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
School of Information Science and Technology, University of Science and Technology of China, Hefei, Anhui, 230026, China.
Laboratory of Atmospheric Physico-Chemistry, Anhui Institute of Optics & Fine Mechanics, Chinese Academy of Sciences, Hefei, Anhui, 230031, China.
Nat Commun. 2022 Oct 14;13(1):6067. doi: 10.1038/s41467-022-33783-y.
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.
大气气溶胶成核作用对全球云凝结核的贡献约占一半。尽管气候意义重大,但详细的成核机制仍知之甚少。气溶胶成核的罕见事件性质导致力场(FFs)无反应性且计算成本高昂,这阻碍了对气溶胶成核动力学的理解。由于非共价氢键桥连簇的尺寸范围广和高维特性,为成核系统开发反应性FFs比开发共价键合材料更具挑战性。在此,我们提出一种通用工作流程,该流程也适用于其他系统,以基于深度神经网络(DNN)训练准确的反应性FF,并进一步将基于DNN-FF的分子动力学(MD)与基于反应事件泊松分布的簇动力学模型相结合,以克服直接MD的高计算成本。我们发现,先前报道的酸碱形成速率往往被显著低估,尤其是在污染环境中,这强调应重新审视在多种环境中观察到的酸碱成核现象。