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Automating Petrophysics and Decline Curves Analysis for Performance Prediction at the Basin-Scale:Application to the Powder River Basin

机译:盆地尺度性能预测的自动化岩石物理学和下降曲线分析:应用于粉末河流域

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This study aims to demonstrate that EURs in unconventional plays can be accurately predicted utilizing a neural network trained on petrophysical,engineering,and well design data.Additionally,we aim to demonstrate that probabilistic petrophysical workflows can be automated,deployed at the basin scale,and deliver better results at scale than traditional workflows.The results from the EUR prediction model show that on an individual well basis EURs from the three formations can be predicted within 38-56% of the DCA-derived results in the test data set.This range is tighter than the estimated range between the P90 and P10 results from a multi-well type curve analysis.Furthermore,when the results from any formation are taken in total,the predictions showed significantly better accuracy with cumulative predicted volumes within 1.4-8.7% of the DCA-derived results.This demonstrates the efficacy of the model for both single-well predictions and on a cumulative basis.The results show that both single-well precision and overall precision are degraded when using deterministic or cutoffs-based workflows for reservoir characterization.This suggests that there is a significant value add associated with performing a more advanced petrophysical workflow utilizing a probabilistic petrophysical workflow.This work also demonstrates that probabilistic petrophysical models can be deployed at scale and extensively automated,with model run time of 1 minute/100 wells,therefore unlocking the ability of petrophysicists to better integrate best-in-class methods into geoscience workflows.
机译:本研究旨在表明,可以准确地预测在岩石物理,工程和良好设计数据上培训的神经网络,可以准确地预测欧元.Aditionally,我们的目标是证明概率岩石物理工作流程可以自动化,部署在盆地规模上,以及以比传统的工作流程的规模提供更好的结果。欧元预测模型的结果表明,在三个地层的个人良好基础上,可以在测试数据集中的DCA派生结果的38-56%内预测。这个范围比P90和P10之间的估计范围更紧凑,来自多孔型曲线分析。当总共拍摄任何形成的结果时,预测显示出明显更好的准确性,在1.4-8.7%之内累积预测量明显更好。 DCA衍生的结果。这证明了模型对单井预测和累积的效果。结果表明SI在使用基于确定性或截止的基于储层表征的基于确定性或截止值的工作流程时,可以缩小精度和整体精度。这表明有一个显着的价值添加与利用概率的岩石物理工作流程进行更先进的岩手工作流程。这也证明了概率岩石物理模型可以以尺度和广泛的自动部署,模型运行时间为1分钟/ 100孔,因此解锁岩石物理学家更好地将最佳方法集成到地球科学工作流程中。

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