© 2020 The Author(s). Published by IOP Publishing Ltd. We train an artificial neural network which distinguishes chaotic and regular dynamics of the two-dimensional Chirikov standard map. We use finite length trajectories and compare the performance with traditional numerical methods which need to evaluate the Lyapunov exponent (LE). The neural network has superior performance for short periods with length down to 10 Lyapunov times on which the traditional LE computation is far from converging. We show the robustness of the neural network to varying control parameters, in particular we train with one set of control parameters, and successfully test in a complementary set. Furthermore, we use the neural network to successfully test the dynam...
Local dynamics in a neural network are described by a two-dimensional (backpropagation or Hebbian) m...
SIGLEAvailable from British Library Document Supply Centre-DSC:3597.442(02/434) / BLDSC - British Li...
6 pages, 4 figuresWe compute how small input perturbations affect the output of deep neural networks...
In this article, we study how a chaos detection problem can be solved using Deep Learning techniques...
We use standard deep neural networks to classify univariate time series generated by discrete and co...
In chaotic dynamical systems such as the weather, prediction errors grow faster in some situations t...
We tackle the outstanding issue of analyzing the inner workings of neural networks trained to classi...
The aim of the paper was to analyze the given nonlinear problem by different methods of computation ...
The prediction of chaotic dynamical systems’ future evolution is widely debated and represents a hot...
The main advantage of detecting chaos is that the time series is short term predictable. The predict...
An algorithm is introduced that trains a neural network to identify chaotic dynamics from a single m...
Inspired by chaotic firing of neurons in the brain, we propose ChaosNet—a novel chaos based artifici...
International audienceMany research works deal with chaotic neural networks for various fields of ap...
An algorithm is introduced that trains a neural network to identify chaotic dynamics from a single m...
In this paper we present the general problem of identifying if a nonlinear dynamic system has a chao...
Local dynamics in a neural network are described by a two-dimensional (backpropagation or Hebbian) m...
SIGLEAvailable from British Library Document Supply Centre-DSC:3597.442(02/434) / BLDSC - British Li...
6 pages, 4 figuresWe compute how small input perturbations affect the output of deep neural networks...
In this article, we study how a chaos detection problem can be solved using Deep Learning techniques...
We use standard deep neural networks to classify univariate time series generated by discrete and co...
In chaotic dynamical systems such as the weather, prediction errors grow faster in some situations t...
We tackle the outstanding issue of analyzing the inner workings of neural networks trained to classi...
The aim of the paper was to analyze the given nonlinear problem by different methods of computation ...
The prediction of chaotic dynamical systems’ future evolution is widely debated and represents a hot...
The main advantage of detecting chaos is that the time series is short term predictable. The predict...
An algorithm is introduced that trains a neural network to identify chaotic dynamics from a single m...
Inspired by chaotic firing of neurons in the brain, we propose ChaosNet—a novel chaos based artifici...
International audienceMany research works deal with chaotic neural networks for various fields of ap...
An algorithm is introduced that trains a neural network to identify chaotic dynamics from a single m...
In this paper we present the general problem of identifying if a nonlinear dynamic system has a chao...
Local dynamics in a neural network are described by a two-dimensional (backpropagation or Hebbian) m...
SIGLEAvailable from British Library Document Supply Centre-DSC:3597.442(02/434) / BLDSC - British Li...
6 pages, 4 figuresWe compute how small input perturbations affect the output of deep neural networks...