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Modelling Reservoir Turbidity from Medium Resolution Sentinel-2A/MSI and Landsat-8/OLI Satellite Imagery

机译:中分辨率的储层浊度灌输 - 2A / MSI和Landsat-8 / Oli卫星图像

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This study investigates the use of Sentinel-2A (S2A) and Landsat-8 (L8) OLI for monitoring of turbidity in reservoir waters. Using observed in situ data from 18 sampling stations for Chebara Reservoir in Kenya, the study developed an empirical multivariate regression model for turbidity estimation from atmospherically corrected, band adjusted and spectral resolution standardized S2A and L8 bands. Best results for turbidity estimation were obtained from the regression of in situ data with B2 (blue) and B3 (green) bands as [Rrs(B2/B3)~∧2+Rrs((B2/B3)] for S2A and [Rrs((B3/B2)] for L8. Both S2A and L8 retrieved turbidity with high and nearly equal accuracy of R~∧2 > 0.75 from the visible and NIR bands, with nearly similar RMSE of 0.5 NTU and NMAE% being higher for S2A by more than 30% as compared to L8's average NMAE% of 15%. The study shows that for both S2A and L8 sensors, and the proposed empirical regression algorithm suffices in the rapid and cost-effective quantification of turbidity inland reservoir waters. Using spatial interpolation for the visualization of the correlation between the predicted and observed turbidity, the L8 results were found to be more significant than the turbidity estimations using S2A bands.
机译:这项研究调查了使用Sentinel-2A(S2A)和陆地卫星-8(L8)OLI在水库水域监测浊度。原位数据使用不良观察从Chebara水库肯尼亚18个取样站,研究开发了一种经验多元回归模型用于估计浊度从大气校正,带调整和光谱分辨率标准化S2A和L8频带。浊度估计最好的结果是从回归原位数据而获得的带B2(蓝色)和B3(绿色)频带为[Rrs的(B2 / B3)〜∧2+的Rrs((B2 / B3)]为S2A和[阻力((B3 / B2)]为L8。这两种S2A和L8检索浊度与来自可见光和近红外波段R〜∧2> 0.75的高和几乎相等的精确度,具有0.5 NTU和NMAE%为S2A被高近类似RMSE超过30%,相比之下,15%L8的平均NMAE%作为。研究表明,对于这两种S2A和L8传感器以及浊度的快速和成本有效量化内陆储水域所提出的经验回归算法就足够了。使用空间用于预测和观察浊度之间的相关性的可视化内插,发现L8结果比使用S2A频带浊度估计更显著。

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