Semi-Empirical Continuous Time Neural Network Based Models for Controllable Dynamical Systems
- Authors: Egorchev M.V.1, Tiumentsev Y.V.1
-
Affiliations:
- Moscow Aviation Institute (National Research University)
- Issue: Vol 28, No 3 (2019)
- Pages: 192-203
- Section: Article
- URL: https://journals.rcsi.science/1060-992X/article/view/195214
- DOI: https://doi.org/10.3103/S1060992X1903010X
- ID: 195214
Cite item
Abstract
We discuss the problem of mathematical and computer modeling of nonlinear controllable dynamical systems with incomplete knowledge about the object of modeling and the conditions of its operation. The suggested approach is based on a merging of theoretical knowledge for the system with training tools of artificial neural network (ANN) field. We present an extension of previously proposed semi-empirical neural network modeling methods for the case of continuous time ANN-models, which makes it possible to expand the possibilities of this approach. The efficiency of this approach is demonstrated using the example of motion modeling for a maneuverable aircraft.
About the authors
M. V. Egorchev
Moscow Aviation Institute (National Research University)
Email: yutium@gmail.com
Russian Federation, Moscow, 125080
Yu. V. Tiumentsev
Moscow Aviation Institute (National Research University)
Author for correspondence.
Email: yutium@gmail.com
Russian Federation, Moscow, 125080
Supplementary files
