Using Machine Learning to Forecast the Conductive Substrate-Supported Heteroatom-Doped Metal Compound Electrocatalysts for Hydrogen Evolution Reaction DOI
Nana Zhou, Yaling Zhao,

Qingzhang Lv

et al.

The Journal of Physical Chemistry C, Journal Year: 2024, Volume and Issue: 128(41), P. 17274 - 17281

Published: Oct. 8, 2024

The heteroatom-doped metallic compounds supported on conductive substrates are excellent catalysts for the hydrogen evolution reaction (HER) thanks to their tunable properties, e.g., and nonmetallic compositions, especially bimetallic active centers synergistic effect, as well morphology interaction between substrate. Only optimal combination these adjustable properties other external factors could endow remarkable HER catalytic activity of catalysts. Therefore, in this study, machine learning (ML) database based plenty from publicly available data was conducted train three different ML models, various features including electrolyte type, catalyst morphology, compositions (metallic nonmetallic) ratios, additive, substrate were analyzed figure out impacts overpotential (OP) values determine outstanding According feature importance Spearman coefficient analysis, metal elements ratio determined be Pt, Mo 0.5, heteroatoms nitrogen, sulfur, nickel foam. Finally, model predicts that foam nickel-supported composed Pt Mo2S3 codoped with nitrogen sulfur (N, S-doped Pt@Mo2S3) exhibits admirable performance alkaline electrolytes a pretty low OP value 33 mV. database-guided provides an alternative rapid screening prediction electrocatalysts.

Language: Английский

High-throughput screening of dual atom catalysts for oxygen reduction and evolution reactions and rechargeable zinc-air battery DOI
Mohsen Tamtaji, Min Gyu Kim, Zhimin Li

et al.

Nano Energy, Journal Year: 2024, Volume and Issue: 126, P. 109634 - 109634

Published: April 21, 2024

Language: Английский

Citations

31

AI in single-atom catalysts: a review of design and applications DOI Open Access

Qijun Yu,

Ninggui Ma,

Chihon Leung

et al.

Journal of Materials Informatics, Journal Year: 2025, Volume and Issue: 5(1)

Published: Feb. 12, 2025

Single-atom catalysts (SACs) have emerged as a research frontier in catalytic materials, distinguished by their unique atom-level dispersion, which significantly enhances activity, selectivity, and stability. SACs demonstrate substantial promise electrocatalysis applications, such fuel cells, CO2 reduction, hydrogen production, due to ability maximize utilization of active sites. However, the development efficient stable involves intricate design screening processes. In this work, artificial intelligence (AI), particularly machine learning (ML) neural networks (NNs), offers powerful tools for accelerating discovery optimization SACs. This review systematically discusses application AI technologies through four key stages: (1) Density functional theory (DFT) ab initio molecular dynamics (AIMD) simulations: DFT AIMD are used investigate mechanisms, with high-throughput applications expanding accessible datasets; (2) Regression models: ML regression models identify features that influence performance, streamlining selection promising materials; (3) NNs: NNs expedite known structural models, facilitating rapid assessment potential; (4) Generative adversarial (GANs): GANs enable prediction novel high-performance tailored specific requirements. work provides comprehensive overview current status insights recommendations future advancements field.

Language: Английский

Citations

2

DFT and machine learning studies on a multi-functional single-atom catalyst for enhanced oxygen and hydrogen evolution as well as CO2 reduction reactions DOI
Mohsen Tamtaji, Mohammad Kazemeini, Jafar Abdi

et al.

International Journal of Hydrogen Energy, Journal Year: 2024, Volume and Issue: 80, P. 1075 - 1083

Published: July 19, 2024

Language: Английский

Citations

11

Reaction mechanism and kinetics of oxygen reduction reaction on the iron–nickel dual atom catalyst DOI
Mohsen Tamtaji, Yuyin Li, Yuting Cai

et al.

Journal of Materials Chemistry A, Journal Year: 2023, Volume and Issue: 11(46), P. 25410 - 25421

Published: Jan. 1, 2023

Dual-atom catalysts (DACs) have recently emerged as promising and high-activity for the oxygen reduction reaction (ORR), a key process in many electrochemical energy conversion devices.

