Machine Learning-Based Estimation of Suspended Sediment Concentration along Missouri River using Remote Sensing Imageries in Google Earth Engine

Alireza Taheri Dehkordi, Hani Ghasemi, M. J. V. Zoej
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引用次数: 4

Abstract

Estimation of Suspended Sediment Concentration (SSC), regarded as a crucial component of hydrological and ecological processes, can provide a better understanding of water quality. This study aims to use Sentinel-2 (S2) level-2A (L2A) images with less than 1% cloud coverage and supervised machine learning-based regression models to estimate SSC along the Missouri River. The model gets the reflectance values of different spectral bands and predicts the corresponding SSC value for each water pixel. Time-series data of three different ground measuring stations and surface reflectance values of the closest pixel to each station are used to train and validate the model. Two popular regression models, Support Vector Regression (SVR) and Random Forests (RF), are trained, validated, and compared online in the Google Earth Engine (GEE) processing platform by using 68 satellite images, without the need to be downloaded. The results demonstrated that the RF model with a root mean square error (RMSE) and mean absolute error (MAE) of 59.521 and 46.493 mg/L outperforms the SVR model. Moreover, the RF model resulted in a higher correlation between the real and predicted SSC values (R2 = 0.79 and Pearson's r = 0.877). Also, the two short wave infra-red (SWIR) and red bands play more considerable roles in SSC estimation using S2L2A images than other bands.
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基于机器学习的基于Google Earth引擎遥感影像的密苏里河悬沙浓度估算
悬沙浓度(SSC)的估算是水文生态过程的重要组成部分,可以更好地了解水质。本研究旨在使用云层覆盖率小于1%的Sentinel-2 (S2) level-2A (L2A)图像和基于监督机器学习的回归模型来估计密苏里河沿岸的SSC。该模型获取不同光谱波段的反射率值,并预测每个水像元对应的SSC值。利用三个不同地面测量站的时间序列数据和距离每个测量站最近像元的地表反射率值对模型进行训练和验证。两种流行的回归模型,支持向量回归(SVR)和随机森林(RF),在谷歌地球引擎(GEE)处理平台上使用68张卫星图像进行在线训练、验证和比较,无需下载。结果表明,射频模型的均方根误差(RMSE)和平均绝对误差(MAE)分别为59.521和46.493 mg/L,优于SVR模型。此外,RF模型显示实际SSC值与预测SSC值之间具有较高的相关性(R2 = 0.79, Pearson's r = 0.877)。此外,短波红外(SWIR)和红色两个波段在S2L2A图像的SSC估计中比其他波段发挥更大的作用。
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