLFNN with a SLFNN is expected to have better learning speed and classification accuracy,since the SLFNN can give a li near solution very fast and then the M LFNN uses its hidden nodes to adjust that solution to improve the DPFNN’ s performance. A few flight fauIt patterns as study cases are simulated on computer and used to test the DPFNN model.The experiment results have shown their good agreement with theoretical consideration。

Key words: flight hazards-faults-inspection, neural nets, feedforward control, simulations

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