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Geological Facies modeling based on progressive growing of generative adversarial networks (GANs)

机译:基于渐进生长的生成对抗性网络(GANS)的地质相模拟

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Geological facies modeling has long been studied to predict subsurface resources. In recent years, generative adversarial networks (GANs) have been used as a new method for geological facies modeling with surprisingly good results. However, in conventional GANs, all layers are trained concurrently, and the scales of the geological features are not considered. In this study, we propose to train GANs for facies modeling based on a new training process, namely progressive growing of GANs or a progressive training process. In the progressive training process, GANs are trained layer by layer, and geological features are learned from coarse scales to fine scales. We also train a GAN in the conventional training process, and compare the conventionally trained generator with the progressively trained generator based on visual inspection, multi-scale sliced Wasserstein distance (MS-SWD), multi-dimensional scaling (MDS) plot visualization, facies proportion, variogram, and channel sinuosity, width, and length metrics. The MS-SWD reveals realism and diversity of the generated facies models, and is combined with MDS to visualize the relationship between the distributions of the generated and training facies models. The conventionally and progressively trained generators both have very good performances on all metrics. The progressively trained generator behaves especially better than the conventionally trained generator on the MS-SWD, MDS plots, and the necessary training time. The training time for the progressively trained generator can be as small as 39% of that for the conventionally trained generator. This study demonstrates the superiority of the progressive training process over the conventional one in geological facies modeling, and provides a better option for future GAN-related researches.
机译:已经研究了地质相模拟,以预测地下资源。近年来,生成的对抗网络(GANS)被用作地质相模拟的新方法,令人惊讶的良好结果。然而,在传统的GANS中,所有层同时培训,并且不考虑地质特征的尺度。在这项研究中,我们建议根据新的培训过程培训GANS for Face Modeling,即GAN的逐步增长或进步培训过程。在渐进式培训过程中,GAN通过层培训,地质特征从粗尺寸到精细尺度。我们还在传统的训练过程中培训GAN,并将常规训练的发电机与基于目视检查的逐步训练的发生器,多尺寸切片Wasserstein距离(MS-SWD),多维缩放(MDS)绘图可视化,相表比例,变速仪和信道归化,宽度和长度度量。 MS-SWD揭示了所生成的相模型的现实主义和多样性,并与MDS结合以可视化所生成和训练相模型的分布之间的关系。常规和逐步培训的发电机都对所有度量都具有很好的性能。逐步训练的发电机的表现尤其优于MS-SWD,MDS图和必要的训练时间上的常规训练的发生器。逐步训练的发生器的培训时间可以小于传统培训的发生器的39%。本研究展示了在地质相模拟中传统的常规培训过程的优越性,并为未来的GAN相关的研究提供了更好的选择。

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