AIMNet2: a neural network potential to meet your neutral, charged, organic, and elemental-organic needs.

IF 7.6 1区 化学 Q1 CHEMISTRY, MULTIDISCIPLINARY
Dylan M Anstine, Roman Zubatyuk, Olexandr Isayev
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引用次数: 0

Abstract

Machine learned interatomic potentials (MLIPs) are reshaping computational chemistry practices because of their ability to drastically exceed the accuracy-length/time scale tradeoff. Despite this attraction, the benefits of such efficiency are only impactful when an MLIP uniquely enables insight into a target system or is broadly transferable outside of the training dataset. In this work, we present the 2nd generation of our atoms-in-molecules neural network potential (AIMNet2), which is applicable to species composed of up to 14 chemical elements in both neutral and charged states, making it a valuable method for modeling the majority of non-metallic compounds. Using an exhaustive dataset of 2 × 107 hybrid DFT level of theory quantum chemical calculations, AIMNet2 combines ML-parameterized short-range and physics-based long-range terms to attain generalizability that reaches from simple organics to diverse molecules with "exotic" element-organic bonding. We show that AIMNet2 outperforms semi-empirical GFN2-xTB and is on par with reference density functional theory for interaction energy contributions, conformer search tasks, torsion rotation profiles, and molecular-to-macromolecular geometry optimization. Overall, the demonstrated chemical coverage and computational efficiency of AIMNet2 is a significant step toward providing access to MLIPs that avoid the crucial limitation of curating additional quantum chemical data and retraining with each new application.

AIMNet2:一个神经网络潜力,满足你的中性、带电、有机和基本有机需求。
机器学习原子间势(MLIPs)正在重塑计算化学实践,因为它们能够大大超越精度-长度/时间尺度的权衡。尽管有这种吸引力,但只有当MLIP能够独特地洞察目标系统或广泛地转移到训练数据集之外时,这种效率的好处才会产生影响。在这项工作中,我们提出了我们的第二代分子中原子神经网络电位(AIMNet2),它适用于由多达14种化学元素组成的中性和带电状态的物质,使其成为建模大多数非金属化合物的有价值的方法。AIMNet2使用理论量子化学计算的2 × 107混合DFT水平的详尽数据集,将ml参数化的短程术语和基于物理的远程术语相结合,以获得从简单有机物到具有“外来”元素-有机键的各种分子的泛化性。研究表明,AIMNet2优于半经验GFN2-xTB,在相互作用能贡献、构象搜索任务、扭转旋转分布和分子-大分子几何优化方面与参考密度泛函理论相当。总的来说,AIMNet2展示的化学覆盖范围和计算效率是迈向mlip的重要一步,避免了管理额外量子化学数据和每次新应用重新训练的关键限制。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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来源期刊
Chemical Science
Chemical Science CHEMISTRY, MULTIDISCIPLINARY-
CiteScore
14.40
自引率
4.80%
发文量
1352
审稿时长
2.1 months
期刊介绍: Chemical Science is a journal that encompasses various disciplines within the chemical sciences. Its scope includes publishing ground-breaking research with significant implications for its respective field, as well as appealing to a wider audience in related areas. To be considered for publication, articles must showcase innovative and original advances in their field of study and be presented in a manner that is understandable to scientists from diverse backgrounds. However, the journal generally does not publish highly specialized research.
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