计算机科学
规范化(社会学)
人工智能
辍学(神经网络)
人工神经网络
忠诚
多孔性
磁导率
岩石物理学
非线性系统
储层模拟
机器学习
算法
地质学
石油工程
岩土工程
电信
物理
量子力学
社会学
膜
生物
人类学
遗传学
作者
Liuqing Yang,Shoudong Wang,Xiaohong Chen,Wei Chen,Omar M. Saad,Xu Zhou,Nam Pham,Zhicheng Geng,Sergey Fomel,Yangkang Chen
标识
DOI:10.1109/tnnls.2022.3157765
摘要
Accurate estimation of reservoir parameters (e.g., permeability and porosity) helps to understand the movement of underground fluids. However, reservoir parameters are usually expensive and time-consuming to obtain through petrophysical experiments of core samples, which makes a fast and reliable prediction method highly demanded. In this article, we propose a deep learning model that combines the 1-D convo- lutional layer and the bidirectional long short-term memory network to predict reservoir permeability and porosity. The mapping relationship between logging data and reservoir parameters is established by training a network with a combination of nonlinear and linear modules. Optimization algorithms, such as layer normalization, recurrent dropout, and early stopping, can help obtain a more accurate training model. Besides, the self-attention mechanism enables the network to better allocate weights to improve the prediction accuracy. The testing results of the well-trained network in blind wells of three different regions show that our proposed method is accurate and robust in the reservoir parameters prediction task.
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