基于深度学习的离散余弦变换离散化反演重力异常沉积盆地二维基底起伏成像

IF 1.8 3区 地球科学 Q3 GEOCHEMISTRY & GEOPHYSICS
Arka Roy, Yunus Levent Ekinci, Çağlayan Balkaya, Hanbing Ai
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引用次数: 0

摘要

沉积盆地是地球地质史和能源勘探不可或缺的组成部分,在沉积、沉降和地质过程的驱动下发生了复杂的变化。重力异常反演是了解地下结构和密度变化的关键技术。我们的研究通过利用深度神经网络来反演观测到的重力异常,解决了复杂地下结构评估的挑战。传统的优化方法包括通过井眼数据或地质测井获得的已知密度分布,利用观测到的重力异常反演沉积盆地的基底深度。探讨了深度神经网络在沉积盆地构型准确评价中的应用,并论证了其在油气勘探中的重要意义。近年来,机器学习在地球物理学中的应用激增,其中深度学习模型发挥了关键作用。集成深度神经网络,如前馈神经网络,已经彻底改变了地下密度分布和基底深度估计。该研究引入了一种深度神经网络,专门用于反演观测到的重力异常,以估计沉积盆地的二维基底起伏地形。为了提高计算效率,采用了基于一维离散余弦变换的离散化方法。使用非高斯分形生成的合成数据弥补了用于训练深度神经网络模型的真实数据集的稀缺性。通过引入噪声,并与传统的高效全局优化方法进行比较,验证了该算法的鲁棒性。实际沉积盆地的重力异常进一步验证了该算法的有效性,使其成为地质勘探中准确、高效的地下成像方法。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Deep learning-based inversion with discrete cosine transform discretization for two-dimensional basement relief imaging of sedimentary basins from observed gravity anomalies

Sedimentary basins, integral to Earth's geological history and energy resource exploration, undergo complex changes driven by sedimentation, subsidence and geological processes. Gravity anomaly inversion is a crucial technique offering insights into subsurface structures and density variations. Our study addresses the challenge of complex subsurface structure assessment by leveraging deep neural networks to invert observed gravity anomalies. Optimization approaches traditionally incorporate known density distributions obtained from borehole data or geological logging for inverting basement depth in sedimentary basins using observed gravity anomalies. Our study explores the application of deep neural networks in accurate architectural assessment of sedimentary basins and demonstrates their significance in mineral and hydrocarbon exploration. Recent years have witnessed a surge in the use of machine learning in geophysics, with deep learning models playing a pivotal role. Integrating deep neural networks, such as the feedforward neural networks, has revolutionized subsurface density distribution and basement depth estimation. This study introduces a deep neural network specifically tailored for inverting observed gravity anomalies to estimate two-dimensional basement relief topographies in sedimentary basins. To enhance computational efficiency, a one-dimensional discrete cosine transform based discretization approach is employed. Synthetic data, generated using non-Gaussian fractals, compensates for the scarcity of true datasets for training the deep neural network model. The algorithm's robustness is validated through noise introduction with comparisons against an efficient and traditional global optimization-based approach. Gravity anomalies of real sedimentary basins further validate the algorithm's efficacy, establishing it as a promising methodology for accurate and efficient subsurface imaging in geological exploration.

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来源期刊
Geophysical Prospecting
Geophysical Prospecting 地学-地球化学与地球物理
CiteScore
4.90
自引率
11.50%
发文量
118
审稿时长
4.5 months
期刊介绍: Geophysical Prospecting publishes the best in primary research on the science of geophysics as it applies to the exploration, evaluation and extraction of earth resources. Drawing heavily on contributions from researchers in the oil and mineral exploration industries, the journal has a very practical slant. Although the journal provides a valuable forum for communication among workers in these fields, it is also ideally suited to researchers in academic geophysics.
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