Hassan Amjed, Aljawad Murtada Saleh, Mahmoud Mohamed
College of Petroleum Engineering & Geosciences, King Fahd University of Petroleum & Minerals, Dhahran 31261, Saudi Arabia.
ACS Omega. 2021 May 18;6(21):13654-13670. doi: 10.1021/acsomega.1c00809. eCollection 2021 Jun 1.
Acid fracturing is one of the most effective techniques for improving the productivity of naturally fractured carbonate reservoirs. Natural fractures (NFs) significantly affect the design and performance of acid fracturing treatments. However, few models have considered the impact of NFs on acid fracturing treatments. This study presents a simple and computationally efficient model for evaluating acid fracturing efficiency in naturally fractured reservoirs using artificial intelligence-based techniques. In this work, the productivity enhancement due to acid fracturing is determined by considering the complex interactions between natural and hydraulic fractures. Several artificial intelligence (AI) techniques were examined to develop a reliable predictive model. An artificial neural network (ANN), a fuzzy logic (FL) system, and a support vector machine (SVM) were used. The developed model predicts the productivity improvement based on reservoir permeability and geomechanical properties (e.g., Young's modulus and closure stress), natural fracture properties, and design conditions (i.e., acid injection rate, acid concentration, treatment volume, and acid types). Also, several evaluation indices were used to evaluate the model reliability including the correlation coefficient, average absolute percentage error, and average absolute deviation. The AI model was trained and tested using more than 3100 scenarios for different reservoir and treatment conditions. The developed ANN model can predict the productivity improvement with a 3.13% average absolute error and a 0.98 correlation coefficient, for the testing (unseen) data sets. Moreover, an empirical equation was extracted from the optimized ANN model to provide a direct estimation for productivity improvement based on the reservoir and treatment design parameters. The extracted equation was evaluated using validation data where a 4.54% average absolute error and a 0.99 correlation coefficient were achieved. The obtained results and degree of accuracy show the high reliability of the proposed model. Compared to the conventional simulators, the developed model reduces the time required for predicting the productivity improvement by more than 60-fold; therefore, it can be used on the fly to select the best design scenarios for naturally fractured formations.
酸压裂是提高天然裂缝性碳酸盐岩油藏产能的最有效技术之一。天然裂缝对酸压裂处理的设计和效果有显著影响。然而,很少有模型考虑天然裂缝对酸压裂处理的影响。本研究提出了一种简单且计算效率高的模型,用于利用基于人工智能的技术评估天然裂缝性油藏中的酸压裂效率。在这项工作中,通过考虑天然裂缝和水力裂缝之间的复杂相互作用来确定酸压裂导致的产能提高。研究了几种人工智能(AI)技术以开发可靠的预测模型。使用了人工神经网络(ANN)、模糊逻辑(FL)系统和支持向量机(SVM)。所开发的模型基于储层渗透率和地质力学性质(如杨氏模量和闭合应力)、天然裂缝性质以及设计条件(即酸注入速率、酸浓度、处理体积和酸类型)来预测产能提高。此外,使用了几个评估指标来评估模型可靠性,包括相关系数、平均绝对百分比误差和平均绝对偏差。该AI模型针对不同的油藏和处理条件使用超过3100个场景进行了训练和测试。对于测试(未见)数据集,所开发的ANN模型能够以3.13%的平均绝对误差和0.98的相关系数预测产能提高。此外,从优化后的ANN模型中提取了一个经验方程,以基于油藏和处理设计参数直接估计产能提高。使用验证数据对提取的方程进行了评估,得到了4.54%的平均绝对误差和0.99的相关系数。所获得的结果和精度表明了所提出模型的高可靠性。与传统模拟器相比,所开发的模型将预测产能提高所需的时间减少了60多倍;因此,它可即时用于为天然裂缝性地层选择最佳设计方案。