基于关联规则挖掘的增产措施数据驱动分析

Rouholah Ahmadi, B. Aminshahidy, J. Shahrabi
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引用次数: 0

摘要

在上游石油工业中,有效分析井在作业周期中收集的数据对于井的性能、经济评估和良好的决策至关重要。通常,对存储在数据库中的大量数据的分析超出了传统方法的能力,例如曲线拟合和统计假设检验。数据挖掘是分析大型数据库以识别数据中的模式、异常和相关性的实践,从而获得支持决策的新的、隐藏的和有价值的知识。本文提出了一种数据驱动的方法,用于分析油气井增产作业数据,以确定导致成功作业的潜在规则或模式。本研究使用关联规则挖掘(ARM)来进行规则归纳。所提出的方法旨在挖掘所收集的数据库中频繁出现的规则,以高可信度保证增产作业的成功。最后,根据伊朗油田的一组真实数据对所提出的方法进行了评估。在过去增产作业的基础上,这些提取的规则显示了最有可能导致作业成功的条件。将所提出的方法确定的规则与使用相同数据集的决策树(DT)技术可以生成的规则进行比较。由于规则的可靠性是通过设置支持度和置信度的最小阈值来控制的,因此与DT技术相比,ARM技术可以获得更有意义和有用的规则。利用确定的规则和生成的信息,可以通过帮助设计适当的增产作业或为未来的作业选择合适的候选作业来支持作业决策。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Data-Driven Analysis of Stimulation Treatments Using Association Rule Mining
Effective analysis of data collected during the well’s operational cycle is crucial to well performance, economic evaluation, and good decision-making in the upstream oil industry. Generally, the analysis of huge volumes of data stored in databases is beyond the power of traditional methods, such as curve-fitting and statistical hypothesis testing. Data mining is the practice of analyzing large databases to identify patterns, anomalies, and correlations, within the data, leading to new, hidden, and valuable knowledge that would support decisions. This article proposes a data-driven methodology for analyzing the stimulation operations data in oil/gas wells to identify the underlying rules or patterns that lead to successful operations. Association rule mining (ARM) is used in this research for rule induction purposes. The proposed approach aims to mine the frequently occurring rules, within the collected database, that guarantee the success of stimulation operations with a high degree of confidence. Finally, the proposed approach is evaluated against a set of real data from an Iranian oil field. On the basis of past stimulation operations, these extracted rules show the conditions that are most likely to lead to a successful operation. The rules identified by the proposed approach are compared against the rules that can be generated by the decision tree (DT) technique using the same data set. As the reliability of the rules is controlled by setting the minimum thresholds on support and confidence, more significant and useful rules could be derived from ARM compared to the DT technique. Using the identified rules and generated information can support the operational decisions by assisting in the design of due stimulation jobs or in selecting the appropriate candidates for future operations.
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