论文标题
使用元动力学来建立反应性事件的神经网络潜力:水中尿素分解的情况
Using metadynamics to build neural network potentials for reactive events: the case of urea decomposition in water
论文作者
论文摘要
水性培养基中化学反应的研究对于从生物学到工业过程的几个科学领域的影响非常重要。但是,当水直接参与反应时,很难对这些反应进行建模。由于它需要对系统的完全量子机械描述,因此$ \ textit {ab-initio} $分子动力学是阐明这些过程的理想候选者。但是,其范围受到高计算成本的限制。一种流行的替代方法是执行由机器学习电位提供动力的分子动力学模拟,并在一组量子机械计算方面进行了训练。对于反应过程,很难可靠地这样做,因为它需要包括许多中间和过渡状态配置。在这项研究中,我们使用了通过增强采样加速的主动学习程序来收集此类结构,并建立神经网络潜力来研究水中的尿素分解过程。这使我们能够在广泛的温度下获得这一重要反应的自由能曲线,发现许多新型的亚稳态状态并提高动力学速率计算的准确性。此外,我们发现zwittionic中间体的形成与通过酸性或基本途径发生的可能性相同,这可能是对pH溶液反应速率不敏感的原因。
The study of chemical reactions in aqueous media is very important for its implications in several fields of science, from biology to industrial processes. Modelling these reactions is however difficult when water directly participates in the reaction. Since it requires a fully quantum mechanical description of the system, $\textit{ab-initio}$ molecular dynamics is the ideal candidate to shed light on these processes. However, its scope is limited by a high computational cost. A popular alternative is to perform molecular dynamics simulations powered by machine learning potentials, trained on an extensive set of quantum mechanical calculations. Doing so reliably for reactive processes is difficult because it requires including very many intermediate and transition state configurations. In this study, we used an active learning procedure accelerated by enhanced sampling to harvest such structures and to build a neural-network potential to study the urea decomposition process in water. This allowed us to obtain the free energy profiles of this important reaction in a wide range of temperatures, to discover a number of novel metastable states and to improve the accuracy of the kinetic rates calculations. Furthermore, we found that the formation of the zwitterionic intermediate has the same probability of occurring via an acidic or a basic pathway, which could be the cause of the insensitivity of reaction rates to the pH solution.