We found a match
Your institution may have rights to this item. Sign in to continue.
- Title
Towards fully ab initio simulation of atmospheric aerosol nucleation.
- Authors
Jiang, Shuai; Liu, Yi-Rong; Huang, Teng; Feng, Ya-Juan; Wang, Chun-Yu; Wang, Zhong-Quan; Ge, Bin-Jing; Liu, Quan-Sheng; Guang, Wei-Ran; Huang, Wei
- Abstract
Atmospheric aerosol nucleation contributes to approximately half of the worldwide cloud condensation nuclei. Despite the importance of climate, detailed nucleation mechanisms are still poorly understood. Understanding aerosol nucleation dynamics is hindered by the nonreactivity of force fields (FFs) and high computational costs due to the rare event nature of aerosol nucleation. Developing reactive FFs for nucleation systems is even more challenging than developing covalently bonded materials because of the wide size range and high dimensional characteristics of noncovalent hydrogen bonding bridging clusters. Here, we propose a general workflow that is also applicable to other systems to train an accurate reactive FF based on a deep neural network (DNN) and further bridge DNN-FF-based molecular dynamics (MD) with a cluster kinetics model based on Poisson distributions of reactive events to overcome the high computational costs of direct MD. We found that previously reported acid-base formation rates tend to be significantly underestimated, especially in polluted environments, emphasizing that acid-base nucleation observed in multiple environments should be revisited. Atmosphere aerosol nucleation contributes to climate change, air pollution, and human health, however the mechanisms are complex and elusive. Here the authors propose a general workflow based on deep neural network-based force field, paving the way towards fully ab initio simulation of atmospheric aerosol nucleation.
- Subjects
ATMOSPHERIC nucleation; ARTIFICIAL neural networks; CLOUD condensation nuclei; AIR pollution; POISSON distribution; DIRECT costing
- Publication
Nature Communications, 2022, Vol 13, p1
- ISSN
2041-1723
- Publication type
Article
- DOI
10.1038/s41467-022-33783-y