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Accurate determination of pore pressure is critical in the design of wells, determining a safe range of mud properties, and estimating the required mud weight to ensure wellbore stability. Conventional techniques for forecasting pore pressure, such as the Eaton, Bower, or compressibility methods, have certain constraints. These methods depend on empirical relationships and constants that can differ between basins. This study proposes an effective data-driven approach that utilizes machine learning algorithms to forecast reservoir pore pressure. A total of five machine learning algorithms, namely multivariable regression (MVR), polynomial regression (PR), random forest (RF), CatBoost regression, and multilayer perception (MLP), are applied in this research. Hybrid stacking modeling is employed for the first time to forecast pore pressure and to improve the accuracy and robustness of the results by combining different methodologies. Principal component analysis is also utilized (PCA) to extract features, hence expediting the entire process by reducing dimensionality. To accomplish the objectives, 1811 recordings are selected from the Volve Field, situated approximately 200 km west of Stavanger, Norway. These recordings encompass depth data; well logs, including NPHI, GR, DT, RD, RHOB, RS, and RT; drilling activities, specifically ROP; and petrophysical parameters, including BVW, K, PHIF, SW, and VCL. Pore pressure is used as the output level to generate data-driven models. 70% of the dataset is used for training the machine learning models, while the remaining 30% is reserved for testing the models to evaluate their performance and generalization capability. Data standardization is conducted to ensure that the utilized data is statistically well-distributed, devoid of measurement mistakes, and impervious to instrumental noise. Regression metrics, such as mean MAE, R, Adjusted R RMSE, MinE, and MaxE are employed to evaluate the efficacy of the models. The results suggest that the stacking model, which integrates CatBoost and Random Forest (RF) as base models and Polynomial Regression (PR) as the meta-model, achieves an R of 0.9846, an adjusted R of 0.9842, MAE of 11.20 and an RMSE of 22.747 on the testing dataset. This makes it the most accurate model for pore pressure prediction, followed closely by CatBoost. The MVR, exhibiting an R of 0.896 and an RMSE of 57.931, is the least efficient model. A thorough comparison of all analyzed models indicates that the algorithms, ranked by performance metrics, are Stack_2, CatBoost, Stack_1, RF, PR, Stack_3, MLP, and MVR. Hybrid stacking improves performance even without hyperparameter tuning. PCA significantly speeds up the entire process by lowering the number of dimensions, hence enhancing the cost-effectiveness of the procedure. Using a few petrophysical, drilling, and well log data, the methodology presented in this work can help engineers and researchers quickly and precisely determine the reservoir pore pressure, validating the safe and cost-effective drilling operations.
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http://dx.doi.org/10.1038/s41598-025-89199-3 | DOI Listing |
Int J Numer Method Biomed Eng
September 2025
School of Mathematics and Statistics, University of Glasgow, Glasgow, UK.
Blood perfusion in cardiac tissues involves intricate interactions among vascular networks and tissue mechanics. Perfusion deficit is one of the leading causes of cardiac diseases, and modeling certain cardiac conditions that are clinically infeasible, invasive, or costly can provide valuable supplementary insights to aid clinicians. However, existing homogeneous perfusion models lack the complexity required for patient-specific simulations.
View Article and Find Full Text PDFJ Colloid Interface Sci
September 2025
State Key Laboratory of Solid Lubrication, Lanzhou Institute of Chemical Physics, Chinese Academy of Sciences, Lanzhou 730000, China; Center of Materials Science and Optoelectronics Engineering, University of Chinese Academy of Sciences, Beijing 100049, China.. Electronic address:
This study presents a straightforward and rapid method for preparing graphene aerogel by integrating a sodium alginate (SA)-metal ion crosslinking system, a bubble template, and an osmotic dehydration process. Graphene oxide (GO) nanosheets were dispersed into the solution crosslinked by SA and metal ions, leading to rapid gelation of GO under ambient conditions. To minimize structural damage to the porous network caused by water molecules during the drying process, an osmotic dehydration technique was employed as an auxiliary drying method.
View Article and Find Full Text PDFRev Sci Instrum
September 2025
Department of Earth Sciences, University College London, London, United Kingdom.
We have developed a new true triaxial apparatus for rock deformation, featuring six servo-controlled loading rams capable of applying maximum stresses of 220 MPa along the two horizontal axes and 400 MPa along the vertical axis to cubic rock samples of 50 mm side. Samples are introduced into a steel vessel, allowing rock specimens to be subjected to confining pressures of up to 60 MPa. Pore fluid lines connected to two pump intensifiers enable high-precision permeability measurements along all three principal stress directions.
View Article and Find Full Text PDFLangmuir
September 2025
Key Laboratory of Unconventional Oil & Gas Development (China University of Petroleum (East China)), Ministry of Education, Qingdao 266580, China.
Surfactant-enhanced spontaneous imbibition is a proven method of enhancing oil recovery from shale reservoirs. However, a significant knowledge gap concerning the impact of clay minerals on surfactant-enhanced imbibition in shale reservoirs remains. Therefore, this study first analyzed the mineral composition and pore structure of the shale reservoirs.
View Article and Find Full Text PDFFood Res Int
November 2025
Institute of Food Science and Technology, Chinese Academy of Agricultural Sciences (CAAS) / Key Laboratory of Agro-Products Processing, Ministry of Agriculture and Rural Affairs, Beijing 100193, PR China; College of Food Science, Shenyang Agricultural University, Shenyang 110866, China. Electronic a
While restructuring agricultural products enhances heat and mass transfer during freeze-drying, the underlying mechanisms remain poorly understood. This study employed a multiscale approach, combining freezing dynamics, sublimation drying kinetics, X-ray tomography, gas permeability assessments, thermodynamic parameters analysis, and mathematical modeling to systematically investigate the differences in transfer properties between natural and restructured peaches across the freezing and sublimation drying processes. Key results demonstrated that restructuring decreased the freezing time by 21.
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