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Artificial-Intelligence-Based, Automated Decline Curve Analysis for Reservoir Performance Management: A Giant Sandstone Reservoir Case Study

机译:基于人工智能的,水库绩效管理自动下降曲线分析:巨型砂岩储层案例研究

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Decline curve analysis (DCA) is one of the most widely used forms of data analysis that evaluates well behavior and forecasts future well and field production and reserves. Usually, this practice is done manually, making analysis of assets with a large number of wells cumbersome and time-consuming. Moreover, results are subject to alternate interpretations, mostly as a function of experience and objectives of the evaluator. In this work, despite the common practice of the industry, i.e. manual DCA, we developed and deployed cutting-edge technologies that intelligently apply DCA methods to any number of wells in an unbiased, systematic, intelligent, and automated fashion. The tool reads production data, and multidisciplinary well information (e.g., drilling and completion data, geological data, artificial lift information, etc.). Then it performs cluster analysis using unsupervised machine learning and pattern recognition to partition the dataset into internally homogeneous and externally distinct groups. This cluster analysis is later used for type-curve generation for wells with short production history. For wells with long enough history, the tool first detects production events through a fully automated event detection algorithm without any human interference. Since production events are highly correlated with real-time events, it also cross-validates with the operating conditions. Next, the last event is selected, and a decline curve is fitted using advanced nonlinear optimization and minimization algorithms. This leads to a reliable and unbiased prediction. For each cluster, a type curve is computed that truly captures the underlying production behavior of the wells that belong to the same group or cluster, and then is applied to the wells with short production history within that cluster. To capture the probabilistic nature of such analysis and quantify the inherent uncertainty, we extended the method to a probabilistic DCA using quantile regression. We successfully deployed this technology/tool to a giant Middle Eastern reservoir, with more than 2,000 wells and 70 years of production. Our predicted aggregated field decline rate is in good agreement with the client's reservoir simulation results run under the “do-nothing” scenario. While performing traditional DCA for such a field would require several weeks and significant resources, our automated solution integrates all real-life events/information and provides a comprehensive analysis in field, cluster and well level. In addition, our results are “unbiased,” as it is not subject to human errors or evaluator's interpretations. Our robust and intelligent DCA allows for exhaustive evaluation of production trends and opportunities in fields across time, production zones, well types, and any combinations of the above. The results demonstrate the effectiveness of the automated DCA to rapidly execute decline curve analysis for a large number of wells. The accuracy is improved significantly through automatic event detection, cross-validation of events, curve fitting optimization, quantile regression, and cluster-based type-curving.
机译:衰落曲线分析(DCA)是最广泛使用的数据分析形式之一,可评估井的行为和预测未来井和现场生产和储备。通常,这种做法是手动完成的,对具有大量井有麻​​烦和耗时的资产进行分析。此外,结果可能受到替代解释,主要是作为评估者的经验和目标的函数。在这项工作中,尽管行业的常见做法,即手动DCA,我们开发并部署了智能地将DCA方法应用于任何数量的井,以无偏,系统,智能和自动的方式应用于任何数量的井。该工具读取生产数据和多学科井信息(例如,钻井和完成数据,地质数据,人工升力信息等)。然后,它使用无监督的机器学习和模式识别来执行群集分析,以将数据集分为内部同质和外部不同的组。此集群分析后来用于井的类型曲线,具有短期生产历史。对于足够长的历史悠久的井,该工具首先通过完全自动化的事件检测算法检测生产事件,没有任何人的干扰。由于生产事件与实时事件高度相关,因此它还与操作条件交叉验证。接下来,选择最后一个事件,使用高级非线性优化和最小化算法拟合下降曲线。这导致可靠且无偏不倚的预测。对于每个群集,计算类型曲线,确实捕获属于同一组或群集的井的底层的生产行为,然后应用于该群集内的短期生产历史的井。为了捕获这种分析的概率性质并量化固有的不确定性,我们使用量子回归将该方法扩展到概率DCA。我们成功部署了这项技术/工具到巨大的中东地区,拥有2000多家井和70年的生产。我们预测的聚合场下降率与客户的水库仿真结果符合良好,并在“Do-NOLE”情景下运行。在执行传统DCA的同时,为此类领域需要几周和大量资源,我们的自动化解决方案集成了所有现实生活事件/信息,并在现场,集群和井中提供了全面的分析。此外,我们的结果是“无偏见”,因为它不受人为错误或评估员的解释。我们的强大和智能化DCA允许在时间,生产区域,井类型和上述任何组合中的生产趋势和机遇的详尽评估。结果证明了自动化DCA迅速执行曲线分析的大量井的有效性。通过自动事件检测,事件交叉验证,曲线拟合优化,定量回归和基于群集的类型弯曲,精度显着提高了精度。

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