0000000000396827

AUTHOR

Gorka Muñoz-gil

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Single trajectory characterization via machine learning

2020

[EN] In order to study transport in complex environments, it is extremely important to determine the physical mechanism underlying diffusion and precisely characterize its nature and parameters. Often, this task is strongly impacted by data consisting of trajectories with short length (either due to brief recordings or previous trajectory segmentation) and limited localization precision. In this paper, we propose a machine learning method based on a random forest architecture, which is able to associate single trajectories to the underlying diffusion mechanism with high accuracy. In addition, the algorithm is able to determine the anomalous exponent with a small error, thus inherently provi…

PhysicsBiophysicsGeneral Physics and AstronomyLibrary scienceAnomalous diffusionEuropean Social Fund01 natural sciences010305 fluids & plasmasVocational education0103 physical sciencesMachine learningChristian ministryStatistical physics010306 general physicsMATEMATICA APLICADA
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