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Determination of oil well production performance using artificial neural network (ANN) linked to the particle swarm optimization (PSO) tool

机译:使用链接到粒子群优化(PSO)工具的人工神经网络(ANN)确定油井生产性能

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摘要

Greater complexity is involved in the transient pressure analysis of horizontal oil wells in contrast to vertical wells, as the horizontal wells are considered entirely horizontal and parallel with the top and underneath boundaries of the oil reserve. Therefore, there is an essential need to estimate productivity of horizontal wells accurately to examine the effectiveness of a horizontal well in terms of technical and economic prospects. In this work, novel and rigorous methods based on two different types of intelligent approaches including the artificial neural network (ANN) linked to the particle swarm optimization (PSO) tool are developed to precisely forecast the productivity of horizontal wells under pseudo-steady-state conditions. It was found that there is very good match between the modeling output and the real data taken from the literature, so that a very low average absolute error percentage is attained (e.g., \u3c0.82%). The developed techniques can be also incorporated in the numerical reservoir simulation packages for the purpose of accuracy improvement as well as better parametric sensitivity analysis.
机译:与垂直井相比,水平井的瞬态压力分析涉及更大的复杂性,因为水平井被认为是完全水平的,并且与储油层的顶部和下方边界平行。因此,迫切需要准确地估计水平井的生产率,以根据技术和经济前景检查水平井的有效性。在这项工作中,开发了基于两种不同类型智能方法的新颖严谨的方法,包括与粒子群优化(PSO)工具链接的人工神经网络(ANN),以精确预测伪稳态下水平井的产能条件。发现建模输出和从文献中获得的真实数据之间有很好的匹配,因此获得了非常低的平均绝对误差百分比(例如,\ u3c0.82%)。所开发的技术也可以并入数值油藏模拟软件包中,以提高精度以及更好的参数敏感性分析。

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