Ibrahim Ahmed Farid, Alarifi Sulaiman A, Elkatatny Salaheldin
Department of Petroleum Engineering and Geosciences, King Fahd University of Petroleum & Minerals, Dhahran 31261, Saudi Arabia.
Center for Integrative Petroleum Research, King Fahd University of Petroleum & Minerals, Dhahran 31261, Saudi Arabia.
Comput Intell Neurosci. 2022 Jun 21;2022:7084514. doi: 10.1155/2022/7084514. eCollection 2022.
The completion design of multistage hydraulic fractured wells including the cluster spacing injected proppant and slurry volumes has shown a great influence on the well production rates and estimated ultimate recovery (EUR). EUR estimation is a critical process to evaluate the well profitability. This study proposes the use of different machine learning techniques to predict the EUR as a function of the completion design including the lateral length, the number of stages, the total injected proppant and slurry volumes, and the maximum treating pressure measured during the fracturing operations. A data set of 200 well production data and completion designs was collected from oil production wells in the Niobrara shale formation. Artificial neural network (ANN) and random forest (RF) techniques were implemented to predict EUR from the completion design. The results showed a low accuracy of direct prediction of the EUR from the completion design. Hence, an intermediate step of estimating the initial well production rate ( ) from the completion data was carried out, and then, the and the completion design were used as input parameters to predict the EUR. The ANN and RF models accurately predicted the EUR from the completion design data and the estimated . The correlation coefficient () values between actual EUR and predicted EUR from the ANN model were 0.96 and 0.95 compared with 0.99 and 0.95 from the RF model for training and testing, respectively. A new correlation was developed based on the weight and biases from the optimized ANN model with an value of 0.95. This study provides ML application with an empirical correlation to predict the EUR from the completion design parameters at an early time without the need for complex numerical simulation analysis. The developed models require only the initial flow rate along with the completion design to predict EUR with high certainty without the need for several months of production similar to the DCA models.
多级水力压裂井的完井设计,包括簇间距、注入支撑剂和浆体体积,已显示出对油井产率和估计最终采收率(EUR)有很大影响。EUR估计是评估油井盈利能力的关键过程。本研究提出使用不同的机器学习技术来预测EUR,将其作为完井设计的函数,完井设计包括水平段长度、段数、注入支撑剂和浆体的总体积,以及压裂作业期间测得的最大处理压力。从尼奥布拉拉页岩地层的油井中收集了200口油井生产数据和完井设计的数据集。采用人工神经网络(ANN)和随机森林(RF)技术从完井设计中预测EUR。结果表明,从完井设计直接预测EUR的准确性较低。因此,进行了从完井数据估计初始油井产率( )的中间步骤,然后,将 和完井设计用作输入参数来预测EUR。ANN和RF模型从完井设计数据和估计的 中准确预测了EUR。ANN模型实际EUR与预测EUR之间的相关系数()值在训练和测试时分别为0.96和0.95,而RF模型分别为0.99和0.95。基于优化后的ANN模型的权重和偏差开发了一种新的相关性,其 值为0.95。本研究为机器学习应用提供了一种经验相关性,以便在早期从完井设计参数预测EUR,而无需进行复杂的数值模拟分析。所开发的模型仅需要初始流速以及完井设计,就能高度确定地预测EUR,而无需像DCA模型那样需要数月的生产数据。