2021
DOI: 10.1088/2632-072x/ac221f
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Extreme events in globally coupled chaotic maps

Abstract: Understanding and predicting uncertain things are the central themes of scientific evolution. Human beings revolve around these fears of uncertainties concerning various aspects like a global pandemic, health, finances, to name but a few. Dealing with this unavoidable part of life is far tougher due to the chaotic nature of these unpredictable activities. In the present article, we consider a global network of identical chaotic maps, which splits into two different clusters, despite the interaction between all… Show more

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Cited by 30 publications
(17 citation statements)
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“…For the present study we consider a DL framework known as LSTM [21] which is a special kind of RNNs. In recent years, LSTM framework has proven to be capable of forecasting time series of the chaotic systems even when there are extreme events in the time series [10,13,14]. The main feature that differentiates LSTM from the other RNNs is that the latter has only one activation function for the neurons that is tanh but in the case of the former, a sigmoid function is used for recurrent activations and tanh is used for the activation of neurons.…”
Section: Data Preparationmentioning
confidence: 99%
See 1 more Smart Citation
“…For the present study we consider a DL framework known as LSTM [21] which is a special kind of RNNs. In recent years, LSTM framework has proven to be capable of forecasting time series of the chaotic systems even when there are extreme events in the time series [10,13,14]. The main feature that differentiates LSTM from the other RNNs is that the latter has only one activation function for the neurons that is tanh but in the case of the former, a sigmoid function is used for recurrent activations and tanh is used for the activation of neurons.…”
Section: Data Preparationmentioning
confidence: 99%
“…In the study of dynamics of nonlinear systems, ML and DL algorithms are extensively used for the prediction and discovery of the behaviour of the chaotic and complex systems. For example, they have been used to identify chimera states [4,5], in the replication of chaotic attractors [6], using symbolic time series for network classification [7], separating chaotic signals [8], learning dynamical systems in noise [9] and in the prediction of extreme events [10][11][12][13][14][15]. Very recently, the authors of Ref.…”
Section: Introductionmentioning
confidence: 99%
“…Such signed networks can display fascinating macroscopic dynamics [57,63,64], including the π state, the traveling wave state, and the mixed state. Recently, the impact of such competitive interactions through the concurrence of positive-negative coupling has been investigated on the time-evolving networks of mobile agents [43,65], leading to diverse peculiar dynamical states, including extreme events [66,67]. However, these studies consider only the unidirectional influence of spatial dynamics toward the oscillator's amplitude and phase dynamics.…”
Section: Introductionmentioning
confidence: 99%
“…Nowadays Machine Learning (ML) and Deep Learning (DL) approaches have become important tools in the prediction task in various fields of physics [15][16][17][18] . In the field of nonlinear dynamics, ML methods have been used for the replication of chaotic attractors 19 , prediction of chaotic laser pulses amplitude 20 , detection of unstable periodic orbits 21 , chaotic signals separation 22 , network classification from symbolic time series 23 , identification of chimera states [24][25][26] and also in the study of extreme events [27][28][29][30][31] .…”
Section: Introductionmentioning
confidence: 99%