Junyang Gou, Lara Börger, Michael Schindelegger, Benedikt Soja
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引用次数: 0
摘要
重力恢复和气候实验(GRACE)及其后续任务(GRACE- fo)的重力测量提供了监测海底压力变化的重要方法(\(p_b\)),海底压力是了解海洋环流的关键变量。然而,GRACE(-FO)场的粗糙空间分辨率模糊了重要的空间细节,例如\(p_b\)梯度。在本研究中,我们采用自监督深度学习算法,在没有高分辨率地面真实值的情况下,将GRACE(-FO)观测得出的全球每月\(p_b\)异常降至等角度0.25 \( ^{\circ }\)网格。优化过程通过约束输出遵循重力场估计中包含的大尺度质量守恒,同时学习两个海洋再分析产品的空间细节来实现。缩小后的产品与GRACE(-FO)解决方案在毫米级的大型海洋盆地上的等效水高一致,并且在评估短空间尺度变异性时表现出优于GRACE(-FO)的迹象。特别是,缩小后的\(p_b\)产品在海岸附近具有更真实的信号内容,与80左右的验潮仪测量结果更吻合% of 465 globally distributed stations. Our method presents a novel way of combining the advantages of satellite measurements and ocean models at the product level, with potential downstream applications for studies of the large-scale ocean circulation, coastal sea level variability, and changes in global geodetic parameters.
Downscaling GRACE-derived ocean bottom pressure anomalies using self-supervised data fusion
The gravimetry measurements from the Gravity Recovery and Climate Experiment (GRACE) and its follow-on (GRACE-FO) mission provide an essential way to monitor changes in ocean bottom pressure (\(p_b\)), which is a critical variable in understanding ocean circulation. However, the coarse spatial resolution of the GRACE(-FO) fields blurs important spatial details, such as \(p_b\) gradients. In this study, we employ a self-supervised deep learning algorithm to downscale global monthly \(p_b\) anomalies derived from GRACE(-FO) observations to an equal-angle 0.25 \( ^{\circ }\) grid in the absence of high-resolution ground truth. The optimization process is realized by constraining the outputs to follow the large-scale mass conservation contained in the gravity field estimates while learning the spatial details from two ocean reanalysis products. The downscaled product agrees with GRACE(-FO) solutions over large ocean basins at the millimeter level in terms of equivalent water height and shows signs of outperforming them when evaluating short spatial scale variability. In particular, the downscaled \(p_b\) product has more realistic signal content near the coast and exhibits better agreement with tide gauge measurements at around 80% of 465 globally distributed stations. Our method presents a novel way of combining the advantages of satellite measurements and ocean models at the product level, with potential downstream applications for studies of the large-scale ocean circulation, coastal sea level variability, and changes in global geodetic parameters.
期刊介绍:
The Journal of Geodesy is an international journal concerned with the study of scientific problems of geodesy and related interdisciplinary sciences. Peer-reviewed papers are published on theoretical or modeling studies, and on results of experiments and interpretations. Besides original research papers, the journal includes commissioned review papers on topical subjects and special issues arising from chosen scientific symposia or workshops. The journal covers the whole range of geodetic science and reports on theoretical and applied studies in research areas such as:
-Positioning
-Reference frame
-Geodetic networks
-Modeling and quality control
-Space geodesy
-Remote sensing
-Gravity fields
-Geodynamics