A Practical Method for Estimating Stimulated Reservoir Volume in Shale Gas Reservoirs: Coupling Knudsen Diffusion and Surface Diffusion

Y. Miao, John W. Lee, Chaojie Zhao, Wenjing Lin, Hang Li, Yucui Chang, Yunjian Zhou, Xiangfang Li
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引用次数: 2

Abstract

Estimating stimulated reservoir volume (SRV) in shale gas reservoirs with high accuracy has been of more concern to oil and gas industries. However, current SRV prediction methods are of limited use for characterizing critical flow mechanisms. To make more accurate prediction of SRV in shale gas reservoirs, multiple mechanisms cannot be ignored. In this paper, we develop a novel analytical model to accurately estimate the volume of SRV in shale gas reserviors by incorporating both Knudsen diffusion of bulk gas and surface diffusion of adsorbed gas directly into the model. Depending on flow discrepancies from conventional reservoirs, the modified pseudo-pressure equation to account for these critical transport mechanisms are further constructed. Predicted values of SRV by using this new model are in fair agreement with values from the CMG simulation. Compared with related research, it is the first time that both Knudsen diffusion of bulk gas and surface diffusion of adsorbed gas are taken into consdertion to analyze and estimate the volume of SRV in shale gas reservoirs. A clear workflow for implementation of this method is presented. Compared with the common numerical reservoir simulators, this approach is easier to setup and less data-intensive.
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一种估算页岩气储层增产体积的实用方法:耦合Knudsen扩散和表面扩散
页岩气储层增产体积(SRV)的高精度估算一直是油气行业关注的问题。然而,目前的SRV预测方法在描述临界流动机制方面应用有限。为了更准确地预测页岩气储层的SRV,多重机理不容忽视。在本文中,我们建立了一个新的分析模型,通过将整体气的Knudsen扩散和吸附气的表面扩散直接纳入模型,来准确估计页岩气储层中SRV的体积。根据常规油藏的流量差异,进一步构建了修正的伪压力方程来解释这些关键的输运机制。利用该模型预测的SRV值与CMG仿真值吻合较好。与相关研究相比,首次同时考虑整体气的Knudsen扩散和吸附气的表面扩散,对页岩气储层SRV体积进行分析和估算。给出了该方法的实现流程。与普通油藏数值模拟相比,该方法更容易设置,数据量更少。
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