50125

Автор(ы): 

Автор(ов): 

1

Параметры публикации

Тип публикации: 

Доклад

Название: 

Deep learning algorithms for estimating Lyapunov exponents from observed time series in discrete dynamic systems

DOI: 

10.1109/STAB.2018.8408378

Наименование конференции: 

  • 2018 14th International Conference "Stability and Oscillations of Nonlinear Control Systems" (Pyatnitskiy's Conference) (STAB)

Наименование источника: 

  • Proceedings of the 14th International Conference "Stability and Oscillations of Nonlinear Control Systems" (Pyatnitskiy's Conference) (STAB-2018, Moscow)

Город: 

  • Moscow, Russia

Издательство: 

  • IEEE

Год издания: 

2018

Страницы: 

https://ieeexplore.ieee.org/document/8408378
Аннотация
This paper demonstrates possible uses of deep neural networks for estimating Lyapunov exponents in discrete dynamic systems from their observable trajectories in the ex-tended state space. We have studied the functional mechanisms of using deep neural networks in said application. The proposed approach has been tested in simulations with different topologies and attractor complexities. The study shows that our analyzer can be used to investigate the structure of time series.

Библиографическая ссылка: 

Макаренко А.В. Deep learning algorithms for estimating Lyapunov exponents from observed time series in discrete dynamic systems / Proceedings of the 14th International Conference "Stability and Oscillations of Nonlinear Control Systems" (Pyatnitskiy's Conference) (STAB-2018, Moscow). Moscow, Russia: IEEE, 2018. С. https://ieeexplore.ieee.org/document/8408378.