A Two-Stage Prediction Framework for Oil and Gas Well Production Based on Classification and Regression Models

IF 5.2 3区 工程技术 Q2 ENERGY & FUELS
Dongdong Hou, Wente Niu*, Guoqing Han, Yuping Sun, Mingshan Zhang and Xingyuan Liang, 
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引用次数: 0

Abstract

Oil and gas well production forecasting is a crucial aspect of exploration and development, yet it confronts challenges posed by complex geological conditions, incomplete data sets, and nonlinear interactions among multiple factors, all of which constrain the accuracy of traditional forecasting methods. Furthermore, existing approaches often overlook the intrinsic variations in production characteristics among wells due to differences in geological settings and development histories, employing generalized models that further hinder the enhancement of forecasting effectiveness. To address these issues, this study introduces an innovative staged forecasting framework that integrates classification and regression algorithms to achieve precise production forecasting for new oil and gas wells. Leveraging historical data, the framework utilizes a 3 year cumulative production as the label and establishes reasonable thresholds to categorize wells into low-yield and high-yield groups, thereby capturing the distinct production characteristics of each category. Subsequently, advanced classification algorithms are employed to train a classification model that accurately categorizes new wells. Dedicated regression models are then trained separately for the classified low-producing and high-producing wells, aiming to further elevate the accuracy of production forecasting. The application results demonstrate that the proposed method, compared to conventional forecasting approaches, exhibits significant improvements in both prediction accuracy and practicality, offering a novel perspective and methodology for the field of oil and gas well production forecasting.

Abstract Image

基于分类和回归模型的油气井生产两阶段预测框架
油气井生产预测是勘探和开发的一个重要方面,但它面临着复杂地质条件、不完整数据集和多种因素之间非线性相互作用等挑战,所有这些都制约了传统预测方法的准确性。此外,由于地质环境和开发历史的不同,现有方法往往忽视了不同油井生产特征的内在差异,采用的通用模型进一步阻碍了预测效果的提高。为解决这些问题,本研究引入了一个创新的分阶段预测框架,该框架整合了分类和回归算法,以实现对新油气井的精确产量预测。该框架利用历史数据,将 3 年的累计产量作为标签,并设立合理的阈值,将油井分为低产量组和高产出组,从而捕捉每个类别的不同产量特征。随后,采用先进的分类算法训练分类模型,对新井进行准确分类。然后,针对分类后的低产井和高产井分别训练专用回归模型,以进一步提高产量预测的准确性。应用结果表明,与传统预测方法相比,所提出的方法在预测精度和实用性方面都有显著提高,为油气井生产预测领域提供了一种新的视角和方法。
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来源期刊
Energy & Fuels
Energy & Fuels 工程技术-工程:化工
CiteScore
9.20
自引率
13.20%
发文量
1101
审稿时长
2.1 months
期刊介绍: Energy & Fuels publishes reports of research in the technical area defined by the intersection of the disciplines of chemistry and chemical engineering and the application domain of non-nuclear energy and fuels. This includes research directed at the formation of, exploration for, and production of fossil fuels and biomass; the properties and structure or molecular composition of both raw fuels and refined products; the chemistry involved in the processing and utilization of fuels; fuel cells and their applications; and the analytical and instrumental techniques used in investigations of the foregoing areas.
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