湿地
环境科学
漫滩
中分辨率成像光谱仪
中国
生态系统
环境资源管理
水文学(农业)
卫星
生态学
地理
地图学
地质学
工程类
航空航天工程
生物
考古
岩土工程
作者
Jing Lei,Yan Zhou,Qing Zeng,Shuguang Liu,Guangchun Lei,Lü Cai,Li Wen
出处
期刊:Remote Sensing
[Multidisciplinary Digital Publishing Institute]
日期:2020-09-15
卷期号:12 (18): 2995-2995
被引量:14
摘要
Large river floodplain systems (LRFS) are among the most diverse and dynamic ecosystems. Accurately monitoring the dynamics of LRFS over long time series is fundamental and essential for their sustainable development. However, challenges remain because the spatial distribution of LRFS is never static due to inter- and intra-annual changes in environmental conditions. In this study, we developed and tested a methodological framework to re-construct the long-term wetland dynamics in Dongting Lake, China, utilizing an unsupervised machine-learning algorithm (UMLA) on the basis of MODIS (Moderate Resolution Imaging Spectroradiometer) EVI (Enhanced Vegetation Index) time series. Our results showed that the UMLA achieved comparable performance to the time-consuming satellite image segmentation method with a Kappa coefficient of agreement greater than 0.75 and an overall accuracy over 85%. With the re-constructed annual wetland distribution maps, we found that 31.35% of wet meadows, one of most important ecological assets in the region, disappeared at an average rate of c.a. 1660 ha year−1 during the past two decades, which suggests that the Dongting Lake is losing its ecological function of providing wintering ground for migratory water birds, and remediation management actions are urgently required. We concluded that UMLA offers a fast and cost-efficient alternative to monitor ecological responses in a rapidly changing environment.
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