Lamb K D, Gentine P
Department of Earth and Environmental Engineering, Columbia University, New York, USA.
Sci Rep. 2023 Oct 31;13(1):18777. doi: 10.1038/s41598-023-45235-8.
Black carbon (BC), a strongly absorbing aerosol sourced from combustion, is an important short-lived climate forcer. BC's complex morphology contributes to uncertainty in its direct climate radiative effects, as current methods to accurately calculate the optical properties of these aerosols are too computationally expensive to be used online in models or for observational retrievals. Here we demonstrate that a Graph Neural Network (GNN) trained to predict the optical properties of numerically-generated BC fractal aggregates can accurately generalize to arbitrarily shaped particles, including much larger ([Formula: see text]) aggregates than in the training dataset. This zero-shot learning approach could be used to estimate single particle optical properties of realistically-shaped aerosol and cloud particles for inclusion in radiative transfer codes for atmospheric models and remote sensing inversions. In addition, GNN's can be used to gain physical intuition on the relationship between small-scale interactions (here of the spheres' positions and interactions) and large-scale properties (here of the radiative properties of aerosols).
黑碳(BC)是一种源自燃烧的强吸收性气溶胶,是一种重要的短期气候强迫因子。BC复杂的形态导致其直接气候辐射效应存在不确定性,因为目前准确计算这些气溶胶光学特性的方法计算成本过高,无法在模型中在线使用或用于观测反演。在此,我们证明,经过训练以预测数值生成的BC分形聚集体光学特性的图神经网络(GNN)能够准确地推广到任意形状的颗粒,包括比训练数据集中大得多([公式:见正文])的聚集体。这种零样本学习方法可用于估计实际形状的气溶胶和云颗粒的单颗粒光学特性,以便纳入大气模型的辐射传输代码和遥感反演中。此外,GNN可用于获得关于小尺度相互作用(此处为球体位置和相互作用)与大尺度特性(此处为气溶胶辐射特性)之间关系的物理直觉。