碳酸盐岩裂缝性储层前缘跟踪的人工智能辅助代理模型

Yanhui Zhang, I. Hoteit, Klemens Katterbauer, A. Marsala
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引用次数: 0

摘要

裂缝性碳酸盐岩储层的饱和度测绘是油气公司面临的主要挑战。储层内的裂缝通道是主要的水导体,它形成了水前缘模式,并造成了波及效率的不均匀。裂缝性油藏的流动模拟由于其固有的高非线性,通常是耗时的。采用数据驱动的方法来捕获主要流动模式,对于有效优化油藏动态和不确定性量化至关重要。我们采用人工智能(AI)辅助代理建模框架对复杂裂缝性碳酸盐岩储层进行滨水跟踪。该框架利用深度神经网络和降阶建模来实现储层动态的有效表示,以跟踪和确定裂缝网络内的流体流动模式。人工智能代理模型在合成二维裂缝型碳酸盐岩储层模型上进行了验证。训练数据集包括一系列时间步长的饱和度和压力图,使用双孔双渗(DPDP)模型生成。实验结果表明,人工智能辅助代理模型具有较强的鲁棒性,成功再现了油藏内的关键流动模式,实现了比全阶油藏模拟更短的运行时间。这表明,在历史匹配、生产优化和不确定性评估等基于模拟的油藏应用中,利用人工智能辅助代理模型具有巨大的潜力。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Artificial Intelligence Aided Proxy Model for Water Front Tracking in Fractured Carbonate Reservoirs
Saturation mapping in fractured carbonate reservoirs is a major challenge for oil and gas companies. The fracture channels within the reservoir are the primary water conductors that shape water front patterns and cause uneven sweep efficiency. Flow simulation for fractured reservoirs is typically time-consuming due to the inherent high nonlinearity. A data-driven approach to capture the main flow patterns is quintessential for efficient optimization of reservoir performance and uncertainty quantification. We employ an artificial intelligence (AI) aided proxy modeling framework for waterfront tracking in complex fractured carbonate reservoirs. The framework utilizes deep neural networks and reduced-order modeling to achieve an efficient representation of the reservoir dynamics to track and determine the fluid flow patterns within the fracture network. The AI-proxy model is examined on a synthetic two-dimensional (2D) fractured carbonate reservoir model. Training dataset including saturation and pressure maps at a series of time steps is generated using a dual-porosity dual-permeability (DPDP) model. Experimental results indicate a robust performance of the AI-aided proxy model, which successfully reproduce the key flow patterns within the reservoir and achieve orders of shorter running time than the full-order reservoir simulation. This suggests the great potential of utilizing the AI-aided proxy model for heavy-simulation-based reservoir applications such as history matching, production optimization, and uncertainty assessment.
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