估计磁源底部深度(DBMS)的cnn训练质心方法及其在南印度地盾中的应用

IF 4.1 2区 地球科学 Q1 GEOCHEMISTRY & GEOPHYSICS
Arka Roy, Korimilli Naga Durga Prasad, Rajat Kumar Sharma, Dommeti Vijayakumar, Rajesh Kumar
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引用次数: 0

摘要

来自地壳的磁场通过寻找磁源底部的深度帮助我们了解地壳的热结构,这是地壳热性质的重要指标。本研究的目的是利用观测到的磁场精确估计磁源底部的深度。传统的方法,如谱峰和质心技术,通常用于估计磁源底部的深度。然而,这些方法通常需要关于磁化源的先验知识,这些知识来源于谱域中的波矢量的经验关系,这在大区域内是具有挑战性的。我们设计了一种创新的深度学习方法,利用卷积神经网络直接估计磁源底部的深度,消除了对分形磁化源的先验知识的需要。构造了合成分形磁化来训练模型,并将卷积神经网络的性能与改进的质心方法进行了比较。我们的卷积神经网络方法通过利用多种现实合成分形磁化阵列得到证实,在磁化源底部结合了各种窗口宽度和深度。将该模型应用于南印度盾的高分辨率航磁数据,以了解地壳尺度的热结构。
本文章由计算机程序翻译,如有差异,请以英文原文为准。

CNN-Trained Centroid Method for Estimating Depth to the Bottom of the Magnetic Sources (DBMS) and Its Application to the Southern Indian Shield

CNN-Trained Centroid Method for Estimating Depth to the Bottom of the Magnetic Sources (DBMS) and Its Application to the Southern Indian Shield

CNN-Trained Centroid Method for Estimating Depth to the Bottom of the Magnetic Sources (DBMS) and Its Application to the Southern Indian Shield

CNN-Trained Centroid Method for Estimating Depth to the Bottom of the Magnetic Sources (DBMS) and Its Application to the Southern Indian Shield

The magnetic field from Earth's crust helps us understand its thermal structure by finding the depth to the bottom of magnetic sources, an important indicator of the Crustal thermal properties. This study aims to estimate the depth to the bottom of magnetic sources precisely using the observed magnetic field. Traditional methods, like the spectral peak and centroid techniques, are commonly used to estimate the depth to the bottom of magnetic sources. However, these methods typically require prior knowledge about the magnetization source, derived from empirical relationships of wave-vectors in the spectral domain, which is challenging to obtain over large regions. We devised an innovative deep learning approach utilizing a convolutional neural network to directly estimate the depth to the bottom of the magnetic sources, eliminating the need for prior knowledge of the fractal magnetization source. Synthetic fractal magnetizations were constructed to train the model, and the performance of the convolutional neural network was compared to the modified centroid approach. Our convolutional neural network methodology was confirmed by utilizing a diverse array of realistic synthetic fractal magnetization, incorporating various window widths and depths to the bottom of the magnetization source. The model is applied to the high-resolution aeromagnetic data of the southern Indian shield to understand the crustal-scale thermal structure.

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来源期刊
Journal of Geophysical Research: Solid Earth
Journal of Geophysical Research: Solid Earth Earth and Planetary Sciences-Geophysics
CiteScore
7.50
自引率
15.40%
发文量
559
期刊介绍: The Journal of Geophysical Research: Solid Earth serves as the premier publication for the breadth of solid Earth geophysics including (in alphabetical order): electromagnetic methods; exploration geophysics; geodesy and gravity; geodynamics, rheology, and plate kinematics; geomagnetism and paleomagnetism; hydrogeophysics; Instruments, techniques, and models; solid Earth interactions with the cryosphere, atmosphere, oceans, and climate; marine geology and geophysics; natural and anthropogenic hazards; near surface geophysics; petrology, geochemistry, and mineralogy; planet Earth physics and chemistry; rock mechanics and deformation; seismology; tectonophysics; and volcanology. JGR: Solid Earth has long distinguished itself as the venue for publication of Research Articles backed solidly by data and as well as presenting theoretical and numerical developments with broad applications. Research Articles published in JGR: Solid Earth have had long-term impacts in their fields. JGR: Solid Earth provides a venue for special issues and special themes based on conferences, workshops, and community initiatives. JGR: Solid Earth also publishes Commentaries on research and emerging trends in the field; these are commissioned by the editors, and suggestion are welcome.
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