Identification of distributed parameter systems a neural network based approach
No Thumbnail Available
Files
Date
2016
Journal Title
Journal ISSN
Volume Title
Publisher
Abstract
In recent years, Advances in scientific computation and developments in spatially
resolved sensor technology have critically enhanced the ability to develop modeling
strategies, and experimental techniques for the study of the spatiotemporal response of
distributed nonlinear systems.
Usual alternatives for the modeling of these systems are some simplifying
techniques that seek to capture the distributed system dynamics through lumped
parameter models, they can be drastically under-resolved, and, miss important
features of the true system response.
Robust implementations of distributed system identification algorithms based on
detailed spatiotemporal experimental data have, therefore, an important role to play. In
this project, we present a methodology for the identification of distributed parameter
systems, based on artificial neural network architectures.
Description
53p.
Keywords
Parameter systems, Neural network based
