Locally developed models improve the accuracy of remotely assessed metrics as a rapid tool to classify sandy beach morphodynamics

Classification of beaches into morphodynamic states is a common approach in sandy beach studies, due to the influence of natural variables in ecological patterns and processes. The use of remote sensing for identifying beach type and monitoring changes has been commonly applied through multiple meth...

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Main Authors: Helio Herminio Checon, Yasmina Shah Esmaeili, Guilherme N. Corte, Nicole Malinconico, Alexander Turra
Format: Article
Language:English
Published: PeerJ Inc. 2022-05-01
Series:PeerJ
Subjects:
Online Access:https://peerj.com/articles/13413.pdf
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author Helio Herminio Checon
Yasmina Shah Esmaeili
Guilherme N. Corte
Nicole Malinconico
Alexander Turra
author_facet Helio Herminio Checon
Yasmina Shah Esmaeili
Guilherme N. Corte
Nicole Malinconico
Alexander Turra
author_sort Helio Herminio Checon
collection DOAJ
description Classification of beaches into morphodynamic states is a common approach in sandy beach studies, due to the influence of natural variables in ecological patterns and processes. The use of remote sensing for identifying beach type and monitoring changes has been commonly applied through multiple methods, which often involve expensive equipment and software processing of images. A previous study on the South African Coast developed a method to classify beaches using conditional tree inferences, based on beach morphological features estimated from public available satellite images, without the need for remote sensing processing, which allowed for a large-scale characterization. However, since the validation of this method has not been tested in other regions, its potential uses as a trans-scalar tool or dependence from local calibrations has not been evaluated. Here, we tested the validity of this method using a 200-km stretch of the Brazilian coast, encompassing a wide gradient of morphodynamic conditions. We also compared this locally derived model with the results that would be generated using the cut-off values established in the previous study. To this end, 87 beach sites were remotely assessed using an accessible software (i.e., Google Earth) and sampled for an in-situ environmental characterization and beach type classification. These sites were used to derive the predictive model of beach morphodynamics from the remotely assessed metrics, using conditional inference trees. An additional 77 beach sites, with a previously known morphodynamic type, were also remotely evaluated to test the model accuracy. Intertidal width and exposure degree were the only variables selected in the model to classify beach type, with an accuracy higher than 90% through different metrics of model validation. The only limitation was the inability in separating beach types in the reflective end of the morphodynamic continuum. Our results corroborated the usefulness of this method, highlighting the importance of a locally developed model, which substantially increased the accuracy. Although the use of more sophisticated remote sensing approaches should be preferred to assess coastal dynamics or detailed morphodynamic features (e.g., nearshore bars), the method used here provides an accessible and accurate approach to classify beach into major states at large spatial scales. As beach type can be used as a surrogate for biodiversity, environmental sensitivity and touristic preferences, the method may aid management in the identification of priority areas for conservation.
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spelling doaj.art-fa7ccd5d3aa14bd38402a58afb2202f22023-12-03T10:50:10ZengPeerJ Inc.PeerJ2167-83592022-05-0110e1341310.7717/peerj.13413Locally developed models improve the accuracy of remotely assessed metrics as a rapid tool to classify sandy beach morphodynamicsHelio Herminio Checon0Yasmina Shah Esmaeili1Guilherme N. Corte2Nicole Malinconico3Alexander Turra4Departament of Animal Biology, Universidade Estadual de Campinas, Campinas, São Paulo, BrazilDepartament of Animal Biology, Universidade Estadual de Campinas, Campinas, São Paulo, BrazilOceanographic Institute, Universidade de São Paulo, São Paulo, São Paulo, BrazilOceanographic Institute, Universidade de São Paulo, São Paulo, São Paulo, BrazilOceanographic Institute, Universidade de São Paulo, São Paulo, São Paulo, BrazilClassification of beaches into morphodynamic states is a common approach in sandy beach studies, due to the influence of natural variables in ecological patterns and processes. The use of remote sensing for identifying beach type and monitoring changes has been commonly applied through multiple methods, which often involve expensive equipment and software processing of images. A previous study on the South African Coast developed a method to classify beaches using conditional tree inferences, based on beach morphological features estimated from public available satellite images, without the need for remote sensing processing, which allowed for a large-scale characterization. However, since the validation of this method has not been tested in other regions, its potential uses as a trans-scalar tool or dependence from local calibrations has not been evaluated. Here, we tested the validity of this method using a 200-km stretch of the Brazilian coast, encompassing a wide gradient of morphodynamic conditions. We also compared this locally derived model with the results that would be generated using the cut-off values established in the previous study. To this end, 87 beach sites were remotely assessed using an accessible software (i.e., Google Earth) and sampled for an in-situ environmental characterization and beach type classification. These sites were used to derive the predictive model of beach morphodynamics from the remotely assessed metrics, using conditional inference trees. An additional 77 beach sites, with a previously known morphodynamic type, were also remotely evaluated to test the model accuracy. Intertidal width and exposure degree were the only variables selected in the model to classify beach type, with an accuracy higher than 90% through different metrics of model validation. The only limitation was the inability in separating beach types in the reflective end of the morphodynamic continuum. Our results corroborated the usefulness of this method, highlighting the importance of a locally developed model, which substantially increased the accuracy. Although the use of more sophisticated remote sensing approaches should be preferred to assess coastal dynamics or detailed morphodynamic features (e.g., nearshore bars), the method used here provides an accessible and accurate approach to classify beach into major states at large spatial scales. As beach type can be used as a surrogate for biodiversity, environmental sensitivity and touristic preferences, the method may aid management in the identification of priority areas for conservation.https://peerj.com/articles/13413.pdfConditional tree inferenceEnvironmental modellingBrazilian coastCoastal management
spellingShingle Helio Herminio Checon
Yasmina Shah Esmaeili
Guilherme N. Corte
Nicole Malinconico
Alexander Turra
Locally developed models improve the accuracy of remotely assessed metrics as a rapid tool to classify sandy beach morphodynamics
PeerJ
Conditional tree inference
Environmental modelling
Brazilian coast
Coastal management
title Locally developed models improve the accuracy of remotely assessed metrics as a rapid tool to classify sandy beach morphodynamics
title_full Locally developed models improve the accuracy of remotely assessed metrics as a rapid tool to classify sandy beach morphodynamics
title_fullStr Locally developed models improve the accuracy of remotely assessed metrics as a rapid tool to classify sandy beach morphodynamics
title_full_unstemmed Locally developed models improve the accuracy of remotely assessed metrics as a rapid tool to classify sandy beach morphodynamics
title_short Locally developed models improve the accuracy of remotely assessed metrics as a rapid tool to classify sandy beach morphodynamics
title_sort locally developed models improve the accuracy of remotely assessed metrics as a rapid tool to classify sandy beach morphodynamics
topic Conditional tree inference
Environmental modelling
Brazilian coast
Coastal management
url https://peerj.com/articles/13413.pdf
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