Analysis of Time-Delayed Neural Networks via Rightmost Eigenvalue Positions
- 1 North Carolina A&T State University, United States
- 2 Chungnam National University, Korea
Abstract
Neural networks have been frequently used in various areas. In the implementation of the networks, time delays and uncertainty are present and known to lead to complex behaviors, which are hard to predict using classical analysis methods. In this study, stability and robust stability of neural networks considering time delays and parametric uncertainty is studied. For stability analysis, the rightmost eigenvalues (or dominant characteristic roots) are obtained by using an approach based on the Lambert W function. The Lambert W function has already been embedded in various commercial software packages (e.g., MATLAB, Maple and Mathematica). In a way similar to non-delayed systems, stability is determined from the positions of the characteristic roots in the complex plane. Conditions for oscillation and robust stability are also given. Numerical examples are provided and the results are compared to existing approaches (e.g., bifurcation method) and discussed.
DOI: https://doi.org/10.3844/ajeassp.2015.1.10
Copyright: © 2015 Sun Yi, Sangseok Yu, Jung H. Kim and Taher M. Abu-Lebdeh. This is an open access article distributed under the terms of the Creative Commons Attribution License, which permits unrestricted use, distribution, and reproduction in any medium, provided the original author and source are credited.
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Keywords
- Neural Network
- Lambert W Function
- Eigenvalues Stability
- Parametric Uncertainty