Literature DB >> 33574470

Deep neural networks for active wave breaking classification.

Pedro Veras Guimarães1,2, Jean-François Filipot1, Caio Eadi Stringari3, Fabien Leckler1, Rui Duarte1.   

Abstract

Wave breaking is an important process for energy dissipation in the open ocean and coastal seas. It drives beach morphodynamics, controls air-sea interactions, determines when ship and offshore structure operations can occur safely, and influences on the retrieval of ocean properties from satellites. Still, wave breaking lacks a proper physical understanding mainly due to scarce observational field data. Consequently, new methods and data are required to improve our current understanding of this process. In this paper we present a novel machine learning method to detect active wave breaking, that is, waves that are actively generating visible bubble entrainment in video imagery data. The present method is based on classical machine learning and deep learning techniques and is made freely available to the community alongside this publication. The results indicate that our best performing model had a balanced classification accuracy score of [Formula: see text] 90% when classifying active wave breaking in the test dataset. An example of a direct application of the method includes a statistical description of geometrical and kinematic properties of breaking waves. We expect that the present method and the associated dataset will be crucial for future research related to wave breaking in several areas of research, which include but are not limited to: improving operational forecast models, developing risk assessment and coastal management tools, and refining the retrieval of remotely sensed ocean properties.

Entities:  

Year:  2021        PMID: 33574470     DOI: 10.1038/s41598-021-83188-y

Source DB:  PubMed          Journal:  Sci Rep        ISSN: 2045-2322            Impact factor:   4.379


  3 in total

1.  Distribution of breaking waves at the ocean surface.

Authors:  W Kendall Melville; Peter Matusov
Journal:  Nature       Date:  2002-05-02       Impact factor: 49.962

2.  Author Correction: SciPy 1.0: fundamental algorithms for scientific computing in Python.

Authors:  Pauli Virtanen; Ralf Gommers; Travis E Oliphant; Matt Haberland; Tyler Reddy; David Cournapeau; Evgeni Burovski; Pearu Peterson; Warren Weckesser; Jonathan Bright; Stéfan J van der Walt; Matthew Brett; Joshua Wilson; K Jarrod Millman; Nikolay Mayorov; Andrew R J Nelson; Eric Jones; Robert Kern; Eric Larson; C J Carey; İlhan Polat; Yu Feng; Eric W Moore; Jake VanderPlas; Denis Laxalde; Josef Perktold; Robert Cimrman; Ian Henriksen; E A Quintero; Charles R Harris; Anne M Archibald; Antônio H Ribeiro; Fabian Pedregosa; Paul van Mulbregt
Journal:  Nat Methods       Date:  2020-03       Impact factor: 28.547

3.  Quantifying the Public Health Benefits of Reducing Air Pollution: Critically Assessing the Features and Capabilities of WHO's AirQ+ and U.S. EPA's Environmental Benefits Mapping and Analysis Program - Community Edition (BenMAP - CE).

Authors:  Jason D Sacks; Neal Fann; Sophie Gumy; Ingu Kim; Giulia Ruggeri; Pierpaolo Mudu
Journal:  Atmosphere (Basel)       Date:  2020-05-16       Impact factor: 2.686

  3 in total
  1 in total

1.  Nonlinear wave evolution with data-driven breaking.

Authors:  D Eeltink; H Branger; C Luneau; Y He; A Chabchoub; J Kasparian; T S van den Bremer; T P Sapsis
Journal:  Nat Commun       Date:  2022-04-29       Impact factor: 17.694

  1 in total

北京卡尤迪生物科技股份有限公司 © 2022-2023.