• DocumentCode
    1167947
  • Title

    A neural network learning algorithm tailored for VLSI implementation

  • Author

    Hollis, Paul W. ; Paulos, John J.

  • Author_Institution
    Microprocessor & Memory Technol. Group, Motorola Inc., Austin, TX, USA
  • Volume
    5
  • Issue
    5
  • fYear
    1994
  • fDate
    9/1/1994 12:00:00 AM
  • Firstpage
    784
  • Lastpage
    791
  • Abstract
    This paper describes concepts that optimize an on-chip learning algorithm for implementation of VLSI neural networks with conventional technologies. The network considered comprises an analog feedforward network with digital weights and update circuitry, although many of the concepts are also valid for analog weights. A general, semi-parallel form of perturbation learning is used to accelerate hidden-layer update while the infinity-norm error measure greatly simplifies error detection. Dynamic gain adaption, coupled with an annealed learning rate, produces consistent convergence and maximizes the effective resolution of the bounded weights. The use of logarithmic analog-to-digital conversion, during the backpropagation phase, obviates the need for digital multipliers in the update circuitry without compromising learning quality. These concepts have been validated through network simulations of continuous mapping problems
  • Keywords
    VLSI; analogue processing circuits; analogue-digital conversion; backpropagation; error detection; feedforward neural nets; neural chips; VLSI implementation; analog feedforward network; annealed learning rate; backpropagation; digital weights; dynamic gain adaption; error detection; hidden-layer update; infinity-norm error measure; logarithmic A/D conversion; neural network; on-chip learning algorithm; perturbation learning; update circuitry; Acceleration; Analog-digital conversion; Annealing; Convergence; Coupling circuits; Error correction; H infinity control; Network-on-a-chip; Neural networks; Very large scale integration;
  • fLanguage
    English
  • Journal_Title
    Neural Networks, IEEE Transactions on
  • Publisher
    ieee
  • ISSN
    1045-9227
  • Type

    jour

  • DOI
    10.1109/72.317729
  • Filename
    317729