Sea Surface Salinity Retrievals from Aquarius Using Neural Networks

Y. Soldo, D. Vine, E. Dinnat
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引用次数: 1

Abstract

Even though the Sea Surface Salinity (SSS) retrieved from Aquarius are generally very close to in-situ measurements, the level of similarity varies with the region and with the circumstances of the observations (wind speed, sea surface temperature, etc.). SSS is currently retrieved from the brightness temperatures measured by Aquarius and applying the current theoretical model for the propagation and emission of the natural thermal radiation. In this contribution we consider an alternative retrieval approach based on a Neural Network (NN) with the goal of improving the subsets of Aquarius SSS data that are in poorer agreement with in-situ measurements. The subset considered here are the SSS retrieved at latitudes higher than 30˚. The output of the NN approach are compared against in-situ measurements using four statistical metrics (correlation coefficient, bias, RMSD and 5% trimmed range). The output of the NN and the nominal Aquarius SSS are compared against SSS values from in-situ measurements and from ocean models. From these comparisons it appears that the output of the NN matches the in-situ measurements better than the nominal Aquarius SSS.
利用神经网络反演水瓶座海面盐度
尽管从Aquarius获取的海面盐度(SSS)通常与现场测量值非常接近,但相似程度因地区和观测环境(风速,海面温度等)而异。SSS目前是从宝瓶号测量的亮度温度中获取的,并应用了当前自然热辐射传播和发射的理论模型。在这篇文章中,我们考虑了一种基于神经网络(NN)的替代检索方法,目的是改进Aquarius SSS数据的子集,这些子集与原位测量结果的一致性较差。这里考虑的子集是在纬度高于30˚的地区检索到的SSS。使用四个统计指标(相关系数、偏差、RMSD和5%修剪范围)将神经网络方法的输出与现场测量进行比较。将神经网络和标称Aquarius SSS的输出与现场测量和海洋模型的SSS值进行比较。从这些比较中可以看出,神经网络的输出比名义上的水瓶座SSS更符合现场测量。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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