Category Ranking

98%

Total Visits

921

Avg Visit Duration

2 minutes

Citations

20

Article Abstract

Effectively storing carbon dioxide (CO) in geological formations synergizes with algal-based removal technology, enhancing carbon capture efficiency, leveraging biological processes for sustainable, long-term sequestration while aiding ecosystem restoration. On the other hand, geological carbon storage effectiveness depends on the interactions and wettability of rock, CO, and brine. Rock wettability during storage determines the CO/brine distribution, maximum storage capacity, and trapping potential. Due to the high CO reactivity and damage risk, an experimental assessment of the CO wettability on storage/caprocks is challenging. Data-driven machine learning (ML) models provide an efficient and less strenuous alternative, enabling research at geological storage conditions that are impossible or hazardous to achieve in the laboratory. This study used robust ML models, including fully connected feedforward neural networks (FCFNNs), extreme gradient boosting, k-nearest neighbors, decision trees, adaptive boosting, and random forest, to model the wettability of the CO/brine and rock minerals (quartz and mica) in a ternary system under varying conditions. Exploratory data analysis methods were used to examine the experimental data. The GridSearchCV and K cross-validation approaches were implemented to augment the performance abilities of the ML models. In addition, sensitivity plots were generated to study the influence of individual parameters on the model performance. The results indicated that the applied ML models accurately predicted the wettability behavior of the mineral/CO/brine system under various operating conditions, where FCFNN performed better than other ML techniques with an R above 0.98 and an error of less than 3%.

Download full-text PDF

Source
http://dx.doi.org/10.1016/j.chemosphere.2023.140469DOI Listing

Publication Analysis

Top Keywords

data-driven machine
8
machine learning
8
wettability
5
predicting wettability
4
wettability mineral/co/brine
4
mineral/co/brine systems
4
systems data-driven
4
learning modeling
4
modeling implications
4
carbon
4

Similar Publications

Student dropout is a significant challenge in Bangladesh, with serious impacts on both educational and socio-economic outcomes. This study investigates the factors influencing school dropout among students aged 6-24 years, employing data from the 2019 Multiple Indicator Cluster Survey (MICS). The research integrates statistical analysis with machine learning (ML) techniques and explainable AI (XAI) to identify key predictors and enhance model interpretability.

View Article and Find Full Text PDF

Data-Driven Exploration of Critical Factors for Single-Phase High-Entropy Oxide Anode Materials.

J Phys Chem Lett

September 2025

Institute of multidisciplinary research for advanced materials, Tohoku University, 2-1-1 Katahira, Aoba-ku, Sendai, Miyagi 980-8577, Japan.

High-entropy oxides (HEOs) are attracting significant attention owing to their compositional tunability and structural robustness. However, the identification of specific compositional combinations that yield a single-phase structure in HEOs remains unclear owing to the immense combinatorial complexity inherent in multielement systems. This study adopts a materials informatics approach that integrates experimental synthesis data with machine learning to identify key compositional factors enabling single-phase HEO formation via solid-state synthesis.

View Article and Find Full Text PDF

ASReview LAB v.2: Open-source text screening with multiple agents and a crowd of experts.

Patterns (N Y)

July 2025

Department of Methodology and Statistics, Faculty of Social and Behavioral Sciences, Utrecht University, Utrecht, the Netherlands.

ASReview LAB v.2 introduces an advancement in AI-assisted systematic reviewing by enabling collaborative screening with multiple experts ("a crowd of oracles") using a shared AI model. The platform supports multiple AI agents within the same project, allowing users to switch between fast general-purpose models and domain-specific, semantic, or multilingual transformer models.

View Article and Find Full Text PDF

Machine Learning-Aided Screening and Design Rule Discovery for LWIR-Transparent Optical Materials.

J Chem Inf Model

September 2025

Department of Chemistry and Biochemistry, University of Arizona, Tucson, Arizona 85721-0041, United States.

The development of low-cost, high-performance materials with enhanced transparency in the long-wavelength infrared (LWIR) region (800-1250 cm/8-12.5 μm) is essential for advancing thermal imaging and sensing technologies. Traditional LWIR optics rely on costly inorganic materials, limiting their broader deployment.

View Article and Find Full Text PDF

Objective data-driven insights into pedestrian decisions, comprehensibility, and perceived safety of autonomous vehicles with varied eHMIs: Evidence from a real-world experiment.

Accid Anal Prev

September 2025

Department of Traffic Engineering and Key Laboratory of Road and Traffic Engineering Ministry of Education, Tongji University, Shanghai 201804, China. Electronic address:

In future traffic environments dominated by highly autonomous vehicles (AVs), pedestrians may face challenges in accurately interpreting AV behavior, thereby potentially increasing the risk of pedestrian-AV interactions. External human-machine interfaces (eHMIs) have been proposed to facilitate communication between AVs and pedestrians; however, comprehensive evaluations using objective data from real-world interactions are limited. This study developed a systematic evaluation framework grounded in the ISO 9241-11 standard, integrating four key indicators: decision accuracy, comprehensibility, decision efficiency, and perceived safety.

View Article and Find Full Text PDF