Share Email Print

Proceedings Paper

Function prediction using recurrent neural networks
Author(s): Randall L. Lindsey; Dennis W. Ruck; Steven K. Rogers; Matthew Kabrisky
Format Member Price Non-Member Price
PDF $17.00 $21.00

Paper Abstract

The real-time recurrent learning (RTRL) algorithm was modified and applied to the task of function prediction. This recurrent neural network was modified to include both a variable learning rate, and a linear output combined with sigmoidal hidden units. The simple learning rate modification allows faster network convergence while avoiding most cases of catastrophic divergence. In addition, a linear output combined with hidden sigmoidal units enables the network to predict unbounded functions. The modified recurrent network was then used to simulate a linear system (second order Butterworth filter). In addition, the recurrent network was applied to two specific applications: predicting 3-D head position in time, and voice data reconstruction. The accuracy at which the network predicted the pilot's head position was compared to the best linear statistical prediction algorithm. The application of the network to the reconstruction of voice data showed the recurrent network's ability to learn temporally encoded sequences, and make decisions as to whether or not a speech signal sample was considered a fricative or a voiced portion of speech.

Paper Details

Date Published: 1 July 1992
PDF: 11 pages
Proc. SPIE 1710, Science of Artificial Neural Networks, (1 July 1992); doi: 10.1117/12.140111
Show Author Affiliations
Randall L. Lindsey, Air Force Institute of Technology (United States)
Dennis W. Ruck, Air Force Institute of Technology (United States)
Steven K. Rogers, Air Force Institute of Technology (United States)
Matthew Kabrisky, Air Force Institute of Technology (United States)

Published in SPIE Proceedings Vol. 1710:
Science of Artificial Neural Networks
Dennis W. Ruck, Editor(s)

© SPIE. Terms of Use
Back to Top
Sign in to read the full article
Create a free SPIE account to get access to
premium articles and original research
Forgot your username?