Rezaei Mirghaed Bahareh, Dehghan Monfared Abolfazl, Ranjbar Ali
Department of Petroleum Engineering, Faculty of Petroleum, Gas and Petrochemical Engineering, Persian Gulf University, Bushehr, 75169-13817, Iran.
Sci Rep. 2024 Nov 22;14(1):28941. doi: 10.1038/s41598-024-80362-w.
Reservoir petrophysical assessments are essential for determining hydrocarbon reserves, production, and characterizing reservoir layers. Advanced logging technology identifies crucial petrophysical parameters, including porosity type, rock pore size and type, and static/dynamic properties. The aim of this study is to present a petrophysical evaluation of the studied reservoir and to identify the reservoir layers by calculating and determining petrophysical indicators using well logging data. Additionally, various machine learning methods, including Adaptive Neuro-Fuzzy Inference System, Extreme Learning Machine, Multi Gene Genetic Programming, Decision Tree, and Adaptive Boosting, were compared to model the water saturation data according to different logs. The investigated depth ranged from 4050.6 to 4560 m, with each image containing over 3000 data at the desired depth. The main lithology of the formation was limestone with some shale. By conducting a petrophysical evaluation and applying parameter cutoffs, productive zones within the reservoir were identified. Layer 3 had the highest average net porosity (18%) and net water saturation (17%), with secondary porosity observed in most layers. Among the machine learning models tested the AdaBoost model demonstrated the lowest error value for estimating water saturation, with an RMSE of 0.0152 and an AARE% of 3.1610, establishing it as the most effective model in this study. Furthermore, the GP model provided a correlation between the input parameters and predicted water saturation, demonstrating good accuracy with an RMSE of 0.0231 and an AARE of 4.3597.
储层岩石物理评估对于确定油气储量、产量以及表征储层至关重要。先进的测井技术可识别关键的岩石物理参数,包括孔隙度类型、岩石孔隙大小和类型以及静态/动态特性。本研究的目的是对所研究的储层进行岩石物理评价,并通过利用测井数据计算和确定岩石物理指标来识别储层。此外,还比较了各种机器学习方法,包括自适应神经模糊推理系统、极限学习机、多基因遗传编程、决策树和自适应增强,以便根据不同的测井数据对含水饱和度数据进行建模。研究深度范围为4050.6至4560米,每个图像在所需深度包含超过3000个数据。地层的主要岩性为石灰岩,伴有一些页岩。通过进行岩石物理评价并应用参数截止值,确定了储层内的生产层。第3层具有最高的平均净孔隙度(18%)和净含水饱和度(17%),大多数层中观察到次生孔隙度。在所测试的机器学习模型中,AdaBoost模型在估计含水饱和度方面显示出最低的误差值,均方根误差为0.0152,平均绝对相对误差百分比为3.1610,使其成为本研究中最有效的模型。此外,遗传编程模型提供了输入参数与预测含水饱和度之间的相关性,均方根误差为0.0231,平均绝对相对误差为4.3597,显示出良好的准确性。