• DocumentCode
    1400513
  • Title

    Volterra models and three-layer perceptrons

  • Author

    Marmarelis, Vasilis Z. ; Zhao, Xiao

  • Author_Institution
    Dept. of Biomed. Eng., Univ. of Southern California, Los Angeles, CA, USA
  • Volume
    8
  • Issue
    6
  • fYear
    1997
  • fDate
    11/1/1997 12:00:00 AM
  • Firstpage
    1421
  • Lastpage
    1433
  • Abstract
    This paper proposes the use of a class of feedforward artificial neural networks with polynomial activation functions (distinct for each hidden unit) for practical modeling of high-order Volterra systems. Discrete-time Volterra models (DVMs) are often used in the study of nonlinear physical and physiological systems using stimulus-response data. However, their practical use has been hindered by computational limitations that confine them to low-order nonlinearities (i.e., only estimation of low-order kernels is practically feasible). Since three-layer perceptrons (TLPs) can be used to represent input-output nonlinear mappings of arbitrary order, this paper explores the basic relations between DVMs and TLPs with tapped-delay inputs in the context of nonlinear system modeling. A variant of TLP with polynomial activation functions-termed “separable Volterra networks” (SVNs)-is found particularly useful in deriving explicit relations with DVM and in obtaining practicable models of highly nonlinear systems from stimulus-response data. The conditions under which the two approaches yield equivalent representations of the input-output relation are explored, and the feasibility of DVM estimation via equivalent SVN training using backpropagation is demonstrated by computer-simulated examples and compared with results from the Laguerre expansion technique (LET). The use of SVN models allows practicable modeling of high-order nonlinear systems, thus removing the main practical limitation of the DVM approach
  • Keywords
    Volterra series; backpropagation; feedforward neural nets; multilayer perceptrons; nonlinear systems; polynomials; transfer functions; Laguerre expansion technique; backpropagation; discrete-time Volterra models; feedforward artificial neural networks; high-order Volterra systems; input-output nonlinear mappings; low-order nonlinearities; nonlinear physical systems; physiological systems; polynomial activation functions; separable Volterra networks; stimulus-response data; tapped-delay inputs; three-layer perceptrons; Artificial neural networks; Biomedical engineering; Context modeling; Kernel; Multi-layer neural network; Multilayer perceptrons; Neural networks; Nonlinear systems; Polynomials; Yield estimation;
  • fLanguage
    English
  • Journal_Title
    Neural Networks, IEEE Transactions on
  • Publisher
    ieee
  • ISSN
    1045-9227
  • Type

    jour

  • DOI
    10.1109/72.641465
  • Filename
    641465