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首页> 外文期刊>Journal of Sensors >Modelling Reservoir Chlorophyll-a, TSS, and Turbidity Using Sentinel-2A MSI and Landsat-8 OLI Satellite Sensors with Empirical Multivariate Regression
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Modelling Reservoir Chlorophyll-a, TSS, and Turbidity Using Sentinel-2A MSI and Landsat-8 OLI Satellite Sensors with Empirical Multivariate Regression

机译:使用Hentinel-2A MSI和Landsat-8 Oli卫星传感器建模储层叶绿素-A,TSS和浊度,具有经验多变量回归

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Sentinel-2A/MSI (S2A) and Landsat-8/OLI (L8) data products present a new frontier for the assessment and retrieval of optically active water quality parameters including chlorophyll-a (Chl-a), suspended particulate matter (TSS), and turbidity in reservoirs. However, because of their differences in spatial and spectral samplings, it is critical to evaluate how well the sensors are suited for the seamless generation of the water quality parameters (WQPs). This study presents results from the retrieval of the WQP in a reservoir from L8 and S2A optical sensors, after atmospheric correction and standardization through band adjustment. An empirical multivariate regression model (EMRM) algorithmic approach is proposed for the estimation of the water quality parameters in correlation with in situ laboratory measurements. From the results, both sensors estimated Chl-a concentrations with R2 of greater than 70% from the visible green band for L8 and a combination of green and SWIR-1 bands for S2A. While the NMSE% was nearly the same for both sensors in Chl-a estimation, the RMSE was 10?μg/L and 10?μg/L for L8 and S2A estimations of Chl-a, respectively. For TSS retrieval, L8 outperformed S2A by 31% in accuracy with R20.9 from L8’s red, blue, and green bands, as compared to 0.47≤R2≥0.61 from S2A’s red and NIR bands. The RMSE were the same as for Chl-a, and the NMSE% were both in the same range. Both sensors retrieved turbidity with high and nearly equal accuracy of R270% from the visible and NIR bands, with equal RMSE at 10% NTU and NMAE% from S2A being higher by more than 30% as compared to L8’s NMAE% at 15%. The study concluded that the higher performance accuracy of L8 is attributed to its higher SNR and spectral bandwidth placement as compared to S2A bands. Comparatively, S2A overestimated Chl-a and turbidity but performed equally well compared to OLI in the estimation of TSS. The results show that while absolute accuracy of retrieval of the WQPs still requires improvements, the developed algorithms are broadly able to discern the biooptical water quality in reservoirs.
机译:Sentinel-2A / MSI(S2A)和Landsat-8 / Oli(L8)数据产品为评估和检索的光学活性水质参数提供了新的前沿,包括叶绿素-A(CHL-A),悬浮的颗粒物(TS)以及水库中的浊度。然而,由于它们在空间和光谱采样中的差异,评估传感器适合于水质参数(WQPS)的无缝产生的程度至关重要。该研究在大气校正和通过带调节的标准化之后,从L8和S2A光学传感器中检索了WQP中的WQP中的WQP中的结果。提出了一种经验多元回归模型(EMRM)算法方法,用于估计与原位实验室测量相关的水质参数。从结果,两个传感器估计了CHL-A浓度,R2的浓度从L8的可见绿色带和S2a的绿色和SWIR-1带的组合。虽然CHL-A估计中的两个传感器的NMSE%几乎是相同的,但是对于L8和CHL-A的L8和S2A估计,RMSE分别为<10?μg/ L和>10Ω·μg/ L.对于TSS检索,L8从L8的红色,蓝色和绿色带中的r2> 0.9的精度表现优于31%,而来自S2A的红色和NIR带的0.47≤R2≥0.61。 RMSE与CHL-A相同,NMSE%均在相同范围内。两个传感器从可见和NIR带中的R2> 70%的高且近乎相等的精度检索浊度,与S2a的<10%NTU和NMAE%的RMSE相等,与L8的NMAE%相比,从S2a升高超过30% %。该研究得出结论,与S2A带相比,L8的较高性能精度归因于其较高的SNR和光谱带宽放置。相对轻地,S2a高估的CHL-A和浊度,但与OLI相比,与OLI相比均匀地进行。结果表明,虽然WQPS的检索绝对准确性仍需要改进,但发达的算法广泛地能够在储层中辨别生物光学水质。

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