Harnessing selectivity in chemical sensing via supramolecular interactions: from functionalization of nanomaterials to device applications

RF de Oliveira, V Montes-García, A Ciesielski… - Materials …, 2021 - pubs.rsc.org
Chemical sensing is a strategic field of science and technology ultimately aiming at
improving the quality of our lives and the sustainability of our Planet. Sensors bear a direct …

An assessment of the strategies for the energy-critical elements necessary for the development of sustainable energy sources

R Krishna, AD Dhass, A Arya, R Prasad… - … Science and Pollution …, 2023 - Springer
There have been several strategies developed to increase the diversified supply of energy
so that it can meet all of the future demands for energy. As a result, to ensure a healthy and …

Advancing rare-earth separation by machine learning

T Liu, KR Johnson, S Jansone-Popova, D Jiang - JACS Au, 2022 - ACS Publications
Constituting the bulk of rare-earth elements, lanthanides need to be separated to fully
realize their potential as critical materials in many important technologies. The discovery of …

Pairwise difference regression: a machine learning meta-algorithm for improved prediction and uncertainty quantification in chemical search

M Tynes, W Gao, DJ Burrill, ER Batista… - Journal of chemical …, 2021 - ACS Publications
Machine learning (ML) plays a growing role in the design and discovery of chemicals,
aiming to reduce the need to perform expensive experiments and simulations. ML for such …

[HTML][HTML] A chemistry-informed hybrid machine learning approach to predict metal adsorption onto mineral surfaces

E Chang, M Zavarin, L Beverly, H Wainwright - Applied Geochemistry, 2023 - Elsevier
Historically, surface complexation model (SCM) constants and distribution coefficients (K d)
have been employed to quantify mineral-based retardation effects controlling the fate of …

Machine learning-based analysis of overall stability constants of metal–ligand complexes

K Kanahashi, M Urushihara, K Yamaguchi - Scientific Reports, 2022 - nature.com
The stability constants of metal (M)-ligand (L) complexes are industrially important because
they affect the quality of the plating film and the efficiency of metal separation. Thus, it is …

A machine learning framework for urban mining: A case study on recovery of copper from printed circuit boards

S Daware, S Chandel, B Rai - Minerals Engineering, 2022 - Elsevier
Plenty of research articles on developing methods to recover metals from secondary sources
have been published. These methods are optimized for a specific source and have poor …

Emerging Rare Earth Element Separation Technologies

S Pramanik, S Kaur, I Popovs, AS Ivanov… - European Journal of …, 2024 - Wiley Online Library
Rare earth elements are essential for numerous clean energy applications, yet their mining,
separation, and processing pose significant environmental challenges. Traditional …

Prediction of stability constants of metal–ligand complexes by machine learning for the design of ligands with optimal metal ion selectivity

F Zahariev, T Ash, E Karunaratne, E Stender… - The Journal of …, 2024 - pubs.aip.org
The new LOGKPREDICT program integrates HostDesigner molecular design software with
the machine learning (ML) program Chemprop. By supplying HostDesigner with predicted …

A Machine Learning-Based Study of Li+ and Na+ Metal Complexation with Phosphoryl-Containing Ligands for the Selective Extraction of Li+ from Brine

N Kireeva, VE Baulin, AY Tsivadze - ChemEngineering, 2023 - mdpi.com
The growth of technologies concerned with the high demand in lithium (Li) sources dictates
the need for technological solutions garnering Li supplies to preserve the sustainability of …