Improving the accuracy of bathymetry using the combined neural network and gravity wavelet decomposition method with altimetry derived gravity data

IF 2 4区 地球科学 Q2 GEOCHEMISTRY & GEOPHYSICS
Yongjin Sun, Wei Zheng, Zhaowei Li, Zhiquan Zhou, Xiaocong Zhou, Zhongkai Wen
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引用次数: 0

Abstract

Abstract The wide range of bathymetry models can be estimated using the marine gravity information derived from satellite altimetry. However, due to nonlinear factors influences such as isostasy effects, the bathymetry estimated by gravity anomaly and vertical gravity gradient is not satisfactory. Therefore, to improve the accuracy of bathymetry estimation, a combined neural network and gravity information wavelet decomposition (CNNGWD) method is proposed based on wavelet decomposition and correlation analysis. Next, the bathymetry of the Manila Trench area is estimated using the CNNGWD method and multilayer neural network (MNN) method, respectively. Then, the shipborne sounding data and international bathymetric models such as ETOPO1 and GEBCO_2021 are separately used to evaluate the accuracy of the inversion models. The results show that the root mean square errors (RMSE) of the difference between the bathymetric model one (BM1) estimated by CNNGWD method and the shipborne sounding data is 59.90 m, the accuracy is improved by 12.45%, 64.70% and 28.68% compared with the bathymetric model two (BM2) which estimated by MNN, ETOPO1 and GEBCO, respectively. Finally, by analyzing the bathymetric accuracy shift with depth, the BM1 has lower RMSE at depths ranging from 1000 m to 3000 m. Furthermore, BM1 shows dominance in flat troughs and rugged ridge regions.
利用神经网络和重力小波分解相结合的方法提高测深精度
摘要利用卫星测高得到的海洋重力信息,可以估计出各种各样的测深模型。然而,由于均衡效应等非线性因素的影响,重力异常和垂直重力梯度估计的水深并不令人满意。为此,为了提高测深估计的精度,提出了基于小波分解和相关分析的神经网络与重力信息小波分解(CNNGWD)相结合的方法。接下来,分别采用CNNGWD方法和多层神经网络(MNN)方法估算马尼拉海沟区域的水深。然后分别利用船载测深资料和ETOPO1、GEBCO_2021等国际水深模型对反演模型的精度进行评价。结果表明,CNNGWD方法估计的水深模型1 (BM1)与船载测深数据差值的均方根误差(RMSE)为59.90 m,与MNN、ETOPO1和GEBCO方法估计的水深模型2 (BM2)相比,精度分别提高了12.45%、64.70%和28.68%。最后,通过对水深精度随深度变化的分析,发现BM1在1000 ~ 3000 m深度范围内均方根误差较低。此外,BM1在平坦槽区和崎岖脊区表现出优势。
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来源期刊
Marine Geodesy
Marine Geodesy 地学-地球化学与地球物理
CiteScore
4.10
自引率
6.20%
发文量
27
审稿时长
>12 weeks
期刊介绍: The aim of Marine Geodesy is to stimulate progress in ocean surveys, mapping, and remote sensing by promoting problem-oriented research in the marine and coastal environment. The journal will consider articles on the following topics: topography and mapping; satellite altimetry; bathymetry; positioning; precise navigation; boundary demarcation and determination; tsunamis; plate/tectonics; geoid determination; hydrographic and oceanographic observations; acoustics and space instrumentation; ground truth; system calibration and validation; geographic information systems.
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