Deep Learning–Based Production Forecasting and Data Assimilation in Unconventional Reservoir

SPE Journal Pub Date : 2024-07-01 DOI:10.2118/223074-pa
Bineet Kumar Tripathi, Indrajeet Kumar, Sumit Kumar, Anugrah Singh
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Abstract

Developing unconventional reservoirs such as shale oil is vital for fulfilling the need for energy consumption in the world. Oil production from shale reservoirs is still the most complicated and uncertain phenomenon because of its complex fracture networking, low matrix porosity, and permeability. Production forecasting is crucial for decision-making and tactical exploitation of subsurface resources during production. Traditional methods, such as the Arps decline model and reservoir simulation methods, face significant challenges in forecasting hydrocarbon production due to the highly nonlinear and heterogeneous nature of rocks and fluids. These methods are prone to substantial deviations in forecasting results and show limited applicability to unconventional reservoirs. Therefore, it is essential to improve the production forecasting capability with the help of a data-driven methodology. The data set for modeling is collected from two prominent shale oil-producing regions, the Eagle Ford and the Bakken. The Bakken data set is used to train and test the models, and the Eagle Ford data set is used to validate the model. The random search method was used to optimize the model parameters, and the window sliding technique was used to find a suitable window size to predict future values efficiently. The combination of different deep learning (DL) methods has designed a total of six hybrid models: gated recurrent unit (GRU), long short-term memory (LSTM), and temporal convolutional network (TCN). These models can capture the spatial and temporal patterns in the oil production data. The results concluded that the TCN-GRU model performed best statistically and computationally compared with other individual and hybrid models. The robust model can accelerate decision-making and reduce the overall forecasting cost.
非常规储层中基于深度学习的生产预测和数据同化
开发页岩油等非常规储层对于满足世界能源消费需求至关重要。由于页岩油藏具有复杂的裂缝网络、低基质孔隙度和渗透率,因此页岩油藏的石油生产仍然是最复杂和最不确定的现象。生产预测对于生产过程中的决策和地下资源的战术开采至关重要。由于岩石和流体的高度非线性和异质性,传统方法(如阿普斯递减模型和储层模拟方法)在预测碳氢化合物产量方面面临巨大挑战。这些方法容易导致预测结果出现重大偏差,而且对非常规储层的适用性有限。因此,借助数据驱动方法提高产量预测能力至关重要。用于建模的数据集收集自两个著名的页岩油产区--伊格尔福特和巴肯。巴肯数据集用于训练和测试模型,鹰福特数据集用于验证模型。随机搜索法用于优化模型参数,窗口滑动技术用于寻找合适的窗口大小,以高效预测未来值。结合不同的深度学习(DL)方法,共设计了六个混合模型:门控递归单元(GRU)、长短期记忆(LSTM)和时序卷积网络(TCN)。这些模型可以捕捉石油生产数据中的空间和时间模式。研究结果表明,与其他单独模型和混合模型相比,TCN-GRU 模型在统计和计算方面表现最佳。这种稳健的模型可以加快决策速度,降低总体预测成本。
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