• DocumentCode
    3785043
  • Title

    Query-based learning for aerospace applications

  • Author

    E.W. Saad;J.J. Choi;J.L. Vian;D.C. Wunsch

  • Author_Institution
    Southern Methodist Univ., Richardson, TX, USA
  • Volume
    14
  • Issue
    6
  • fYear
    2003
  • Firstpage
    1437
  • Lastpage
    1448
  • Abstract
    Models of real-world applications often include a large number of parameters with a wide dynamic range, which contributes to the difficulties of neural network training. Creating the training data set for such applications becomes costly, if not impossible. In order to overcome the challenge, one can employ an active learning technique known as query-based learning (QBL) to add performance-critical data to the training set during the learning phase, thereby efficiently improving the overall learning/generalization. The performance-critical data can be obtained using an inverse mapping called network inversion (discrete network inversion and continuous network inversion) followed by oracle query. This paper investigates the use of both inversion techniques for QBL learning, and introduces an original heuristic to select the inversion target values for continuous network inversion method. Efficiency and generalization was further enhanced by employing node decoupled extended Kalman filter (NDEKF) training and a causality index (CI) as a means to reduce the input search dimensionality. The benefits of the overall QBL approach are experimentally demonstrated in two aerospace applications: a classification problem with large input space and a control distribution problem.
  • Keywords
    "Training data","Neural networks","Aerospace control","Aerospace industry","Aerospace safety","Industrial training","Supervised learning","Imaging phantoms","Dynamic range","Control systems"
  • Journal_Title
    IEEE Transactions on Neural Networks
  • Publisher
    ieee
  • ISSN
    1045-9227
  • Type

    jour

  • DOI
    10.1109/TNN.2003.820826
  • Filename
    1257407