Automated Mapping of Wetland Ecosystems: A Study Using Google Earth Engine and Machine Learning for Lotus Mapping in Central Vietnam

Author:

Pham Huu-Ty1ORCID,Nguyen Hao-Quang23ORCID,Le Khac-Phuc4,Tran Thi-Phuong15,Ha Nam-Thang6

Affiliation:

1. Faculty of Land Resources and Agricultural Environment, University of Agriculture and Forestry, Hue University, Hue City 530000, Vietnam

2. Laboratory of Environmental Sciences and Climate Change, Institute for Computational Science and Artificial Intelligence, Van Lang University, Ho Chi Minh City 700000, Vietnam

3. Faculty of Environment, School of Technology, Van Lang University, Ho Chi Minh City 700000, Vietnam

4. Faculty of Agronomy, University of Agriculture and Forestry, Hue University, Hue City 530000, Vietnam

5. Centre for Climate Change Study in Central Vietnam, University of Agriculture and Forestry, Hue University, Hue City 530000, Vietnam

6. Faculty of Fisheries, University of Agriculture and Forestry, Hue University, Hue City 530000, Vietnam

Abstract

Wetlands are highly productive ecosystems with the capability of carbon sequestration, providing an effective solution for climate change. Recent advancements in remote sensing have improved the accuracy in the mapping of wetland types, but there remain challenges in accurate and automatic wetland mapping, with additional requirements for complex input data for a number of wetland types in natural habitats. Here, we propose a remote sensing approach using the Google Earth Engine (GEE) to automate the extraction of water bodies and mapping of growing lotus, a wetland type with high economic and cultural values in central Vietnam. Sentinel-1 was used for water extraction with the K-Means clustering, whilst Sentinel-2 was combined with the machine learning smile Random Forest (sRF) and smile Gradient Tree Boosting (sGTB) models to map areas with growing lotus. The water map was derived from S-1 images with high confidence (F1 = 0.97 and Kappa coefficient = 0.94). sGTB outperformed the sRF model to deliver a growth map with a high accuracy (overall accuracy = 0.95, Kappa coefficient = 0.92, Precision = 0.93, and F1 = 0.93). The total lotus area was estimated at 145 ha and was distributed in the low land of the study site. Our proposed framework is a simple and reliable mapping technique, has a scalable potential with the GEE, and is capable of extension to other wetland types for large-scale mapping worldwide.

Funder

University of Agriculture and Forestry, Hue University

Publisher

MDPI AG

Subject

Water Science and Technology,Aquatic Science,Geography, Planning and Development,Biochemistry

Reference60 articles.

1. Schlesinger, W.H., and Bernhardt, E.S. (2020). Biogeochemistry, Elsevier.

2. Ecosystem Services of Wetlands;Mitsch;Int. J. Biodivers. Sci. Ecosyst. Serv. Manag.,2015

3. Impact of Climate Change on Wetland Ecosystems: A Critical Review of Experimental Wetlands;Salimi;J. Environ. Manag.,2021

4. Carbon Storage in US Wetlands;Nahlik;Nat. Commun.,2016

5. Carbon Sequestration by Wetlands: A Critical Review of Enhancement Measures for Climate Change Mitigation;Were;Earth Syst. Environ.,2019

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