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机器学习模型捕捉银纳米粒子中的等离子体动力学。

Machine Learning Models Capture Plasmon Dynamics in Ag Nanoparticles.

机构信息

Theoretical Division, Los Alamos National Laboratory, Los Alamos, New Mexico 87545, USA.

Computer, Computational and Statistical Sciences (CCS) Division, Los Alamos National Laboratory, Los Alamos, New Mexico 87545, USA.

出版信息

J Phys Chem A. 2023 May 4;127(17):3768-3778. doi: 10.1021/acs.jpca.2c08757. Epub 2023 Apr 20.

Abstract

Highly energetic electron-hole pairs (hot carriers) formed from plasmon decay in metallic nanostructures promise sustainable pathways for energy-harvesting devices. However, efficient collection before thermalization remains an obstacle for realization of their full energy generating potential. Addressing this challenge requires detailed understanding of physical processes from plasmon excitation in the metal to their collection in a molecule or a semiconductor, where atomistic theoretical investigation may be particularly beneficial. Unfortunately, first-principles theoretical modeling of these processes is extremely costly, preventing a detailed analysis over a large number of potential nanostructures and limiting the analysis to systems with a few 100s of atoms. Recent advances in machine learned interatomic potentials suggest that dynamics can be accelerated with surrogate models which replace the full solution of the Schrödinger Equation. Here, we modify an existing neural network, Hierarchically Interacting Particle Neural Network (HIP-NN), to predict plasmon dynamics in Ag nanoparticles. The model takes as a minimum as three time steps of the reference real-time time-dependent density functional theory (rt-TDDFT) calculated charges as history and predicts trajectories for 5 fs in great agreement with the reference simulation. Further, we show that a multistep training approach in which the loss function includes errors from future time-step predictions can stabilize the model predictions for the entire simulated trajectory (∼25 fs). This extends the model's capability to accurately predict plasmon dynamics in large nanoparticles of up to 561 atoms, not present in the training data set. More importantly, with machine learning models on GPUs, we gain a speed-up factor of ∼10 as compared with the rt-TDDFT calculations when predicting important physical quantities such as dynamic dipole moments in Ag and a factor of ∼10 for extended nanoparticles that are 10 times larger. This underscores the promise of future machine learning accelerated electron/nuclear dynamics simulations for understanding fundamental properties of plasmon-driven hot carrier devices.

摘要

在金属纳米结构中,等离子体衰变产生的高能量电子-空穴对(热载流子)为能量收集器件提供了可持续的途径。然而,在热化之前实现有效的收集仍然是实现其全部能量产生潜力的障碍。要解决这一挑战,需要详细了解从金属中的等离子体激发到分子或半导体中的收集的物理过程,在这些过程中,原子理论研究可能特别有益。不幸的是,这些过程的第一性原理理论建模非常昂贵,这阻止了对大量潜在纳米结构的详细分析,并将分析限制在只有几百个原子的系统中。最近在机器学习中原子间势的进展表明,可以通过替代模型来加速动力学,这些替代模型取代了薛定谔方程的完全解。在这里,我们修改了现有的神经网络——层次相互作用粒子神经网络(HIP-NN),以预测 Ag 纳米粒子中的等离子体动力学。该模型的最小输入是三个参考实时含时密度泛函理论(rt-TDDFT)计算电荷的时间步作为历史,并以与参考模拟非常吻合的方式预测 5 fs 的轨迹。此外,我们还表明,一种多步训练方法,其中损失函数包括来自未来时间步预测的误差,可以稳定模型对整个模拟轨迹(约 25 fs)的预测。这扩展了模型的能力,使其能够准确预测多达 561 个原子的大纳米粒子中的等离子体动力学,而这些粒子不在训练数据集内。更重要的是,通过 GPU 上的机器学习模型,与 rt-TDDFT 计算相比,我们在预测 Ag 中的动态偶极矩等重要物理量时获得了约 10 倍的加速因子,在预测尺寸扩大 10 倍的扩展纳米粒子时获得了约 10 倍的加速因子。这突显了未来机器学习加速电子/核动力学模拟在理解等离子体驱动热载流子器件基本特性方面的前景。

https://cdn.ncbi.nlm.nih.gov/pmc/blobs/a326/10165650/a4b1951ba712/jp2c08757_0001.jpg

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