利用先进的神经网络估计粘度和气/油比曲线

A. Khoukhi, Munirudine Oloso, Elshafei Mostafa, A. Abdulraheem
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引用次数: 1

摘要

在油气行业中,需要在勘探和设施设计之前对某些属性进行预先预测。粘度和气油比(GOR)是通过曲线描述的属性之一,它们的值在特定的储层压力范围内变化。然而,通常的预测方法可能导致曲线不一致,与实际曲线相比,表现出分散的行为。本文采用两种先进的人工神经网络技术来解决这一问题。它们是支持向量回归和功能网络。统计误差测量已被使用,并显示了所提出的技术的高性能。预测曲线与实际曲线吻合较好。
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Viscosity and gas/oil ratio curves estimation using advances to neural networks
In oil and gas industry, prior prediction of certain properties is needed ahead of exploration and facility design. Viscosity and gas/oil ratio (GOR), are among those properties described through curves with their values varying over a specific range of reservoir pressures. However, the usual prediction approach could result into curves that are not consistent, exhibiting scattered behaviour as compared to the real curves. In this paper two advances to artificial neural networks are implemented to solve the problem. These are Support Vector Regressors and Functional Networks. Statistical error measures have been used and showed the high performance of the proposed techniques. Moreover, the predicted curves are consistent with the actual curves.
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