Forecasting Extreme Events in the Complex Dynamics of a Semiconductor Laser with Feedback
Meritxell Colet, Andr\'es Aragoneses

TL;DR
This paper investigates the complex spiking behavior of a semiconductor laser with feedback, using ordinal patterns analysis to distinguish dynamics and forecast extreme events and transitions.
Contribution
It introduces a thresholding method to differentiate between two competing dynamic behaviors and employs temporal correlations for forecasting extreme events in laser dynamics.
Findings
Identified two distinct dynamic regimes in the laser system.
Developed a method to forecast extreme events using temporal correlations.
Demonstrated the effectiveness of ordinal patterns analysis in complex laser dynamics.
Abstract
Complex systems performing spiking dynamics are widespread in Nature. They cover from earthquakes, to neurons, variable stars, social networks, or stock markets. Understanding and characterizing their dynamics is relevant in order to detect transitions, or to predict unwanted extreme events. Here we study the output intensity of a semiconductor laser with feedback, in a regime where it develops a complex spiking behavior, under an ordinal patterns analysis. We unveil that the complex dynamics presents two competing behaviors that can be distinguished with a thresholding method, and we use temporal correlations to forecast the extreme events, and transitions between dynamics.
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Taxonomy
TopicsNonlinear Dynamics and Pattern Formation · Neural Networks and Reservoir Computing · Neural dynamics and brain function
