4.7 Article

Machine learning algorithms for predicting the amplitude of chaotic laser pulses

期刊

CHAOS
卷 29, 期 11, 页码 -

出版社

AIP Publishing
DOI: 10.1063/1.5120755

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资金

  1. BE-OPTICAL project [H2020-675512]
  2. Spanish Ministerio de Ciencia, Innovacion y Universidades [PGC2018-099443-B-I00]
  3. ICREAACADEMIA
  4. Ramon y Cajal Fellowship [RYC-2015-18140]
  5. Ibersinc network of excellence [FIS2017-90782-REDT]

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Forecasting the dynamics of chaotic systems from the analysis of their output signals is a challenging problem with applications in most fields of modern science. In this work, we use a laser model to compare the performance of several machine learning algorithms for forecasting the amplitude of upcoming emitted chaotic pulses. We simulate the dynamics of an optically injected semiconductor laser that presents a rich variety of dynamical regimes when changing the parameters. We focus on a particular dynamical regime that can show ultrahigh intensity pulses, reminiscent of rogue waves. We compare the goodness of the forecast for several popular methods in machine learning, namely, deep learning, support vector machine, nearest neighbors, and reservoir computing. Finally, we analyze how their performance for predicting the height of the next optical pulse depends on the amount of noise and the length of the time series used for training. Published under license by AIP Publishing.

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