基于递减曲线分析模型和生产数据的深度学习气井动态预测

IF 9 1区 地球科学 Q1 ENERGY & FUELS
Liang Xue, Jiabao Wang, Jiangxia Han, Minjing Yang, Mpoki Sam Mwasmwasa, Felix Nanguka
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引用次数: 0

摘要

:气井动态预测对于估算天然气藏的最终采收率至关重要。然而,基于物理的数值模拟方法需要花费大量精力来建立一个稳健的模型,而该领域中使用的下降曲线分析方法是基于某些假设的,因此由于严格的工作条件,其应用受到限制。在这项工作中,提出了一种由递减曲线分析模型和生产数据共同驱动的深度学习模型,用于气井的生产性能预测。由于气井生产数据的时间序列特征,选择长短期记忆神经网络来建立人工智能的体系结构。现有的递减曲线分析模型首先隐式地纳入神经网络的训练过程,然后与实际气井产量历史数据一起用于驱动神经网络的构建。通过应用所提出的创新模型来分析基于现场数据的常规气井和致密气井的性能预测,研究表明,所提出的由下降曲线分析模型和生产数据联合驱动的长短期记忆神经网络深度学习模型,可以有效地提高传统的由生产数据单独驱动的长短段记忆神经网络模型的可解释性和预测能力。与数据驱动模型相比,对于致密气井和碳酸盐气井,联合驱动模型可以分别将平均绝对误差降低42.90%和13.65%。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Gas well performance prediction using deep learning jointly driven by decline curve analysis model and production data
: The prediction of gas well performance is crucial for estimating the ultimate recovery rate of natural gas reservoirs. However, physics-based numerical simulation methods require a significant effort to build a robust model, while the decline curve analysis method used in this field is based on certain assumptions, hence its applications are limited due to the strict working conditions. In this work, a deep learning model driven jointly by the decline curve analysis model and production data is proposed for the production performance prediction of gas wells. Due to the time-series characteristics of gas well production data, the long short-term memory neural network is selected to establish the architecture of artificial intelligence. The existing decline curve analysis model is first implicitly incorporated into the training process of the neural network and then used to drive the neural network construction along with the actual gas well production historical data. By applying the proposed innovative model to analyze the conventional and tight gas well performance predictions based on field data, it is demonstrated that the proposed long short-term memory neural network deep learning model driven jointly by the decline curve analysis model and production data can effectively improve the interpretability and predictive ability of the traditional long short-term memory neural network model driven by production data alone. Compared with the data-driven model, the jointly driven model can reduce the mean absolute error by 42.90% and 13.65% for a tight gas well and a carbonate gas well, respectively.
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来源期刊
Advances in Geo-Energy Research
Advances in Geo-Energy Research natural geo-energy (oil, gas, coal geothermal, and gas hydrate)-Geotechnical Engineering and Engineering Geology
CiteScore
12.30
自引率
8.50%
发文量
63
审稿时长
2~3 weeks
期刊介绍: Advances in Geo-Energy Research is an interdisciplinary and international periodical committed to fostering interaction and multidisciplinary collaboration among scientific communities worldwide, spanning both industry and academia. Our journal serves as a platform for researchers actively engaged in the diverse fields of geo-energy systems, providing an academic medium for the exchange of knowledge and ideas. Join us in advancing the frontiers of geo-energy research through collaboration and shared expertise.
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