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Google Earth Engine Based Three Decadal Landsat Imagery Analysis for Mapping of Mangrove Forests and Its Surroundings in the Trat Province of Thailand

Uday PimpleKing Mongkut’s University of Technology Thonburi [Bangkok] (Thailand)Dario SimonettiEuropean Commission, Joint Research Centre, Directorate D-Sustainable Resources-Bio-Economy Unit, Ispra (VA), ItalyAsamaporn SitthiDepartment of Geography, Faculty of Social Sciences, Srinakharinwirot University, Bangkok, ThailandSukan PungkulRoyal Forest Department, 61 Phaholyothin Road, Chatuchak, Bangkok, ThailandKumron LeadprathomRoyal Forest Department, 61 Phaholyothin Road, Chatuchak, Bangkok, ThailandHenry SkupekDepartment of Biotechnology, Faculty of Science and Technology, Suan Sunandha Rajabhat University, Bangkok, ThailandJaturong Som-ardDepartment of Geography, Faculty of Humanities and Social Sciences, Mahasarakham University, MahaSarakham Province, ThailandValéry GondCIRAD, UPR Forests and Societies (F&S), Campus International de Baillarguet, Montpellier, FranceSirintornthep TowprayoonThe Joint Graduate School of Energy and Environment (JGSEE) and Centre of Excellence on Energy Technology and Environment, King Mongkut's University of Technology Thonburi, Bangkok, Thailand
2017en
ABI

Аннотация

Monitoring and understanding the changes in mangrove ecosystems and their surroundings are required to determine how mangrove ecosystems are constantly changing while influenced by anthropogenic, and natural drivers. Cosistency in high spatial resolution (30 m) satellite and high performance computing facilities are limiting factors to the process, with storage and analysis requirements. With this, we present the Google Earth Engine (GEE) based approach for long term mapping of mangrove forests and their surroundings. In this study, we used a GEE based approach: 1) to create atmospheric contamination free data from 1987-2017 from different Landsat satellite imagery; and 2) evaluating the random forest classifier and post classification change detection method. The obtained overall accuracy for the years 1987 and 2017 was determined to be 0.87 and 0.96, followed by a Kappa coefficient 0.80 and 0.94. The change detection results revealed a significant decrease in the agricultural area, while there was an increase in mangrove forest, shrimp/fish farm, and bareland area. The results suggest that interconversion of land use and land cover is affecting the landscape dynamics within the study area.

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