NASA Logo

NTRS

NTRS - NASA Technical Reports Server

Due to the lapse in federal government funding, NASA is not updating this website. We sincerely regret this inconvenience.

Back to Results
Numerical solution of differential equations by artificial neural networksConventionally programmed digital computers can process numbers with great speed and precision, but do not easily recognize patterns or imprecise or contradictory data. Instead of being programmed in the conventional sense, artificial neural networks (ANN's) are capable of self-learning through exposure to repeated examples. However, the training of an ANN can be a time consuming and unpredictable process. A general method is being developed by the author to mate the adaptability of the ANN with the speed and precision of the digital computer. This method has been successful in building feedforward networks that can approximate functions and their partial derivatives from examples in a single iteration. The general method also allows the formation of feedforward networks that can approximate the solution to nonlinear ordinary and partial differential equations to desired accuracy without the need of examples. It is believed that continued research will produce artificial neural networks that can be used with confidence in practical scientific computing and engineering applications.
Document ID
19950026013
Acquisition Source
Legacy CDMS
Document Type
Conference Paper
Authors
Meade, Andrew J., Jr.
(Rice Univ. Houston, TX, United States)
Date Acquired
September 6, 2013
Publication Date
July 1, 1995
Publication Information
Publication: NASA. Johnson Space Center, National Aeronautics and Space Administration (NASA)(American Society for Engineering Education (ASEE) Summer Faculty Fellowship Program, 1994, Volume 1 13 p (SEE N95-32418
Subject Category
Cybernetics
Accession Number
95N32434
Funding Number(s)
CONTRACT_GRANT: NGT-44-005-803
Distribution Limits
Public
Copyright
Work of the US Gov. Public Use Permitted.
No Preview Available