热力学整合的数据高效主动学习:水中 BiVO4 的酸度常数。

IF 2.3 3区 化学 Q3 CHEMISTRY, PHYSICAL
Chemphyschem Pub Date : 2025-01-02 Epub Date: 2024-11-19 DOI:10.1002/cphc.202400490
Philipp Schienbein, Jochen Blumberger
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引用次数: 0

摘要

分子和表面的质子化状态在(电)催化、地球化学、生物化学和制药学等多个学科中都至关重要。准确高效地确定酸度常数至关重要,但也极具挑战性,尤其是在明确考虑电子结构、热波动、非谐振动和溶解效应时。在这项研究中,我们利用委员会神经网络势能加速热力学整合,训练出一个单一的机器学习模型,准确描述相关的质子化、去质子化和中间状态。我们研究了 BiVO4 (010) - 水界面上的两种去质子化反应,这是一种有望实现高效光催化水分离的反应。我们的研究结果表明,随着模拟时间的推移,所需的集合平均值以及最终酸度常数与柯克伍德耦合参数的函数关系趋于一致。我们证明,统计收敛需要纳秒量级的模拟时间。目前,在混合 DFT 理论水平上进行的显式非原位分子动力学模拟无法达到这一时间尺度。相比之下,我们的机器学习工作流程只需要几百次 DFT 单点计算来进行训练和测试。利用可获得的扩展时间尺度,我们还进一步评估了常用偏置电位的影响。因此,我们的研究大大提高了计算自由能差的非原位精确度。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Data-Efficient Active Learning for Thermodynamic Integration: Acidity Constants of BiVO4 in Water.

The protonation state of molecules and surfaces is pivotal in various disciplines, including (electro-)catalysis, geochemistry, biochemistry, and pharmaceutics. Accurately and efficiently determining acidity constants is critical yet challenging, particularly when explicitly considering the electronic structure, thermal fluctuations, anharmonic vibrations, and solvation effects. In this research, we employ thermodynamic integration accelerated by committee Neural Network potentials, training a single machine learning model that accurately describes the relevant protonated, deprotonated, and intermediate states. We investigate two deprotonation reactions at the BiVO4 (010)-water interface, a promising candidate for efficient photocatalytic water splitting. Our results illustrate the convergence of the required ensemble averages over simulation time and of the final acidity constant as a function of the Kirkwood coupling parameter. We demonstrate that simulation times on the order of nanoseconds are required for statistical convergence. This time scale is currently unachievable with explicit ab-initio molecular dynamics simulations at the hybrid DFT level of theory. In contrast, our machine learning workflow only requires a few hundred DFT single point calculations for training and testing. Exploiting the extended time scales accessible, we furthermore asses the effect of commonly applied bias potentials. Thus, our study significantly advances calculating free energy differences with ab-initio accuracy.

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来源期刊
Chemphyschem
Chemphyschem 化学-物理:原子、分子和化学物理
CiteScore
4.60
自引率
3.40%
发文量
425
审稿时长
1.1 months
期刊介绍: ChemPhysChem is one of the leading chemistry/physics interdisciplinary journals (ISI Impact Factor 2018: 3.077) for physical chemistry and chemical physics. It is published on behalf of Chemistry Europe, an association of 16 European chemical societies. ChemPhysChem is an international source for important primary and critical secondary information across the whole field of physical chemistry and chemical physics. It integrates this wide and flourishing field ranging from Solid State and Soft-Matter Research, Electro- and Photochemistry, Femtochemistry and Nanotechnology, Complex Systems, Single-Molecule Research, Clusters and Colloids, Catalysis and Surface Science, Biophysics and Physical Biochemistry, Atmospheric and Environmental Chemistry, and many more topics. ChemPhysChem is peer-reviewed.
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