4.7 Article

Monitoring desertification in Mongolia based on Landsat images and Google Earth Engine from 1990 to 2020

期刊

ECOLOGICAL INDICATORS
卷 129, 期 -, 页码 -

出版社

ELSEVIER
DOI: 10.1016/j.ecolind.2021.107908

关键词

GEE; Machine learning methods; Desertification dynamics; Gravity center change; Intensity analysis; Desertification maps; Mongolia

资金

  1. project of Research and Development of Sand Prevention Technology of Highway and Soil Erosion Control Technology of Pipelines, an important part of the Strategic Priority Research Program of the Chinese Academy of Sciences (Class A) -The Pan-Third-Pole Env [XDA2003020201]
  2. Strategic Priority Research Program of Chinese Academy of Sciences, Pan-Third Pole Environment Study for a Green Silk Road (Pan-TPE) [XDA2009000001]
  3. National Key Research and Development Program of China-Mongolia cooperation research and demonstration in grassland desertification control technology [2017YFE0109200]
  4. China-initiated Belt and Road Special Project [131965KYSB20170038]

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This study utilized machine learning methods to analyze desertification dynamics in Mongolia from 1990 to 2020, with the maximum entropy method achieving an accuracy of 96%. It was found that lightly and moderately desertified lands had the highest change intensities, with precipitation playing a dominant role in desertification in Mongolia.
Desertification is one of the most serious ecological and environmental problems in arid regions. Low-cost, wideranging, and high-precision methods are essential for the formulation of appropriate strategies for quantitatively monitoring desertification. In this study, based on Google Earth Engine and Landsat images, six machine learning methods were used to monitor desertification dynamics in 1990-2020 in Mongolia. The spatiotemporal distributions and changes in desertification at different stages were analyzed using gravity center change and intensity analysis models. Subsequently, we quantitatively investigated the factors driving desertification in Mongolia. The results indicate that the maximum entropy method can obtain the most accurate assessment of the degree of desertification in comparison with the other five methods, with an accuracy of 96%. In 1990-2005, the area of desertified land increased significantly, afterward, a decreasing trend was observed. Lightly and moderately desertified lands had the highest change intensities and were most sensitive to environmental factors. Although the desertification dynamics are under the influence of both natural and anthropogenic factors, precipitation plays a dominant role in Mongolia. This study provides a comprehensive analysis of the desertification status and trends in Mongolia, and presents desertification maps that can be used to formulate preventive measures and guide desertification prevention and control.

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