通过机器学习建模的应用,获得非常规井设计选择的视角

IF 2.6 Q3 ENERGY & FUELS Upstream Oil and Gas Technology Pub Date : 2020-07-01 DOI:10.1016/j.upstre.2020.100007
Derek Vikara , Donald Remson , Vikas Khanna
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引用次数: 13

摘要

近年来,非常规油气(O&G)储层的开发为国内和全球带来了丰富的油气供应。然而,人们仍在继续推动开发新的创新方法,以提高勘探和开采效率以及整体油井产能。通过优化完井和增产策略,以最大限度地提高油井产能,非常规油气开发有望取得实质性进展。优化井设计需要针对任何新井的独特地质条件进行定制。为了更好地评估井设计属性及其相关相互作用对非常规油气藏产能的影响,开发了基于经验数据集的多元机器学习模型。采用梯度增强回归树(GBRT)算法。GBRT对O&G应用进行了狭窄的研究,但可以进行直接的参数重要性和影响评估,以及参数相互作用效应评估。模型根据井设计和位置参数进行训练,这些参数作为可变地质条件的代表,以估计与估计的最终采收率(EUR)密切相关的两种生产力指标响应变量。所使用的数据集包括7000多口井的观测数据,覆盖了Marcellus页岩的大部分生产区域。通过交叉验证方法分析模拟结果与观测数据的拟合优度,评估模型性能并调整算法参数。研究发现,该模型对天然气当量产量测试数据的预测精度为73 - 79%,可用于指导未来的井设计和布置决策,以增加每口井的采收率,提高油田的整体采收率。研究结果表明,随着射孔段长度和每英尺水和支撑剂体积的增加,Marcellus井的性能得到了最大程度的改善;但相对生产力的提高在整个油藏中是有空间依赖性的。此外,研究发现,水和支撑剂的最佳组合对井性能的影响取决于井的位置,这强调了数据驱动模型的实用性,该模型能够广泛应用于感兴趣的油藏,在现场部署之前为量身定制的井设计方法提供信息。
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Gaining Perspective on Unconventional Well Design Choices through Play-level Application of Machine Learning Modeling

The recent development of unconventional oil and gas (O&G) reservoirs has led to an abundant hydrocarbon supply, both domestically and globally. However, there is a continued push to develop new and innovative approaches to improve exploration and extraction efficiencies and overall well productivity moving forward. Substantial improvements in unconventional O&G development are expected through optimized well completion and stimulation strategies aimed at maximizing well productivity. Optimizing well designs will require tailoring to the distinctive geologic conditions present for any newly placed well. To better evaluate the impact of well design attributes and their associated interactions on productivity in a major unconventional play, multivariate machine learning-based models that use empirical datasets were developed. A gradient boosted regression tree (GBRT) algorithm was applied. GBRT has been narrowly investigated for O&G applications but enables straightforward parametric importance and influence evaluation, as well as assessment of parameter interaction effects. Models were trained on well design and locational parameters that serve as a proxy for variable geologic conditions to estimate two types of productivity indicator response variables strongly correlated to estimated ultimate recovery (EUR). The dataset utilized consists of over 7,000 well observations that cover the majority of the productive region of the Marcellus Shale. Model performance was evaluated and algorithm parameters tuned by analyzing the goodness-of-fit for simulated results against observed data in a cross-validation approach. Models were found capable of 73–79 percent prediction accuracy on held out testing data of gas equivalent production and can be used to inform future well design and placement decisions for increasing EUR per well and improving overall field-level recovery. Study results indicate that Marcellus well performance improves most with upscaling perforated interval lengths and water and proppant volumes per foot; but relative productivity improvements are spatially dependent across the play. Additionally, optimal combinations of water and proppant on well performance were found to vary depending on well location, emphasizing the utility of data-driven models capable of broad application across a play of interest for informing tailored well design approaches prior to their field deployment.

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