Comparison of artificial neural networks and harmonic analysis for sea level forecasting (Urias coastal lagoon, Mazatlán, Mexico)

Urias Estuary, a coastal lagoon in northwestern Mexico, is impacted by multiple anthropogenic stressors. Its hydrodynamics (and consequent contaminant dispersion) is mainly controlled by tidal currents. To better manage the coastal lagoon, accurate tidal-level forecasting is needed. Here we compare the predictions of sea level rise simulated by a conventional harmonic analysis, through Fourier spectral analysis, and by nonlinear autoregressive models based on artificial neural networks, both calibrated and validated using field data. Results showed that nonlinear autoregressive networks are useful to simulate the sea level over a time scale of several days (<10 days), in comparison to harmonic analysis, which can be used for longer time scales (&gt;10 days). We concluded that the joint use of both methods may lead to a more robust strategy to forecast the sea level in the coastal lagoon.

Saved in:
Bibliographic Details
Main Authors: Molino-Minero-Re,Erik, Cardoso-Mohedano,José Gilberto, Ruiz-Fernández,Ana Carolina, Sanchez-Cabeza,Joan-Albert
Format: Digital revista
Language:English
Published: Universidad Autónoma de Baja California, Instituto de Investigaciones Oceanológicas 2014
Online Access:http://www.scielo.org.mx/scielo.php?script=sci_arttext&pid=S0185-38802014000400005
Tags: Add Tag
No Tags, Be the first to tag this record!
id oai:scielo:S0185-38802014000400005
record_format ojs
spelling oai:scielo:S0185-388020140004000052015-04-21Comparison of artificial neural networks and harmonic analysis for sea level forecasting (Urias coastal lagoon, Mazatlán, Mexico)Molino-Minero-Re,ErikCardoso-Mohedano,José GilbertoRuiz-Fernández,Ana CarolinaSanchez-Cabeza,Joan-Albert sea level forecasting artificial neural networks harmonic analysis coastal lagoon Urias Estuary, a coastal lagoon in northwestern Mexico, is impacted by multiple anthropogenic stressors. Its hydrodynamics (and consequent contaminant dispersion) is mainly controlled by tidal currents. To better manage the coastal lagoon, accurate tidal-level forecasting is needed. Here we compare the predictions of sea level rise simulated by a conventional harmonic analysis, through Fourier spectral analysis, and by nonlinear autoregressive models based on artificial neural networks, both calibrated and validated using field data. Results showed that nonlinear autoregressive networks are useful to simulate the sea level over a time scale of several days (<10 days), in comparison to harmonic analysis, which can be used for longer time scales (&gt;10 days). We concluded that the joint use of both methods may lead to a more robust strategy to forecast the sea level in the coastal lagoon.info:eu-repo/semantics/openAccessUniversidad Autónoma de Baja California, Instituto de Investigaciones OceanológicasCiencias marinas v.40 n.4 20142014-01-01info:eu-repo/semantics/articletext/htmlhttp://www.scielo.org.mx/scielo.php?script=sci_arttext&pid=S0185-38802014000400005en10.7773/cm.v40i4.2463
institution SCIELO
collection OJS
country México
countrycode MX
component Revista
access En linea
databasecode rev-scielo-mx
tag revista
region America del Norte
libraryname SciELO
language English
format Digital
author Molino-Minero-Re,Erik
Cardoso-Mohedano,José Gilberto
Ruiz-Fernández,Ana Carolina
Sanchez-Cabeza,Joan-Albert
spellingShingle Molino-Minero-Re,Erik
Cardoso-Mohedano,José Gilberto
Ruiz-Fernández,Ana Carolina
Sanchez-Cabeza,Joan-Albert
Comparison of artificial neural networks and harmonic analysis for sea level forecasting (Urias coastal lagoon, Mazatlán, Mexico)
author_facet Molino-Minero-Re,Erik
Cardoso-Mohedano,José Gilberto
Ruiz-Fernández,Ana Carolina
Sanchez-Cabeza,Joan-Albert
author_sort Molino-Minero-Re,Erik
title Comparison of artificial neural networks and harmonic analysis for sea level forecasting (Urias coastal lagoon, Mazatlán, Mexico)
title_short Comparison of artificial neural networks and harmonic analysis for sea level forecasting (Urias coastal lagoon, Mazatlán, Mexico)
title_full Comparison of artificial neural networks and harmonic analysis for sea level forecasting (Urias coastal lagoon, Mazatlán, Mexico)
title_fullStr Comparison of artificial neural networks and harmonic analysis for sea level forecasting (Urias coastal lagoon, Mazatlán, Mexico)
title_full_unstemmed Comparison of artificial neural networks and harmonic analysis for sea level forecasting (Urias coastal lagoon, Mazatlán, Mexico)
title_sort comparison of artificial neural networks and harmonic analysis for sea level forecasting (urias coastal lagoon, mazatlán, mexico)
description Urias Estuary, a coastal lagoon in northwestern Mexico, is impacted by multiple anthropogenic stressors. Its hydrodynamics (and consequent contaminant dispersion) is mainly controlled by tidal currents. To better manage the coastal lagoon, accurate tidal-level forecasting is needed. Here we compare the predictions of sea level rise simulated by a conventional harmonic analysis, through Fourier spectral analysis, and by nonlinear autoregressive models based on artificial neural networks, both calibrated and validated using field data. Results showed that nonlinear autoregressive networks are useful to simulate the sea level over a time scale of several days (<10 days), in comparison to harmonic analysis, which can be used for longer time scales (&gt;10 days). We concluded that the joint use of both methods may lead to a more robust strategy to forecast the sea level in the coastal lagoon.
publisher Universidad Autónoma de Baja California, Instituto de Investigaciones Oceanológicas
publishDate 2014
url http://www.scielo.org.mx/scielo.php?script=sci_arttext&pid=S0185-38802014000400005
work_keys_str_mv AT molinomineroreerik comparisonofartificialneuralnetworksandharmonicanalysisforsealevelforecastinguriascoastallagoonmazatlanmexico
AT cardosomohedanojosegilberto comparisonofartificialneuralnetworksandharmonicanalysisforsealevelforecastinguriascoastallagoonmazatlanmexico
AT ruizfernandezanacarolina comparisonofartificialneuralnetworksandharmonicanalysisforsealevelforecastinguriascoastallagoonmazatlanmexico
AT sanchezcabezajoanalbert comparisonofartificialneuralnetworksandharmonicanalysisforsealevelforecastinguriascoastallagoonmazatlanmexico
_version_ 1756222075229437953