Joint Inversion of Gravity and Magnetic Anomalies to Image Salt–Basement Structures Offshore Abu Dhabi, UAE, Using Deep Neural Networks

IF 3.2 3区 工程技术 Q1 ENGINEERING, PETROLEUM
SPE Journal Pub Date : 2023-10-01 DOI:10.2118/217982-pa
Zahra Ashena, Hojjat Kabirzadeh, Jeong Woo Kim, Xin Wang, Mohammed Y. Ali
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引用次数: 0

Abstract

Summary By using a deep neural network (DNN), a novel technique is developed for a 2.5D joint inversion of gravity and magnetic anomalies to model subsurface salts and basement structures. The joint application of gravity and magnetic anomalies addresses the inherent nonuniqueness problem of geophysical inversions. Moreover, DNN is used to conduct the nonlinear inverse mapping of gravity and magnetic anomalies to depth-to-salt and depth-to-basement. To create the training data set, a three-layer forward model of the subsurface is designed indicating sediments, salts, and the basement. The length and height of the model are determined based on the dimensions of the target area to be investigated. Several random parameters are set to create different representations of the forward model by altering the depth and shape of the layers. Given the topography of the salts and basement layers as well as their predefined density and susceptibility values, the gravity and magnetic anomalies of the forward models are calculated. Using multiprocessing algorithms, thousands of training examples are simulated comprising gravity and magnetic anomalies as input features and depth-to-salt and depth-to-basement as labels. The application of the proposed technique is evaluated to interpret the salt–basement structures over hydrocarbon reservoirs in offshore United Arab Emirates (UAE). Correspondingly, a DNN model is trained using the simulated data set of the target region and is assessed by making predictions on the random actual and noise-added synthetic data. Finally, gravity-magnetic anomalies are fed into the DNN inverse model to estimate the salts and basement structures over three profiles. The results proved the capability of our technique in modeling the subsurface structures.
利用深度神经网络联合反演阿联酋阿布扎比近海盐基结构的重磁异常
利用深度神经网络(deep neural network, DNN),提出了一种利用重磁异常联合反演2.5维地下盐和基底结构的新方法。重磁异常的联合应用解决了地球物理反演固有的非唯一性问题。利用深度神经网络对重磁异常进行了深-盐、深-基底的非线性逆映射。为了创建训练数据集,设计了一个三层的地下正演模型,表明沉积物、盐类和基底。模型的长度和高度是根据要研究的目标区域的尺寸确定的。设置几个随机参数,通过改变层的深度和形状来创建前向模型的不同表示。考虑盐层和基底层的地形以及它们的预先定义的密度和磁化率值,计算正演模型的重磁异常。使用多处理算法,模拟了数千个训练样例,其中重力和磁异常作为输入特征,深度到盐和深度到基底作为标签。评价了该技术在阿联酋海上油气储层盐基构造解释中的应用。相应地,使用目标区域的模拟数据集训练DNN模型,并通过对随机实际数据和添加噪声的合成数据进行预测来评估。最后,将重磁异常输入到DNN逆模型中,对三条剖面上的盐类和基底结构进行估计。结果证明了我们的技术在模拟地下结构方面的能力。
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来源期刊
SPE Journal
SPE Journal 工程技术-工程:石油
CiteScore
7.20
自引率
11.10%
发文量
229
审稿时长
4.5 months
期刊介绍: Covers theories and emerging concepts spanning all aspects of engineering for oil and gas exploration and production, including reservoir characterization, multiphase flow, drilling dynamics, well architecture, gas well deliverability, numerical simulation, enhanced oil recovery, CO2 sequestration, and benchmarking and performance indicators.
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