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Sub3DNet1.0: a deep-learning model for regional-scale 3D subsurface structure mapping

机译:sub3dnet1.0:区域级3D地下结构映射的深度学习模型

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This study introduces an efficient deep-learning model based on convolutional neural networks with joint autoencoder and adversarial structures for 3D subsurface mapping from 2D surface observations. The method was applied to delineate paleovalleys in an Australian desert landscape. The neural network was trained on a 6400? km 2 domain by using a land surface topography as 2D input and an airborne electromagnetic (AEM)-derived probability map of paleovalley presence as 3D output. The trained neural network has a squared error 0.10 across 99? % of the training domain and produces a squared error 0.10 across 93? % of the validation domain, demonstrating that it is reliable in reconstructing 3D paleovalley patterns beyond the training area. Due to its generic structure, the neural network structure designed in this study and the training algorithm have broad application potential to construct 3D geological features (e.g., ore bodies, aquifer) from 2D land surface observations.
机译:本研究介绍了一种基于卷积神经网络的高效深度学习模型,其具有来自2D表面观测的3D地下映射的联合自动化器和对抗结构。 该方法应用于澳大利亚沙漠景观中描绘古价。 神经网络在6400培训? KM 2域通过使用土地表面形貌作为2D输入和空中电磁(AEM) - 古罗维利存在的概率图作为3D输出。 训练有素的神经网络在99中具有平方误差& 0.10? 培训域的百分比并在93中产生平方误差& 0.10? 验证域的百分比,展示它在重建超出训练区域之外的3D Paleovelley模式方面是可靠的。 由于其通用结构,在本研究中设计的神经网络结构和训练算法具有广泛的应用潜力,从2D地表观察构建3D地质特征(例如,矿石,含水层)。

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