A review on clay chemistry, characterization and shale inhibitors for water-based drilling fluids
Challenges associated with drilling operations are numerous and their adverse effect could
lead to severe damage or even shutting down of the drilling operations. Wellbore instability …
lead to severe damage or even shutting down of the drilling operations. Wellbore instability …
Application of Artificial Intelligence-based predictive methods in Ionic liquid studies: A review
Comprehensive experimental investigation and accurate predictive models are required to
understand the dynamics in Ionic liquid (IL) properties. Examples of these predictive models …
understand the dynamics in Ionic liquid (IL) properties. Examples of these predictive models …
Compressive strength prediction of lightweight concrete: Machine learning models
Concrete is the most commonly used construction material. The physical properties of
concrete vary with the type of concrete, such as high and ultra-high-strength concrete, fibre …
concrete vary with the type of concrete, such as high and ultra-high-strength concrete, fibre …
Data-driven model for ternary-blend concrete compressive strength prediction using machine learning approach
Ternary-blend concrete is a complex composite material, and the nonlinearity in its
compressive strength behavior is unquestionable. Entirely many models have been …
compressive strength behavior is unquestionable. Entirely many models have been …
An ANN model to predict oil recovery from a 5-spot waterflood of a heterogeneous reservoir
Waterflooding is a secondary oil recovery technique in which water is injected into an
underground oil reservoir to maintain the reservoir pressure and boost oil recovery. The …
underground oil reservoir to maintain the reservoir pressure and boost oil recovery. The …
Prediction of axial capacity of corrosion-affected RC columns strengthened with inclusive FRP
P Kumar, HC Arora, A Kumar, D Radu - Scientific Reports, 2024 - nature.com
The primary cause behind the degradation of reinforced concrete (RC) structures is the
propagation of corrosion in the steel-RC structures. Nowadays, numerous retrofitting …
propagation of corrosion in the steel-RC structures. Nowadays, numerous retrofitting …
Application of gene expression programming for predicting density of binary and ternary mixtures of ionic liquids and molecular solvents
MN Amar, MA Ghriga… - Journal of the Taiwan …, 2020 - Elsevier
Abstract Ionic Liquids (ILs) have received increased attention across a number of disciplines
in recent years. This noticeable importance of ILs is attributed to their attractive proprieties …
in recent years. This noticeable importance of ILs is attributed to their attractive proprieties …
Estimation of vaporization properties of pure substances using artificial neural networks
GY Ottaiano, INS da Cruz, HS da Cruz… - Chemical Engineering …, 2021 - Elsevier
Vaporization properties are important for equipment modeling and process control involving
liquid-vapor equilibrium. The aim of this work was to obtain an Artificial Neural Network …
liquid-vapor equilibrium. The aim of this work was to obtain an Artificial Neural Network …
Estimating the physical properties of nanofluids using a connectionist intelligent model known as gaussian process regression approach
TC Chen, AT Hammid, AN Akbarov… - … Journal of Chemical …, 2022 - Wiley Online Library
This work aims to develop a robust machine learning model for the prediction of the relative
viscosity of nanoparticles (NPs) including Al2O3, TiO2, SiO2, CuO, SiC, and Ag based on …
viscosity of nanoparticles (NPs) including Al2O3, TiO2, SiO2, CuO, SiC, and Ag based on …
A Comparative Analysis of Machine Learning Approaches for Evaluating the Compressive Strength of Pozzolanic Concrete
This study leverages machine learning techniques to predict pozzolanic concrete's
compressive strength accurately. Using artificial neural networks (ANN), random forest (RF) …
compressive strength accurately. Using artificial neural networks (ANN), random forest (RF) …