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Development and evaluation of SST algorithms for GOES-R ABI using MSG SEVIRI as a proxy

机译:以MSG SEVIRI为代理开发和评估GOES-R ABI的SST算法

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Cross-evaluation of sea surface temperature (SST) algorithms was undertaken using split-window channels of Meteosat Second Generation Spinning Enhanced Visible and Infrared Imager (SEVIRI) as a proxy for the Geostationary Operational Environmental Satellites-R (GOES-R) Advanced Baseline Imager (ABI). The goal of the study was to select the algorithm which provides the highest and the most uniform SST accuracy within the area observed by the geostationary sensor. The previously established algorithms, such as Non-Linear Regression (NLR) and Optimal Estimation (OE) were implemented along with two new algorithms, Incremental Regression (IncR) and Corrected Non-Linear Regression (CNLR), developed within preparations for the GOES-R ABI mission. OE, IncR and CNLR adopt the first guesses for SST and brightness temperatures (BT) and retrieve deviations of SST from the first guess (increments). OE retrieves SST increments with inversion of the radiative transfer model, whereas CNLR and IncR use regression equations. The difference between CNLR and IncR is that CNLR uses NLR coefficients, whereas IncR implies optimization of coefficients specifically for incremental formulation. Accuracy and precision of SST retrievals were evaluated by comparison with drifting buoys. The major observations from this study are as follows: 1) all algorithms adopting first guesses for SST and BTs are capable of improving SST accuracy and precision over NLR; and 2) IncR delivers the highest overall SST precision and the most uniform distributions of regional SST accuracy and precision. This paper also addresses implementation and validation issues such as bias correction in simulated BTs; preserving sensitivity of incremental SST retrievals to true SST variations; and selection of criteria for optimization and validation of incremental algorithms.
机译:使用Meteosat第二代自旋增强型可见光和红外成像仪(SEVIRI)的分割窗口通道作为对地静止运行环境卫星-R(GOES-R)高级基线成像仪的代理,对海面温度(SST)算法进行了交叉评估。 (ABI)。该研究的目的是选择一种算法,该算法在对地静止传感器观测到的区域内提供最高和最均匀的SST精度。早先建立的算法,例如非线性回归(NLR)和最佳估计(OE),连同两个新算法,即增量回归(IncR)和校正的非线性回归(CNLR),是在GOES-准备工作中开发的R ABI任务。 OE,IncR和CNLR采用SST和亮度温度(BT)的第一个猜测,并从第一个猜测中检索SST的偏差(增量)。 OE通过辐射传输模型的反演来检索SST增量,而CNLR和IncR使用回归方程。 CNLR和IncR之间的区别在于CNLR使用NLR系数,而IncR则隐含了专门针对增量配方的系数优化。通过与漂流浮标的比较来评估SST取回的准确性和精度。这项研究的主要观察结果如下:1)所有对SST和BT采用第一猜测的算法都能够提高NST的SST准确性和精度。 2)IncR提供最高的整体SST精度和区域SST精度和精度的最均匀分布。本文还讨论了实施和验证问题,例如模拟BT中的偏差校正。保持增量SST检索对真实SST变化的敏感性;以及选择标准以优化和验证增量算法。

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