深度前馈神经网络在地震储层表征中的应用对比研究

T. Colwell, Ø. Kjøsnes
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引用次数: 2

摘要

由于一种名为深度学习的强大新技术,机器学习一直在获得动力(Bengio, 2016)。这些改进是由于将神经网络的深度增加到一个以上的隐藏层。本研究使用深度前馈神经网络(DFNN)从地震属性预测储层性质,类似于Hampson等人(2001)。这些是页岩、孔隙度和含水饱和度,最终可以估算出净产层体积。我们将DFNN的结果与其他形式的加工学习(如多元线性回归(MLR),概率神经网络(PNN))进行比较。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Comparative Study Of Deep Feed Forward Neural Network Application For Seismic Reservoir Characterization
Machine learning has been gaining momentum thanks to a new powerful technique called deep learning (Bengio, 2016). These improvements are due to increasing the depth of neural networks to more than one hidden layer. This study uses a Deep Feed-forward Neural Network (DFNN) to predict reservoir properties from seismic attributes similar to Hampson et al. (2001). These are shale, porosity and water saturation volumes, ultimately allowing the estimation of the net pay volume. We compare the results of the DFNN to other forms of machining learning such as multi-linear regression (MLR), Probabilistic Neural Network (PNN).
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