人工智能在气井产量预测与优化中的应用——以中东某气田为例

J. Thatcher, Abdul Rehman, Ivan Gee, M. Eldred
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引用次数: 0

摘要

石油和天然气开采公司正在使用大量的资金和专业知识来优化生产。分析所需的信息的规模和多样性是巨大的,并且经常导致过程中涉及的团队在时间和精度之间进行优先级排序。本文提供了一个人工智能(AI)如何用于动态、有效地优化和预测气井产量的成功案例。特别是,我们专注于无监督机器学习的应用,以识别在不同潜在约束下可以导致最大产量的最佳生产参数设置。决策支持系统支持机器学习模型,可以增强未来的钻井作业,还可以帮助回答一些重要问题,例如为什么某口井或一组井的产量与其他同类型井不同,或者在不同条件下,不同井的哪些参数起作用。该模型可以在设施处理能力、配额、预算或排放等现场限制条件下进行优化。所使用的方法结合了相似性测量和无监督机器学习技术,可以有效地识别具有相似生产和行为特征的井和井群。然后使用井群来确定最有可能产生最佳产量的过程路径(特定的钻井和完井,节流尺寸,化学品等过程),并通过对井的主要特征进行额外的聚类来确定对产量或累积产量影响最大的变量。用于建立这些模型的数据集包括但不限于产气量数据(每日产量)、钻井数据(测井、流体摘要等)、完井数据(压裂、水泥胶结测井)和生产前测试数据(节流、压力等)。初步结果表明,该方法是一种可行的方法,与传统方法相比,精度达到了目标,并且代表了一种新颖的、数据驱动的方法,可以确定理想生产水平的最佳参数设置;具有在运行时执行预测和优化场景的能力。在运行时使用机器学习进行生产预测和生产优化的方法具有巨大的价值,因为它能够在使用传统方法通常需要的一小部分时间内增强领域专业知识并创建详细的研究。采用相同的方法来优化油田,以提供最可靠或最有效的参数,这将是整体资产优化的宝贵功能。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
AI for Production Forecasting and Optimization of Gas Wells: A Case Study on a Middle-East Gas Field
Oil & Gas extraction companies are using a vast amount of capital and expertise on production optimization. The scale and diversity of information required for analysis is massive and often leading to a prioritization between time and precision for the teams involved in the process. This paper provides a success story of how artificial intelligence (AI) is used to dynamically and effeciently optimize and predict production of gas wells. In particular, we focus on the application of unsupervised machine learning to identify under different potential constraints the optimal production parameter settings that can lead to maximum production. A machine learning model is supported by a decision support system that can enhance future drilling operations and also help answer important questions such as why a particular well or group of wells is producing differently than others of the same type or what kind of parameters that work on different wells in different conditions. The model can be advanced to optimize within field constraints such as facility handling capacity, quotas, budget or emmisions. The methods used were a combination of similarity measures and unsupervised machine learning techniques which were effective in identifying wells and clusters of wells that have similar production and behavioral profiles. The clusters of wells were then used to identify the process path (specific drilling and completion, choke size, chemicals, etc processes) most likely to result in optimal production and to identify the most impactful variables on production rate or cumulative production via an additional clustering of the principle charactersitics of the well. The data sets used to build these models include but are not limited to gas production data (daily volume), drilling data (well logs, fluid summary etc.), completion data (frac, cement bond logs), and pre-production testing data (choke, pressure etc.) Initial results indicate that this approach is a feasible approach, on target in terms of accuracy with traditional methods and represents a novel, data driven, method of identifying optimal parameter settings for desired production levels; with the ability to perform forecasts and optimization scenarios in run-time. The approach of using machine learning for production forecasting and production optimization in run-time has immense values in terms of the ability to augment domain expertise and create detailed studies in a fraction of the time that is typically required using traditional approaches. Building on same approach to optimise the field to deliver most reliable or most effeciently against a parameter will be an invaluable feature for overall asset optimisation.
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