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A Machine Learning Approach to Estimate Surface Chlorophyll a Concentrations in Global Oceans From Satellite Measurements

机译:一种机器学习方法,以估算叶绿素中的叶绿素浓度从卫星测量中的浓度

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Various approaches have been proposed to estimate surface ocean chlorophyll a concentrations (Chl, mg m-3) from spectral reflectance measured either in the field or from space, each with its own strengths and limitations. Here, we develop a machine learning approach to reduce the impact of spectral noise and improve algorithm performance at the global scale for multiple satellite sensors. Among several candidates, the support vector regression (SVR) approach was found to yield the best algorithm performance as gauged by several statistical measures against field-measured Chl. While statistically the performance of the SVR is slightly worse than the empirical color index (CI) algorithm proposed in Hu et al. (2012) for Chl < 0.25 mg m-3, its applicability to global waters is much extended, from the CIs 0.01-0.25 mg m-3 (about 75% of the global oceans) to its 0.01-1 mg-3 [about 96% of global oceans according to Sea-viewing Wide Field-of-view Sensor (SeaWiFS) statistics]. Within this range, not only does the SVR show much improved performance over the traditional band-ratio OCx approaches, but the SVR leads to much reduced image noise and much improved cross-sensor consistency between SeaWiFS and Moderate Resolution Spectroradiometer (MODIS)/Aqua and between MODIS/Aqua and Visible Infrared Imaging Radiometer Suite (VIIRS). Furthermore, compared with the hybrid Ocean CI ( OCI) algorithm currently used by the U.S. NASA as the default algorithm for all mainstream ocean color sensors, the SVR avoids the need to merge two different algorithms for intermediate Chl (band subtraction for CI and band ratio for OCx), thus may serve as an alternative approach for global data processing.
机译:已经提出了各种方法来估计表面海洋叶绿素A浓度(CHL,Mg M-3)在场上或从空间中测量的光谱反射,每个光谱反射率为其自身强度和限制。在这里,我们开发了一种机器学习方法,以减少频谱噪声的影响,并在全球尺度上提高算法性能,以进行多种卫星传感器。在几个候选者中,发现支持向量回归(SVR)方法产生最佳算法性能,以通过对现场测量的CHL的几种统计措施测量。虽然统计上,SVR的性能略微差,而不是胡等人提出的经验颜色指数(CI)算法。 (2012)对于CHL <0.25 Mg M-3,其对全球水域的适用性很大,从CIS 0.01-0.25 MG M-3(占全球海洋的约75%)到0.01-1 mg-3 [关于96%的全球海洋根据海面观看宽阔的视野传感器(SeaWIFS)统计数据]。在此范围内,SVR不仅显示出对传统带法OCX方法的大大提高性能,而且SVR导致了大量降低的图像噪声和大大提高了海纬和中等分辨率光谱仪(MODIS)/ AQUA之间的交叉传感器一致性在MODIS / AQUA和可见红外成像辐射计套件(VIIRS)之间。此外,与当前美国NASA使用的混合海洋CI(OCI)算法作为所有主流海洋彩色传感器的默认算法相比,SVR避免了合并两个不同算法的中间CHL(CI和频带比的频带减法对于OCX),因此可以用作全局数据处理的替代方法。

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