Warwick Centre for Predictive Modelling, School of Engineering, University of Warwick, Coventry CV4 7AL, United Kingdom.
Bremen Center of Computational Materials Science, University of Bremen, 28359 Bremen, Germany.
J Chem Phys. 2023 Jan 21;158(3):034801. doi: 10.1063/5.0132892.
Tight-binding approaches, especially the Density Functional Tight-Binding (DFTB) and the extended tight-binding schemes, allow for efficient quantum mechanical simulations of large systems and long-time scales. They are derived from ab initio density functional theory using pragmatic approximations and some empirical terms, ensuring a fine balance between speed and accuracy. Their accuracy can be improved by tuning the empirical parameters using machine learning techniques, especially when information about the local environment of the atoms is incorporated. As the significant quantum mechanical contributions are still provided by the tight-binding models, and only short-ranged corrections are fitted, the learning procedure is typically shorter and more transferable as it were with predicting the quantum mechanical properties directly with machine learning without an underlying physically motivated model. As a further advantage, derived quantum mechanical quantities can be calculated based on the tight-binding model without the need for additional learning. We have developed the open-source framework-Tight-Binding Machine Learning Toolkit-which allows the easy implementation of such combined approaches. The toolkit currently contains layers for the DFTB method and an interface to the GFN1-xTB Hamiltonian, but due to its modular structure and its well-defined interfaces, additional atom-based schemes can be implemented easily. We are discussing the general structure of the framework, some essential implementation details, and several proof-of-concept applications demonstrating the perspectives of the combined methods and the functionality of the toolkit.
紧束缚方法,特别是密度泛函紧束缚(DFTB)和扩展紧束缚方案,允许对大系统和长时间尺度进行有效的量子力学模拟。它们是从使用实用近似和一些经验项的从头算密度泛函理论推导而来的,确保了速度和准确性之间的良好平衡。通过使用机器学习技术调整经验参数,可以提高它们的准确性,特别是在包含原子局部环境信息的情况下。由于紧束缚模型仍然提供了重要的量子力学贡献,并且只拟合了短程修正,因此学习过程通常更短,并且更具转移性,因为它可以直接使用机器学习预测量子力学性质,而无需具有物理动机的模型。作为进一步的优势,衍生的量子力学量可以基于紧束缚模型计算,而无需额外的学习。我们已经开发了开源框架 - 紧束缚机器学习工具包 - 它允许轻松实现这种组合方法。该工具包目前包含 DFTB 方法的层和与 GFN1-xTB 哈密顿量的接口,但由于其模块化结构和明确定义的接口,可以轻松实现其他基于原子的方案。我们正在讨论框架的一般结构、一些基本的实现细节以及几个概念验证应用,这些应用演示了组合方法的前景和工具包的功能。