A Radial Basis Function Network for Empirical Modeling of Soil Extraction Process

نویسندگان

  • X. M. Song
  • O. Aaltonen
  • H. Tirri
چکیده

A RBF network was used as an empirical modeling tool. Results on simulated processes show that such a network can learn the shape of the function reasonably well with very limited experimental data. The use of the RBF network model is also illustrated with real experimental data from a soil extraction process.

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تاریخ انتشار 1996