用于PVT表征的混合功能网络

Munirudeen A. Oloso, M. G. Hassan, M. Bader-El-Den, J. Buick
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引用次数: 1

摘要

预测黑油的压力、体积、温度特性是成功进行石油勘探的关键步骤之一。由于来自不同地区的原油具有不同的性质,一些研究人员利用API比重对原油进行分类,对不同类别的黑油建立不同的经验相关性。然而,这种手工分组可能不一定会产生适当捕获黑油不确定性的相关性。本文提出了智能聚类对黑油进行分组,然后将聚类作为输入传递给功能网络进行预测。该混合过程比经验关联、独立函数网络和神经网络预测具有更好的性能。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Hybrid functional networks for PVT characterisation
Predicting pressure volume temperature properties of black oil is one of the key processes required in a successful oil exploration. As crude oils from different regions have different properties, some researchers have used API gravity, which is used to classify crude oils, to develop different empirical correlations for different classes of black oils. However, this manual grouping may not necessarily result in correlations that appropriately capture the uncertainties in the black oils. This paper proposes intelligent clustering to group black oils before passing the clusters as inputs to the functional networks for prediction. This hybrid process gives better performance than the empirical correlations, standalone functional networks and neural network predictions.
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