Flood Monitoring in the Middle and Lower Basin of the Yangtze River Using Google Earth Engine and Machine Learning Methods

Jingming Wang, Futao Wang, Shixin Wang, Yi Zhou, Jianwan Ji, Zhenqing Wang, Qing Zhao, Longfei Liu
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Abstract

Under the background of intensified human activities and global climate warming, the frequency and intensity of flood disasters have increased, causing many casualties and economic losses every year. Given the difficulty of mountain shadow removal from large-scale watershed flood monitoring based on Sentinel-1 SAR images and the Google Earth Engine (GEE) cloud platform, this paper first adopted the Support Vector Machine (SVM) to extract the water body information during flooding. Then, a function model was proposed based on the mountain shadow samples to remove the mountain shadows from the flood maps. Finally, this paper analyzed the flood disasters in the middle and lower basin of the Yangtze River (MLB) in 2020. The main results showed that: (1) compared with the other two methods, the SVM model had the highest accuracy. The accuracy and kappa coefficients of the trained SVM model in the testing dataset were 97.77% and 0.9521, respectively. (2) The function model proposed based on the samples achieved the best effect compared with other shadow removal methods with a shadow recognition rate of 75.46%, and it alleviated the interference of mountain shadows for flood monitoring in a large basin. (3) The flood inundated area was 8526 km2, among which, cropland was severely affected (6160 km2). This study could provide effective suggestions for relevant stakeholders in policy making.
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基于Google Earth引擎和机器学习方法的长江中下游流域洪水监测
在人类活动加剧和全球气候变暖的背景下,洪水灾害发生的频率和强度不断增加,每年都造成大量人员伤亡和经济损失。针对基于Sentinel-1 SAR图像和Google Earth Engine (GEE)云平台的大尺度流域洪水监测中山体阴影去除困难的问题,本文首先采用支持向量机(SVM)对洪水水体信息进行提取。然后,提出了一种基于山影样本的函数模型,用于去除洪水地图中的山影。最后,对2020年长江中下游流域洪涝灾害进行了分析。主要结果表明:(1)与其他两种方法相比,SVM模型的准确率最高。训练后的SVM模型在测试数据集中的准确率和kappa系数分别为97.77%和0.9521。(2)基于样本提出的函数模型与其他阴影去除方法相比效果最好,阴影识别率为75.46%,缓解了山区阴影对大流域洪水监测的干扰。(3)洪水淹没面积8526 km2,其中农田受灾严重(6160 km2)。本研究可为相关利益相关方的政策制定提供有效建议。
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