Zhang Shuhao, Zubatyuk Roman, Yang Yinuo, Roitberg Adrian, Isayev Olexandr
Department of Chemistry, Carnegie Mellon University, Pittsburgh, Pennsylvania 15213, United States.
Department of Chemistry, University of Florida, Gainesville, Florida 32611, United States.
J Chem Theory Comput. 2025 May 13;21(9):4365-4374. doi: 10.1021/acs.jctc.5c00347. Epub 2025 Apr 24.
Reactive potentials serve as essential tools for investigating chemical reactions with moderate computational costs. However, traditional reactive potentials often depend on fixed, semiempirical parameters, which limits their accuracy and transferability. Overcoming these limitations can significantly expand the applicability of reactive potentials, enabling the simulation of a broader range of reactions under diverse conditions and the prediction of reaction properties, such as barrier heights. This work introduces ANI-1xBB, a novel ANI-based reactive ML potential trained on off-equilibrium molecular conformers generated through an automated bond-breaking workflow. ANI-1xBB significantly enhances the prediction of reaction energetics, barrier heights, and bond dissociation energies, surpassing those of conventional ANI models. Our results show that ANI-1xBB improves transition state modeling and reaction pathway prediction while generalizing effectively to pericyclic reactions and radical-driven processes. Furthermore, the automated data generation strategy supports the efficient construction of large-scale, high-quality reactive data sets, reducing reliance on expensive QM calculations. This work highlights ANI-1xBB as a practical model for accelerating the development of reactive machine learning potentials, offering new opportunities for modeling reaction phenomena.
反应势能面是研究化学反应的重要工具,计算成本适中。然而,传统的反应势能面通常依赖于固定的半经验参数,这限制了它们的准确性和可转移性。克服这些限制可以显著扩展反应势能面的适用性,从而能够在不同条件下模拟更广泛的反应,并预测反应性质,如势垒高度。这项工作引入了ANI-1xBB,这是一种基于ANI的新型反应性机器学习势能面,它是在通过自动断键工作流程生成的非平衡分子构象上进行训练的。ANI-1xBB显著提高了对反应能量学、势垒高度和键解离能的预测能力,超过了传统的ANI模型。我们的结果表明,ANI-1xBB改进了过渡态建模和反应路径预测,同时有效地推广到周环反应和自由基驱动的过程。此外,自动数据生成策略支持高效构建大规模、高质量的反应数据集,减少了对昂贵量子力学计算的依赖。这项工作突出了ANI-1xBB作为加速反应性机器学习势能面发展的实用模型,为反应现象建模提供了新的机会。