Department of Petroleum Engineering, Petroleum University of Technology (PUT), Ahwaz, Iran.
Department of Petrophysics Engineering, National Iranian South Oil Company (NISOC), Ahwaz, Iran.
Sci Rep. 2022 Jul 8;12(1):11618. doi: 10.1038/s41598-022-15869-1.
The need to determine permeability at different stages of evaluation, completion, optimization of Enhanced Oil Recovery (EOR) operations, and reservoir modeling and management is reflected. Therefore, various methods with distinct efficiency for the evaluation of permeability have been proposed by engineers and petroleum geologists. The oil industry uses acoustic and Nuclear Magnetic Resonance (NMR) loggings extensively to determine permeability quantitatively. However, because the number of available NMR logs is not enough and there is a significant difficulty in their interpreting and evaluation, the use of acoustic logs to determine the permeability has become very important. Direct, continuous, and in-reservoir condition estimation of permeability is a unique feature of the Stoneley waves analysis as an acoustic technique. In this study, five intelligent mathematical methods, including Adaptive Network-Based Fuzzy Inference System (ANFIS), Least-Square Support Vector Machine (LSSVM), Radial Basis Function Neural Network (RBFNN), Multi-Layer Perceptron Neural Network (MLPNN), and Committee Machine Intelligent System (CMIS), have been performed for calculating permeability in terms of Stoneley and shear waves travel-time, effective porosity, bulk density and lithological data in one of the naturally-fractured and low-porosity carbonate reservoirs located in the Southwest of Iran. Intelligent models have been improved with three popular optimization algorithms, including Coupled Simulated Annealing (CSA), Particle Swarm Optimization (PSO), and Genetic Algorithm (GA). Among the developed models, the CMIS is the most accurate intelligent model for permeability forecast as compared to the core permeability data with a determination coefficient (R) of 0.87 and an average absolute deviation (AAD) of 3.7. Comparing the CMIS method with the NMR techniques (i.e., Timur-Coates and Schlumberger-Doll-Research (SDR)), the superiority of the Stoneley method is demonstrated. With this model, diverse types of fractures in carbonate formations can be easily identified. As a result, it can be claimed that the models presented in this study are of great value to petrophysicists and petroleum engineers working on reservoir simulation and well completion.
反映了在评估、完井、优化强化采油(EOR)作业、储层建模和管理的不同阶段确定渗透率的必要性。因此,工程师和石油地质学家提出了各种具有不同效率的渗透率评估方法。石油工业广泛使用声和核磁共振(NMR)测井来定量确定渗透率。然而,由于可用的 NMR 测井数量不足,并且在解释和评估方面存在很大困难,因此使用声测井来确定渗透率变得非常重要。声波技术中的斯通利波分析作为一种声学技术,具有直接、连续和储层条件下渗透率估计的独特特点。在这项研究中,针对伊朗西南部的一个天然裂缝和低孔隙度碳酸盐岩储层,使用了五种智能数学方法,包括自适应网络模糊推理系统(ANFIS)、最小二乘支持向量机(LSSVM)、径向基函数神经网络(RBFNN)、多层感知器神经网络(MLPNN)和委员会机智能系统(CMIS),根据斯通利波和剪切波传播时间、有效孔隙度、体积密度和岩性数据来计算渗透率。使用三种流行的优化算法,包括耦合模拟退火(CSA)、粒子群优化(PSO)和遗传算法(GA)对智能模型进行了改进。在所开发的模型中,CMIS 是最准确的智能渗透率预测模型,与岩心渗透率数据的相关系数(R)为 0.87,平均绝对偏差(AAD)为 3.7。与 NMR 技术(即 Timur-Coates 和 Schlumberger-Doll-Research(SDR))相比,CMIS 方法的优越性得到了证明。通过这种方法,可以轻松识别碳酸盐岩地层中的各种类型的裂缝。因此,可以说,本研究提出的模型对从事储层模拟和完井的岩石物理学家和石油工程师具有重要价值。