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A large scale network model to obtain interwell formation characteristics

机译:大规模网络模型,以获得适合的形成特征

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摘要

Limited data availability and poor data quality make it difficult to characterise many reservoirs. For waterflooded reservoirs, production and injection data provide information from which injector-to-producer connections can be inferred. In this research, well locations and injection and production rate data are used to develop a reservoir-scale network model. A Voronoi mesh divides the reservoir into node volumes, each of which contains a well. Bonds connect the nodes with conductance values that are inferred from the rate data. The inverse problem minimises the mean-squared difference between computed and observed production data by adjusting the conductances between nodes. A derivative free optimisation algorithm is used to minimise the mean-squared difference. This coarse network model approach is fast and efficient because it solves for a small number of unknowns and is less underdetermined than correlation-based methods. The reservoir network model has promise as a reservoir description tool because of its modest data requirements, flexibility, efficiency, interpretability, and dynamism.
机译:有限的数据可用性和数据质量差使得许多水库难以表征。对于水机形式的水库,生产和注射数据提供可以推断出来的喷射器到生产者连接的信息。在本研究中,井位置和注射和生产率数据用于开发储层级网络模型。 voronoi网格将库划分为节点卷,每个卷包含井。键将使用从速率数据推断的电导值连接节点。逆问题通过调整节点之间的电导最小化计算和观察到的生产数据之间的平均平方差。衍生自由优化算法用于最小化平均平均差异。这种粗略的网络模型方法是快速且有效的,因为它解决了少量未知数并且不如基于相关的方法较少。由于其适度的数据需求,灵活性,效率,解释性和动态,储层网络模型作为储层描述工具。

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