A VGGNet-based correction for satellite altimetry-derived gravity anomalies to improve the accuracy of bathymetry to depths of 6 500 m

IF 1.4 3区 地球科学 Q3 OCEANOGRAPHY
Xiaolun Chen, Xiaowen Luo, Ziyin Wu, Xiaoming Qin, Jihong Shang, Huajun Xu, Bin Li, Mingwei Wang, Hongyang Wan
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Abstract

Understanding the topographic patterns of the seafloor is a very important part of understanding our planet. Although the science involved in bathymetric surveying has advanced much over the decades, less than 20% of the seafloor has been precisely modeled to date, and there is an urgent need to improve the accuracy and reduce the uncertainty of underwater survey data. In this study, we introduce a pretrained visual geometry group network (VGGNet) method based on deep learning. To apply this method, we input gravity anomaly data derived from ship measurements and satellite altimetry into the model and correct the latter, which has a larger spatial coverage, based on the former, which is considered the true value and is more accurate. After obtaining the corrected high-precision gravity model, it is inverted to the corresponding bathymetric model by applying the gravity-depth correlation. We choose four data pairs collected from different environments, i.e., the Southern Ocean, Pacific Ocean, Atlantic Ocean and Caribbean Sea, to evaluate the topographic correction results of the model. The experiments show that the coefficient of determination (R2) reaches 0.834 among the results of the four experimental groups, signifying a high correlation. The standard deviation and normalized root mean square error are also evaluated, and the accuracy of their performance improved by up to 24.2% compared with similar research done in recent years. The evaluation of the R2 values at different water depths shows that our model can achieve performance results above 0.90 at certain water depths and can also significantly improve results from mid-water depths when compared to previous research. Finally, the bathymetry corrected by our model is able to show an accuracy improvement level of more than 21% within 1% of the total water depths, which is sufficient to prove that the VGGNet-based method has the ability to perform a gravity-bathymetry correction and achieve outstanding results.

基于 VGGNet 的卫星测高重力异常校正,提高 6 500 米水深的测深精度
了解海底地形模式是了解我们星球的一个非常重要的部分。尽管几十年来水深测量所涉及的科学取得了长足的进步,但迄今为止只有不到 20% 的海底被精确建模,因此迫切需要提高水下测量数据的精度并降低其不确定性。在本研究中,我们介绍了一种基于深度学习的预训练视觉几何群网络(VGGNet)方法。为了应用该方法,我们将船舶测量和卫星测高得到的重力异常数据输入模型,并根据前者对后者进行修正,后者的空间覆盖范围更大,被认为是真实值,精度更高。得到修正后的高精度重力模型后,通过应用重力-深度相关性将其反演为相应的测深模型。我们选取了从南大洋、太平洋、大西洋和加勒比海等不同环境中采集的四对数据来评估模型的地形修正结果。实验结果表明,四组实验结果的判定系数(R2)达到 0.834,相关性较高。此外,还对标准偏差和归一化均方根误差进行了评估,与近年来的类似研究相比,其精度提高了 24.2%。对不同水深的 R2 值进行的评估表明,我们的模型在某些水深可以达到 0.90 以上的性能结果,与之前的研究相比,还能显著改善中层水深的结果。最后,经我们的模型校正的水深精度在总水深的 1%范围内提高了 21%以上,这足以证明基于 VGGNet 的方法有能力进行重力水深校正并取得优异的结果。
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来源期刊
Acta Oceanologica Sinica
Acta Oceanologica Sinica 地学-海洋学
CiteScore
2.50
自引率
7.10%
发文量
3884
审稿时长
9 months
期刊介绍: Founded in 1982, Acta Oceanologica Sinica is the official bi-monthly journal of the Chinese Society of Oceanography. It seeks to provide a forum for research papers in the field of oceanography from all over the world. In working to advance scholarly communication it has made the fast publication of high-quality research papers within this field its primary goal. The journal encourages submissions from all branches of oceanography, including marine physics, marine chemistry, marine geology, marine biology, marine hydrology, marine meteorology, ocean engineering, marine remote sensing and marine environment sciences. It publishes original research papers, review articles as well as research notes covering the whole spectrum of oceanography. Special issues emanating from related conferences and meetings are also considered. All papers are subject to peer review and are published online at SpringerLink.
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