Language: Английский

Citations

16

Precise Engineering of the Electrocatalytic Activity of FeN4-Embedded Graphene on Oxygen Electrode Reactions by Attaching Electrides DOI
Peng Wu,

Zengying Ma,

Xueqian Xia

et al.

The Journal of Physical Chemistry Letters, Journal Year: 2024, Volume and Issue: 15(4), P. 1121 - 1129

Published: Jan. 24, 2024

Using first-principles calculations combined with a constant-potential implicit solvent model, we comprehensively studied the activity of oxygen electrode reactions catalyzed by electride-supported FeN4-embedded graphene (FeN4Cx). The physical quantities in FeN4Cx/electrides, i.e., work function electrides, interlayer spacing, stability heterostructures, charge transferred to Fe, d-band center and adsorption free energy O, are highly intercorrelated, resulting being fully expressed nature electrides themselves, thereby achieving precise modulation selecting different electrides. Strikingly, FeN4PDCx/Ca2N FeN4PDCx/Y2C systems maintain high evolution reaction (OER) reduction (ORR) overpotential less than 0.46 0.62 V wide pH range. This provides an effective strategy for rational design efficient bifunctional catalysts as well model system simple activity-descriptor, helping realize significant advances devices.

Language: Английский

Citations

6

Machine learning accelerates the screening of single-atom catalysts towards CO2 electroreduction DOI
Yaxin Shi, Zhiqin Liang

Applied Catalysis A General, Journal Year: 2024, Volume and Issue: 676, P. 119674 - 119674

Published: March 13, 2024

Language: Английский

Citations

4

Accelerating electrocatalyst design for CO2 conversion through machine learning: Interpretable models and data-driven innovations DOI Creative Commons

Zijing Li,

Yingchuan Zhang, Tao Zhou

et al.

Deleted Journal, Journal Year: 2024, Volume and Issue: 1(3), P. 100029 - 100029

Published: July 19, 2024

Electrocatalytic conversion of CO2 into valuable products is a promising approach toward mitigating climate change and energy crisis. However, the product diversity multi-electron transfer pathways drive development numerous strategies for catalyst component active site modifications, leading to long journey rational electrocatalyst design. The integration machine learning (ML) with experimental workload provides an opportunity speed up materials discovery by automatically exploiting trends patterns from database. This review focuses on interpretability ML models in design, demonstrates reliable workflow based adequate catalytic data refined descriptors, satisfactory configuration model appropriate human intervention. Moreover, combination data-driven techs cutting-edge methodologies also discussed, which can serve as bridge between contemporary catalysis quantum chemistry. may provoke more ML-based innovations rationalization design novel net-zero industries.

Language: Английский

Citations

4

An auto-configurable and interpretable ensemble learning framework for optimal catalyst design of green methanol production via Bayesian optimization DOI

Dongwen Rong,

Zhao Wang,

Qiwen Guo

et al.

Journal of Cleaner Production, Journal Year: 2025, Volume and Issue: 488, P. 144666 - 144666

Published: Jan. 1, 2025

Language: Английский

Citations

0

Exploring how base model combination affects the results of a “stacking” ensemble machine learning model: An applied study on optimization of heteroatom doped carbon data DOI
Krittapong Deshsorn, Weekit Sirisaksoontorn, Wisit Hirunpinyopas

et al.

FlatChem, Journal Year: 2025, Volume and Issue: 50, P. 100827 - 100827

Published: Jan. 29, 2025

Language: Английский

Citations

0

P-block cathode electrocatalysts: A critical review of their role and impact on oxygen reduction reaction in fuel cells applications DOI

Siti Haziyah Mohd Chachuli,

Sharifah Najiha Timmiati, Kee Shyuan Loh

et al.

Journal of Industrial and Engineering Chemistry, Journal Year: 2025, Volume and Issue: unknown

Published: Feb. 1, 2025

Language: Английский

Citations

0