利用人工神经网络预测碳酸盐岩储层的压裂压力

IF 1.3 4区 工程技术 Q3 CHEMISTRY, ORGANIC
Ali Khaleel Faraj, Ameen K. Salih, Mohammed A. Ahmed, Farqad A. Hadi, Ali Nahi Abed Al-Hasnawi, Ali Faraj Zaidan
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引用次数: 0

摘要

准确估算压裂压力是油田行业取得成功的关键因素。压裂压力有多种用途,包括增加产量和注入过程,因此必须精确确定。本研究旨在利用人工智能技术预测伊拉克油田的压裂压力,此类研究对于优化油田生产和降低风险至关重要。人工智能(AI)方法采用了一个数据集,其中包括不同测井参数的约 13 000 个数据点。输入层采用输入参数(中子、密度、伽马射线、岩石强度(UCS)、真实垂直深度(TVD)、杨氏模量(E)和泊松比(v))。所得结果的 R2 值应为 0.86。最佳方法需要利用现成的测井数据,包括声波测井压缩和剪切(DTC、DTS),R 方值为 0.84。人工神经网络(ANN)比经验模型更有优势,因为它们需要的重要数据只有地表钻井参数,而地表钻井参数在任何一口井中都很容易获得和使用。此外,基于人工神经网络(ANN)的新压裂压力相关性已经建立,可以准确预测压裂压力。研究结果可为石油和天然气行业准确、高效地预测压裂压力提供有价值的见解。
本文章由计算机程序翻译,如有差异,请以英文原文为准。

Fracture Pressure Prediction in Carbonate Reservoir Using Artificial Neural Networks

Fracture Pressure Prediction in Carbonate Reservoir Using Artificial Neural Networks

Accurately estimating fracture pressure is a critical factor in the success of the oil field industry. Fracture pressure is used in various applications, including increasing production and injection processes, making it essential to determine precisely. This study aims to predict the fracture pressure for Iraqi oil field using artificial intelligence techniques, such studies are crucial in optimizing oil field production and minimizing risks. Artificial intelligence (AI) methodologies employed a dataset comprising approximately 13 000 data points for different logs parameters. The input layer is employing the input parameter (neutron, density, gamma ray, rock strength (UCS), true vertical depth (TVD), Young’s modulus (E), and Poisson ratio (v). The obtained results should be remarkable R2 of 0.86. The optimal approach entails utilizing readily available log data, including sonic logs compression and shear (DTC, DTS) commendable R-squared value of 0.84. Artificial neural networks (ANN) have the upper hand over empirical models, as they require important data, only surface drilling parameters, which are easily accessible and use it from any well. In addition, a new fracture pressure correlation depended on artificial neural networks (ANN) has been created, which can accurately predict fracture pressure. The findings of the study can provide valuable insights for the oil and gas industry in predicting fracture pressure accurately and efficiently.

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来源期刊
Petroleum Chemistry
Petroleum Chemistry 工程技术-工程:化工
CiteScore
2.50
自引率
21.40%
发文量
102
审稿时长
6-12 weeks
期刊介绍: Petroleum Chemistry (Neftekhimiya), founded in 1961, offers original papers on and reviews of theoretical and experimental studies concerned with current problems of petroleum chemistry and processing such as chemical composition of crude oils and natural gas liquids; petroleum refining (cracking, hydrocracking, and catalytic reforming); catalysts for petrochemical processes (hydrogenation, isomerization, oxidation, hydroformylation, etc.); activation and catalytic transformation of hydrocarbons and other components of petroleum, natural gas, and other complex organic mixtures; new petrochemicals including lubricants and additives; environmental problems; and information on scientific meetings relevant to these areas. Petroleum Chemistry publishes articles on these topics from members of the scientific community of the former Soviet Union.
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