Prediction of tidal currents using Bayesian machine learning

We propose the use of machine learning techniques in the Bayesian framework for the prediction of tidal currents. Computer algorithms based on the classical harmonic analysis approach have been used for several decades in tidal predictions, however the method has several limitations in terms of hand...

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Main Authors: Sarkar, D, Adcock, TAA, Osborne, MA
Format: Journal article
Language:English
Published: Elsevier 2018
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author Sarkar, D
Adcock, TAA
Osborne, MA
author_facet Sarkar, D
Adcock, TAA
Osborne, MA
author_sort Sarkar, D
collection OXFORD
description We propose the use of machine learning techniques in the Bayesian framework for the prediction of tidal currents. Computer algorithms based on the classical harmonic analysis approach have been used for several decades in tidal predictions, however the method has several limitations in terms of handling of noise, expressing uncertainty, capturing non-sinusoidal, non-harmonic variations. There is a need for principled approaches which can handle uncertainty and accommodate noise in the data. In this work, we use Gaussian processes, a Bayesian non-parametric machine learning technique, to predict tidal currents. The probabilistic and non-parametric nature of the approach enables it to represent uncertainties in modelling and deal with complexities of the problem. The method makes use of kernel functions to capture structures in the data. The overall objective is to take advantage of the recent progress in machine learning to construct a robust algorithm. Using several sets of field data, we show that the machine learning approach can achieve better results than the traditional approaches.
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spelling oxford-uuid:4d4e88b2-1fdb-4b30-a148-74b8336c8e812022-03-26T15:54:53ZPrediction of tidal currents using Bayesian machine learningJournal articlehttp://purl.org/coar/resource_type/c_dcae04bcuuid:4d4e88b2-1fdb-4b30-a148-74b8336c8e81EnglishSymplectic ElementsElsevier2018Sarkar, DAdcock, TAAOsborne, MAWe propose the use of machine learning techniques in the Bayesian framework for the prediction of tidal currents. Computer algorithms based on the classical harmonic analysis approach have been used for several decades in tidal predictions, however the method has several limitations in terms of handling of noise, expressing uncertainty, capturing non-sinusoidal, non-harmonic variations. There is a need for principled approaches which can handle uncertainty and accommodate noise in the data. In this work, we use Gaussian processes, a Bayesian non-parametric machine learning technique, to predict tidal currents. The probabilistic and non-parametric nature of the approach enables it to represent uncertainties in modelling and deal with complexities of the problem. The method makes use of kernel functions to capture structures in the data. The overall objective is to take advantage of the recent progress in machine learning to construct a robust algorithm. Using several sets of field data, we show that the machine learning approach can achieve better results than the traditional approaches.
spellingShingle Sarkar, D
Adcock, TAA
Osborne, MA
Prediction of tidal currents using Bayesian machine learning
title Prediction of tidal currents using Bayesian machine learning
title_full Prediction of tidal currents using Bayesian machine learning
title_fullStr Prediction of tidal currents using Bayesian machine learning
title_full_unstemmed Prediction of tidal currents using Bayesian machine learning
title_short Prediction of tidal currents using Bayesian machine learning
title_sort prediction of tidal currents using bayesian machine learning
work_keys_str_mv AT sarkard predictionoftidalcurrentsusingbayesianmachinelearning
AT adcocktaa predictionoftidalcurrentsusingbayesianmachinelearning
AT osbornema predictionoftidalcurrentsusingbayesianmachinelearning