Comparing Two Methods of Neural Networks to Evaluate Dead Oil Viscosity

Meysam Dabiri-Atashbeyk, M. Koolivand-Salooki, M. Esfandyari, M. Koulivand
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引用次数: 2

Abstract

Reservoir characterization and asset management require comprehensive information about formation fluids. In fact, it is not possible to find accurate solutions to many petroleum engineering problems without having accurate pressure-volume-temperature (PVT) data. Traditionally, fluid information has been obtained by capturing samples and then by measuring the PVT properties in a laboratory. In recent years, neural network has been applied to a large number of petroleum engineering problems. In this paper, a multi-layer perception neural network and radial basis function network (both optimized by a genetic algorithm) were used to evaluate the dead oil viscosity of crude oil, and it was found out that the estimated dead oil viscosity by the multi-layer perception neural network was more accurate than the one obtained by radial basis function network.
两种神经网络评价死油粘度方法的比较
储层表征和资产管理需要有关地层流体的全面信息。事实上,如果没有准确的压力-体积-温度(PVT)数据,就不可能找到许多石油工程问题的精确解决方案。传统上,流体信息是通过采集样品,然后在实验室测量PVT特性来获得的。近年来,神经网络已被应用于大量的石油工程问题。采用遗传算法优化的多层感知神经网络和径向基函数网络对原油死油粘度进行了评价,结果表明,多层感知神经网络对原油死油粘度的估计比径向基函数网络对原油死油粘度的估计更准确。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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