Machine Learning assisted Chimera and Solitary states in Networks
Niraj Kushwaha, Naveen Kumar Mendola, Saptarshi Ghosh, Ajay Deep, Kachhvah, Sarika Jalan

TL;DR
This paper demonstrates how supervised machine learning models can accurately predict the delay parameters needed to engineer chimera and solitary states in coupled oscillator networks, facilitating experimental design.
Contribution
It introduces a machine learning approach to predict delay values and incoherence intensity for engineered chimera and solitary states in network systems.
Findings
ML models accurately predict critical delays for state engineering
MLP-Neural Network outperforms KNN and SVM in predictions
Method applicable to single-layer and multi-layer networks
Abstract
Chimera and Solitary states have captivated scientists and engineers due to their peculiar dynamical states corresponding to the co-existence of coherent and incoherent dynamical evolution in coupled units in various natural and artificial systems. It has been further demonstrated that such states can be engineered in systems of coupled oscillators by the suitable implementation of communication delays. Here, using supervised machine learning, we predict (a) the precise value of delay which is sufficient for engineering chimera and solitary states for a given set of system parameters, as well as (b) the intensity of incoherence for such engineered states. The results are demonstrated for two different examples consisting of single layer and multi layer networks. First, the chimera states (solitary states) are engineered by establishing delays in the neighboring links of a node (the…
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Taxonomy
MethodsSupport Vector Machine
