Ultrafast Electronic Coupling Estimators: Neural Networks versus Physics-Based Approaches
Тип публикации: Journal Article
Дата публикации: 2023-06-22
scimago Q1
wos Q1
БС1
SJR: 1.482
CiteScore: 9.8
Impact factor: 5.5
ISSN: 15499618, 15499626
PubMed ID:
37345885
Physical and Theoretical Chemistry
Computer Science Applications
Краткое описание
Fast and accurate estimation of electronic coupling matrix elements between molecules is essential for the simulation of charge transfer phenomena in chemistry, materials science, and biology. Here we investigate neural-network-based coupling estimators combined with different protocols for sampling reference data (random, farthest point, and query by committee) and compare their performance to the physics-based analytic overlap method (AOM), introduced previously. We find that neural network approaches can give smaller errors than AOM, in particular smaller maximum errors, while they require an order of magnitude more reference data than AOM, typically one hundred to several hundred training points, down from several thousand required in previous ML works. A Δ-ML approach taking AOM as a baseline is found to give the best overall performance at a relatively small computational overhead of about a factor of 2. Highly flexible π-conjugated organic molecules like non-fullerene acceptors are found to be a particularly challenging case for ML because of the varying (de)localization of the frontier orbitals for different intramolecular geometries sampled along molecular dynamics trajectories. Here the local symmetry functions used in ML are insufficient, and long-range descriptors are expected to give improved performance.
Найдено
Ничего не найдено, попробуйте изменить настройки фильтра.
Найдено
Ничего не найдено, попробуйте изменить настройки фильтра.
Топ-30
Журналы
|
1
2
3
|
|
|
Journal of Chemical Physics
3 публикации, 25%
|
|
|
Journal of Physical Chemistry A
1 публикация, 8.33%
|
|
|
ACS Energy Letters
1 публикация, 8.33%
|
|
|
Science advances
1 публикация, 8.33%
|
|
|
Journal of Physical Chemistry Letters
1 публикация, 8.33%
|
|
|
Physical Chemistry Chemical Physics
1 публикация, 8.33%
|
|
|
Nano Energy
1 публикация, 8.33%
|
|
|
Chemical Physics Reviews
1 публикация, 8.33%
|
|
|
Advanced Functional Materials
1 публикация, 8.33%
|
|
|
APL Computational Physics
1 публикация, 8.33%
|
|
|
1
2
3
|
Издатели
|
1
2
3
4
5
|
|
|
AIP Publishing
5 публикаций, 41.67%
|
|
|
American Chemical Society (ACS)
3 публикации, 25%
|
|
|
American Association for the Advancement of Science (AAAS)
1 публикация, 8.33%
|
|
|
Royal Society of Chemistry (RSC)
1 публикация, 8.33%
|
|
|
Elsevier
1 публикация, 8.33%
|
|
|
Wiley
1 публикация, 8.33%
|
|
|
1
2
3
4
5
|
- Мы не учитываем публикации, у которых нет DOI.
- Статистика публикаций обновляется еженедельно.
Вы ученый?
Создайте профиль, чтобы получать персональные рекомендации коллег, конференций и новых статей.
Метрики
12
Всего цитирований:
12
Цитирований c 2025:
8
(66.67%)
Цитировать
ГОСТ |
RIS |
BibTex |
MLA
Цитировать
ГОСТ
Скопировать
Hafizi R., Elsner J., Blumberger J. Ultrafast Electronic Coupling Estimators: Neural Networks versus Physics-Based Approaches // Journal of Chemical Theory and Computation. 2023. Vol. 19. No. 13. pp. 4232-4242.
ГОСТ со всеми авторами (до 50)
Скопировать
Hafizi R., Elsner J., Blumberger J. Ultrafast Electronic Coupling Estimators: Neural Networks versus Physics-Based Approaches // Journal of Chemical Theory and Computation. 2023. Vol. 19. No. 13. pp. 4232-4242.
Цитировать
RIS
Скопировать
TY - JOUR
DO - 10.1021/acs.jctc.3c00184
UR - https://pubs.acs.org/doi/10.1021/acs.jctc.3c00184
TI - Ultrafast Electronic Coupling Estimators: Neural Networks versus Physics-Based Approaches
T2 - Journal of Chemical Theory and Computation
AU - Hafizi, Roohollah
AU - Elsner, Jan
AU - Blumberger, Jochen
PY - 2023
DA - 2023/06/22
PB - American Chemical Society (ACS)
SP - 4232-4242
IS - 13
VL - 19
PMID - 37345885
SN - 1549-9618
SN - 1549-9626
ER -
Цитировать
BibTex (до 50 авторов)
Скопировать
@article{2023_Hafizi,
author = {Roohollah Hafizi and Jan Elsner and Jochen Blumberger},
title = {Ultrafast Electronic Coupling Estimators: Neural Networks versus Physics-Based Approaches},
journal = {Journal of Chemical Theory and Computation},
year = {2023},
volume = {19},
publisher = {American Chemical Society (ACS)},
month = {jun},
url = {https://pubs.acs.org/doi/10.1021/acs.jctc.3c00184},
number = {13},
pages = {4232--4242},
doi = {10.1021/acs.jctc.3c00184}
}
Цитировать
MLA
Скопировать
Hafizi, Roohollah, et al. “Ultrafast Electronic Coupling Estimators: Neural Networks versus Physics-Based Approaches.” Journal of Chemical Theory and Computation, vol. 19, no. 13, Jun. 2023, pp. 4232-4242. https://pubs.acs.org/doi/10.1021/acs.jctc.3c00184.