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首页> 外文期刊>Journal of Geophysical Research. Biogeosciences >Accuracy of in situ sea surface temperatures used to calibrate infrared satellite measurements
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Accuracy of in situ sea surface temperatures used to calibrate infrared satellite measurements

机译:用于校准红外卫星测量的原位海表温度精度

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The present computation of sea surface temperature (SST) from infrared satellite measurements requires a coincident sample of in situ (drifting buoy and/or ship) SST measurements, to compute by regression the algorithmic coefficients for the infrared data. Ignoring the fundamental difference between satellite-measured "skin SST" and buoy/ship measured "bulk SST," we analyze past buoy and ship SST data to better evaluate the errors involved in the routine computation of SST from operational satellite data. We use buoy and ship SST data for 2 years (1990 and 1996) from the Comprehensive Ocean-Atmosphere Data Set as well as 2 years of previously cloud-cleared satellite radiances with matching drifting/moored buoy SST data from the NASA Pathfinder SST data set. We examine the in situ SST data for geographic distribution, accuracy, and self-consistency. We find that there are large geographic regions that are frequently not sampled by the present drifting buoy network, a natural consequence of the fact that most buoys are not deployed to measure in situ SST for satellite infrared SST calibration. Comparisons between drifting buoy SSTs suggest an error of similar to 0.4 degreesC for nearly coincident buoy SSTs. Comparing moored with adjacent drifting buoy SSTs, we find that drifting and moored buoy SSTs are samples from the same population. Ship SSTs are noisier and have a significant warm bias relative to drifting buoy SSTs. We explore the SST measurement accuracy changes that occur with variations in sampling coverage used for the SST algorithm regression. We both vary the total amount of points and restrict the regression data to regional sampling biases. Surprisingly the total number of calibration SST values can be quite small if they cover all latitudes. We conclude that buoy SSTs can have residual bias errors of similar to0.15 degreesC with RMS errors closer to 0.5 degreesC. [References: 13]
机译:当前从红外卫星测量值计算海表温度(SST)需要同时进行原地(漂流浮标和/或船舶)SST测量值样本,以便通过回归来计算红外数据的算法系数。忽略卫星测量的“皮肤SST”与浮标/船测量的“散装SST”之间的根本区别,我们分析过去的浮标并运送SST数据,以更好地评估从可操作卫星数据进行的SST常规计算中涉及的误差。我们使用2年(1990年和1996年)的浮标和船舶SST数据(来自海洋综合大气数据集)以及2年以前的云清除卫星辐射,并使用来自NASA Pathfinder SST数据集的匹配的漂移/系泊浮标SST数据。我们检查原位SST数据的地理分布,准确性和自洽性。我们发现,目前的漂流浮标网络通常没有对较大的地理区域进行采样,这是自然的结果,因为大多数浮标并未部署到原位测量SST以进行卫星红外SST校准。漂移浮标SST之间的比较表明,几乎重合的浮标SST的误差接近0.4摄氏度。与相邻的浮标SST进行系泊比较,我们发现浮标和系泊SST是来自同一种群的样本。船舶SST噪声较大,并且相对于浮标SST具有明显的热偏差。我们探索了用于SST算法回归的采样覆盖率变化引起的SST测量精度变化。我们都改变点的总数,并将回归数据限制在区域抽样偏差之内。令人惊讶的是,如果校准SST值涵盖所有纬度,则总数可能会非常少。我们得出的结论是,浮标SST的残余偏置误差可能接近0.15摄氏度,而RMS误差接近0.5摄氏度。 [参考:13]

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