Analysis Of Backscatter To Extraction Of Shoreline Using Machine Learning Methods In The Bangkalan Regency

Coastal areas are often threatened by natural and anthropogenic factors, causing instability and shoreline changes in the affected areas. Shoreline changes can be monitored with remote sensing techniques such as Synthetic Aperture Radar (SAR) data. The purpose of this research is to extract the coas...

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Main Authors: Arifin Fahmi, Wicaksono Ashari
Format: Article
Language:English
Published: EDP Sciences 2025-01-01
Series:BIO Web of Conferences
Online Access:https://www.bio-conferences.org/articles/bioconf/pdf/2025/08/bioconf_srcm24_07007.pdf
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author Arifin Fahmi
Wicaksono Ashari
author_facet Arifin Fahmi
Wicaksono Ashari
author_sort Arifin Fahmi
collection DOAJ
description Coastal areas are often threatened by natural and anthropogenic factors, causing instability and shoreline changes in the affected areas. Shoreline changes can be monitored with remote sensing techniques such as Synthetic Aperture Radar (SAR) data. The purpose of this research is to extract the coastline by segmenting the machine learning method and find out how far the machine learning model works to distinguish the water class and the land class. The method used in this research is the Support Vector Machine model to divide the water and land classes that will be utilized to obtain shoreline extracts from the model results, and evaluate the model by calculating the model accuracy. The overall accuracy results recorded in 2016 and 2023 are 99.5% and 99%, respectively, with Kappa Coefficients of 0.99018 and 0.98138. This study highlights the potential of SAR data and SVM methods in monitoring coastal dynamics and can serve as a reference for sustainable coastal management.
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institution Kabale University
issn 2117-4458
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series BIO Web of Conferences
spelling doaj-art-017007679962458b81c155978e9469b82025-02-07T08:20:29ZengEDP SciencesBIO Web of Conferences2117-44582025-01-011570700710.1051/bioconf/202515707007bioconf_srcm24_07007Analysis Of Backscatter To Extraction Of Shoreline Using Machine Learning Methods In The Bangkalan RegencyArifin Fahmi0Wicaksono Ashari1Department of Marine Science, University of Trunojoyo Madura, Jl. Raya Telang PO BOX 2 Kamal-BangkalanDepartment of Marine Science, University of Trunojoyo Madura, Jl. Raya Telang PO BOX 2 Kamal-BangkalanCoastal areas are often threatened by natural and anthropogenic factors, causing instability and shoreline changes in the affected areas. Shoreline changes can be monitored with remote sensing techniques such as Synthetic Aperture Radar (SAR) data. The purpose of this research is to extract the coastline by segmenting the machine learning method and find out how far the machine learning model works to distinguish the water class and the land class. The method used in this research is the Support Vector Machine model to divide the water and land classes that will be utilized to obtain shoreline extracts from the model results, and evaluate the model by calculating the model accuracy. The overall accuracy results recorded in 2016 and 2023 are 99.5% and 99%, respectively, with Kappa Coefficients of 0.99018 and 0.98138. This study highlights the potential of SAR data and SVM methods in monitoring coastal dynamics and can serve as a reference for sustainable coastal management.https://www.bio-conferences.org/articles/bioconf/pdf/2025/08/bioconf_srcm24_07007.pdf
spellingShingle Arifin Fahmi
Wicaksono Ashari
Analysis Of Backscatter To Extraction Of Shoreline Using Machine Learning Methods In The Bangkalan Regency
BIO Web of Conferences
title Analysis Of Backscatter To Extraction Of Shoreline Using Machine Learning Methods In The Bangkalan Regency
title_full Analysis Of Backscatter To Extraction Of Shoreline Using Machine Learning Methods In The Bangkalan Regency
title_fullStr Analysis Of Backscatter To Extraction Of Shoreline Using Machine Learning Methods In The Bangkalan Regency
title_full_unstemmed Analysis Of Backscatter To Extraction Of Shoreline Using Machine Learning Methods In The Bangkalan Regency
title_short Analysis Of Backscatter To Extraction Of Shoreline Using Machine Learning Methods In The Bangkalan Regency
title_sort analysis of backscatter to extraction of shoreline using machine learning methods in the bangkalan regency
url https://www.bio-conferences.org/articles/bioconf/pdf/2025/08/bioconf_srcm24_07007.pdf
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