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Geology Driven EUR Prediction Using Deep Learning

机译:地质驱动欧元预测使用深度学习

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We present a geology driven deep learning Estimated Ultimate Recovery (EUR) prediction model for multi-stage hydraulically fractured horizontal wells in tight gas and oil reservoirs. The novel approach was made possible by recent development in the field of deep learning and the use of big data (200,000 geological data points and 800 wells). A Deep Neural Network (DNN) was trained to learn the relationship between geology and the average EUR (estimated by decline analysis). The model was validated on wells from other geological regions to show its generalization capabilities. The DNN model we present significantly outperforms both volumetric estimates and type curve region averages (even on highly developed acreage). It generalizes well across geological areas with limited loss in accuracy. On a test region not used during model creation it produces a mean absolute percentage error of 33.1% compared to 69.7% for type curve averages. Oil and gas recovery are treated separately and the model outputs the oil to gas ratio. The model was trained and tested on data from the Eagle Ford Shale but the general methodology should be applicable to other resource plays. The model is applicable in the exploration stage, as it only requires geological data. This is important as type curve regions require production data to be constructed, and are thus not available until the area has been in production for some time.
机译:我们提出了一种地质驱动的深度学习估计的终极回收(EUR)预测模型,用于狭长的气体和储物液中的多级液压水平井。最近在深度学习领域的发展和使用大数据(20,000个地质数据点和800孔),可以实现新的方法。深度神经网络(DNN)受过培训,以学习地质与平均欧元之间的关系(通过拒绝分析估计)。从其他地质区域的井上验证了该模型,以显示其泛化能力。我们呈现的DNN模型显着优于体积估计和类型曲线区域平均值(即使在高度效率的面积上)。它跨越跨性能有限的地质区域概括。在模型创建期间未使用的测试区域,它产生33.1%的平均绝对百分比误差,而曲线平均值为69.7%。单独处理油和气体回收,该模型将油输出到气体比例。该模型受到培训并测试了Eagle Ford Sheale的数据,但一般方法应该适用于其他资源剧本。该模型适用于勘探阶段,因为它只需要地质数据。这很重要,因为类型曲线区域需要构造的生产数据,因此在该区域在生产中一段时间​​内没有。

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