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Investigation of Gas Transport in Shale Reservoirs Using Multiscale Modeling and Principal Component Analysis

机译:使用多尺度建模和主成分分析研究页岩储层气体运输研究

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Upscaling of gas transport in shales is challenging because of the multiple scales of transport processes. Rock characterization using nanometer-scale digital rock technologies can capture fundamental geometrical and transport properties, but the obtained information is usually highly localized and contains significant uncertainties. An effective upscaling method is thus needed to propagate the pore-scale information across multiple spatial scales. A modified dual-porosity model was proposed to study multiscale gas transport in shales. The model consists of two domains, a kerogen domain, and an inorganic matrix. Within kerogen, gas transport is dominated by molecular diffusion and nonlinear adsorption and desorption. Within inorganic matrix, gas transport is dominated by convection and diffusion. A massexchange-rate coefficient is used to describe gas transport between kerogen and inorganic matrix. The modified dual-porosity model was used to perform history matching of a pressure-pulse-decay experiment in the laboratory. The four input parameters were absolute permeability and diffusivity within inorganic matrix, mass-exchange-rate coefficient between kerogen and inorganic matrix, and gas desorption-rate coefficient within kerogen; these parameters were solved using nonlinear optimization. The long tail of the pressure decline curve was well-captured by the model, implying it accounted for both fast-and slow-transport mechanisms. Permeability enhancement resulting from slip boundary and Knudsen diffusion was limited due to the relatively high pressure. Sensitivity analysis was conducted to study the impact of input variation on model output. There was a competing relationship between convection and diffusion within inorganic matrix; fast convection hindered diffusive transport, while with slow convection diffusive transport significantly affected pressure decline. Therefore, diffusive transport within inorganic matrix cannot be simply ignored. The effects of gas transport within kerogen and between kerogen and inorganic matrix depended significantly on the transport rate within inorganic matrix; when convection within inorganic matrix was slow, the transport processes within kerogen did not affect pressure decline in the short term; in contrast, when convection within inorganic matrix was fast, the transport processes within kerogen significantly affected the pressure decline in the short term. Thus, the impact of the transport processes within the slower domain depends primarily on the transport rate within the faster domain; this is referred to as hierarchical dependence. The principal component analysis (PCA) method was applied to study the continuous movement of the pressure decline curve resulting from input parameter variation; increased convective and diffusive transport rates within inorganic pores expedited pressure decline; conversely, increased mass-exchange-rate and desorption-rate coefficients slowed the pressure decline in the short term, but expedited pressure decline in the long term, when convection within inorganic matrix was fast. The modified dual-porosity model successfully captured the pressure decline curve measured in the laboratory. The interaction and interdependence between different transport processes were interpreted using the mechanisms of competing relationship and hierarchical dependence. PCA simultaneously processed hundreds of parameter realizations and the corresponding pressure decline curves; the ergodicity requirement was thus satisfied and the principal components of continuous curve movement can be extracted. The new modeling and analysis methods can advance the understanding of multiscale gas transport and consequently benefit storage evaluation and production prediction for shale gas recovery.
机译:由于运输过程的多种尺度,Shales中的气体运输升高是具有挑战性的。使用纳米级数字岩石技术的岩石表征可以捕获基本几何和运输特性,但获得的信息通常是高度本地化的并且包含显着的不确定性。因此需要一种有效的上升方法来跨多个空间尺度传播孔隙尺度信息。提出了一种改进的双孔隙度模型,以研究Hualses Muliscale燃气运输。该模型由两个域,一个角化域域和无机基质组成。在Kerogen内,气体传输通过分子扩散和非线性吸附和解吸来实现。在无机基质中,气体运输通过对流和扩散来支配。 Massexchange速率系数用于描述基因原和无机基质之间的气体输送。改进的双孔隙度模型用于执行实验室压力脉冲衰减实验的历史匹配。四种输入参数是无机基质中的绝对渗透性和扩散性,在基因原和无机基质之间的批量交换率系数,并且在基因中的气体解吸速度系数;使用非线性优化解决了这些参数。压力下降曲线的长尾被模型拍摄,暗示它占快速和慢速传输机制。由于相对高的压力,由滑动边界和knudsen扩散产生的渗透率提高受到限制。进行了敏感性分析,以研究输入变化对模型输出的影响。无机基质中对流与扩散之间存在竞争关系;快速对流阻碍扩散运输,而对对流慢速传输的速度显着影响,压力下降显着。因此,无机基质内的扩散运输不能简单地忽略。在基因酮内和干原和无机基质之间的气体传输的影响显着依赖于无机基质中的运输速率;当无机基质中的对流缓慢时,在后宫内的运输过程不会影响短期内的压力下降;相比之下,当无机基质中的对流快速时,角叶内的运输过程显着影响了短期内的压力下降。因此,运输过程在较慢结构域内的影响主要取决于更快的域内的运输速率;这被称为分层依赖性。应用主成分分析(PCA)方法来研究输入参数变化引起的压力下降曲线的连续运动;在无机孔隙中增加的对流和扩散运输率加速压力下降;相反,随着无机基质内的对流快速,短期内,额度汇率和解吸速率系数增加减缓了短期压力下降,但长期加速压力下降。改性双孔隙度模型成功地捕获了实验室中测量的压力下降曲线。使用竞争关系的机制和分层依赖的机制来解释不同传输过程之间的相互作用和相互依存。 PCA同时处理数百个参数实现和相应的压力下降曲线;因此,满足遍历性要求,并且可以提取连续曲线运动的主要成分。新的建模和分析方法可以推进对多尺度气体运输的理解,从而效益存储评估和对页岩气回收的生产预测。

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