砂岩储层孔隙度和含水饱和度的函数网络估计

G. Hamada
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引用次数: 0

摘要

准确测定孔隙度和含水饱和度对砂岩油藏油藏储量评价和开发规划至关重要。本研究的目的是提供一种改进的智能方法,利用功能网络,利用砂岩储层的实际现场数据,从测井数据中估计孔隙度和含水饱和度,这些测井数据很难获得可靠的测井数据。所提出的方法利用了适当的测井和岩心测量。保留部分可用数据用于验证含水饱和度和孔隙度的预测。本文提出了一种从常规井测量中直接估计这两个重要参数的新方法。最近提出的功能网络技术应用于快速准确地预测这些参数,分别使用6个和5个基本测井数据作为估计孔隙度和含水饱和度的数据。泛函网络是传统前馈神经网络的推广,克服了传统神经网络技术的许多缺点。使用从中东地区的两口井收集的数据对所提出的功能网络进行了训练。在砂岩储层的案例研究中,使用该智能技术获得的结果表明,根据岩心样品的孔隙度和含水饱和度值,该技术快速准确。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Sandstone Reservoirs Porosity and Water Saturation Estimation Using Functional Network Techniques
An accurate determination of porosity and water saturation is vital for evaluating an oil reserve and proposing a development plan for developed sandstone reservoir. The objective of this study is to provide an improved intelligent approach the use of functional networks to estimate porosity and water saturation from well log using real field data in sandstone reservoir where it becomes difficult to acquire reliable well logging data. The proposed methodology makes use of appropriate well logs and core measurements. A portion of the data available was retained for verification of the prediction of water saturation and porosity. This paper presents a novel method for estimating these two important parameters directly from conventional well measurements. The recently proposed Functional Networks technique is applied for rapid and accurate prediction of these parameters, using six and five basic well log measurements as data for estimating porosity and water saturation respectively. Functional network is a generalization of the conventional Feed Forward Neural Networks, which overcome many of the drawbacks of the conventional neural network techniques. The proposed functional network was trained using data gathered from two wells in the Middle East region. Results obtained from this case study of sandstone reservoir using the proposed intelligent technique have shown to be fast and accurate referring to core samples porosity and water saturation values.
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