Using the machine learning approach known as reservoir computing, it is possible to train one dynamical system to emulate another. We show that such trained reservoir computers reproduce the properties of the attractor of the chaotic system sufficiently well to exhibit chaos synchronization. That is, the trained reservoir computer, weakly driven by the chaotic system, will synchronize with the chaotic system. Conversely, the chaotic system, weakly driven by a trained reservoir computer, will synchronize with the reservoir computer. We illustrate this behavior on the Mackey-Glass and Lorenz systems. We then show that trained reservoir computers can be used to crack chaos based cryptography and illustrate this on a chaos cryptosystem based on...
Dynamical systems have been used to describe a vast range of phenomena, including physical sciences...
[eng] Physical dynamical systems are able to process information in a nontrivial manner. The machin...
This paper shows that the celebrated embedding theorem of Takens is a particular case of a much more...
Reservoir computing is a machine learning approach to designing artificial neural networks. Despite ...
Master’s degree in Physics of Complex Systems at the Universitat de Les Illes Balears, academic year...
Hardware-implemented reservoir computing (RC) has been gaining considerable interest in recent years...
Reservoir computing (RC) is a brain-inspired computing framework that employs a transient dynamical ...
In this paper, we reconstruct the dynamic behavior of the ring-coupled Lorenz oscillators system by ...
Chaos in dynamical systems potentially provides many different dynamical states arising from a singl...
Reservoir Computing has been highlighted as a promising methodology to perform computation in dynami...
In this work, a high efficient next generation reservoir computing (HENG-RC) paradigm that adopts th...
Reservoir computers are powerful tools for chaotic time series prediction. They can be trained to ap...
Dynamical systems suited for Reservoir Computing (RC) should be able to both retain information for ...
The reservoir computing networks (RCNs) have been successfully employed as a tool in learning and co...
Chaotic dynamics are abundantly present in nature as well as in manufactured devices. While chaos in...
Dynamical systems have been used to describe a vast range of phenomena, including physical sciences...
[eng] Physical dynamical systems are able to process information in a nontrivial manner. The machin...
This paper shows that the celebrated embedding theorem of Takens is a particular case of a much more...
Reservoir computing is a machine learning approach to designing artificial neural networks. Despite ...
Master’s degree in Physics of Complex Systems at the Universitat de Les Illes Balears, academic year...
Hardware-implemented reservoir computing (RC) has been gaining considerable interest in recent years...
Reservoir computing (RC) is a brain-inspired computing framework that employs a transient dynamical ...
In this paper, we reconstruct the dynamic behavior of the ring-coupled Lorenz oscillators system by ...
Chaos in dynamical systems potentially provides many different dynamical states arising from a singl...
Reservoir Computing has been highlighted as a promising methodology to perform computation in dynami...
In this work, a high efficient next generation reservoir computing (HENG-RC) paradigm that adopts th...
Reservoir computers are powerful tools for chaotic time series prediction. They can be trained to ap...
Dynamical systems suited for Reservoir Computing (RC) should be able to both retain information for ...
The reservoir computing networks (RCNs) have been successfully employed as a tool in learning and co...
Chaotic dynamics are abundantly present in nature as well as in manufactured devices. While chaos in...
Dynamical systems have been used to describe a vast range of phenomena, including physical sciences...
[eng] Physical dynamical systems are able to process information in a nontrivial manner. The machin...
This paper shows that the celebrated embedding theorem of Takens is a particular case of a much more...