稿件标题

Seyide Hunyinbo, P. Azom, A. Ben-Zvi, J. Leung
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引用次数: 0

摘要

油田开发规划和经济分析需要可靠的沥青产量预测。油田水平的预测可以使用油藏模拟、类型曲线分析和其他(半)分析技术来完成。进行油藏模拟通常需要大量的计算,而且历史匹配解的非唯一性会导致模型预测和产量预测的不确定性。分析代理,例如Butler的模型及其各种改进,允许对输入参数进行敏感性研究,并在多种操作场景和地质统计学实现下进行预测,尽管不如油藏模拟准确。与油藏模拟类似,代理模型也可以随着获得更多数据而调整或更新。类型曲线也有助于有效预测储层动态;然而,在实践中,许多SAGD井对的性能往往偏离一组预定义的类型曲线。历史井数据是一种数字资产,可用于开发机器学习或数据驱动模型,以实现产量预测。与数值模拟器相比,这些模型的计算工作量更少,与基于Butler方程的代理模型相比,这些模型的准确性更高。此外,这些数据驱动的模型可以用于自动优化、地质不确定性的量化和“假设”情景分析。本文提出了一种新的机器学习工作流程,包括使用随机森林算法、聚类、贝叶斯更新、蒙特卡罗采样和遗传算法开发预测模型,以准确预测实际SAGD注入和生产数据,并进行优化。训练数据集包括通常可用于SAGD井对的现场数据(例如作业数据、地质数据和井设计参数)。同样重要的是,这种机器学习工作流程可以实时更新预测,应用于与预测相关的不确定性的量化,并优化蒸汽分配,使其成为开发规划和全油田优化的实用工具。据作者所知,这是第一次将机器学习算法应用于如此规模的SAGD数据集。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Manuscript Title
Field development planning and economic analysis require reliable forecasting of bitumen production. Forecasting at the field level may be done using reservoir simulations, type-curve analysis, and other (semi-)analytical techniques. Performing reservoir simulation is usually computationally expensive and the non-uniqueness of a history-matched solution leads to uncertainty in the model predictions and production forecasts. Analytical proxies, such as Butler's model and its various improvements, allow for sensitivity studies on input parameters and forecasting under multiple operational scenarios and geostatistical realizations to be conducted rather quickly, despite being less accurate than reservoir simulation. Similar to their reservoir simulation counterparts, proxy models can also be tuned or updated as more data are obtained. Type curves also facilitate efficient reservoir performance prediction; however, in practice, the performance of many SAGD well-pairs tends to deviate from a set of pre-defined type curves. Historical well data is a digital asset that can be utilized to develop machine learning or data-driven models for the purpose of production forecasting. These models involve lower computational effort compared to numerical simulators and offer better accuracy compared to proxy models based on Butler's equation. Furthermore, these data-driven models can be used for automated optimization, quantification of geological uncertainties, and "What If" scenario analysis. This paper presents a novel machine learning workflow that includes a predictive model development using the random forest algorithm, clustering, Bayesian updating, Monte Carlo sampling, and genetic algorithm for accurate forecasting of real-world SAGD injection and production data, and optimization. The training dataset involves field data that is typically available for a SAGD well-pair (e.g. operational data, geological, and well design parameters). Just as importantly, this machine learning workflow can update predictions in real-time, be applied for the quantification of the uncertainties associated with the forecasts, and optimize steam allocation, making it a practical tool for development planning and field-wide optimization. To the best of the author's knowledge, this is the first time that machine learning algorithms have been applied to a SAGD data set of this size.
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