Käser Silvan, Vazquez-Salazar Luis Itza, Meuwly Markus, Töpfer Kai
Department of Chemistry, University of Basel Klingelbergstrasse 80 CH-4056 Basel Switzerland
Digit Discov. 2022 Dec 21;2(1):28-58. doi: 10.1039/d2dd00102k. eCollection 2023 Feb 13.
Artificial Neural Networks (NN) are already heavily involved in methods and applications for frequent tasks in the field of computational chemistry such as representation of potential energy surfaces (PES) and spectroscopic predictions. This perspective provides an overview of the foundations of neural network-based full-dimensional potential energy surfaces, their architectures, underlying concepts, their representation and applications to chemical systems. Methods for data generation and training procedures for PES construction are discussed and means for error assessment and refinement through transfer learning are presented. A selection of recent results illustrates the latest improvements regarding accuracy of PES representations and system size limitations in dynamics simulations, but also NN application enabling direct prediction of physical results without dynamics simulations. The aim is to provide an overview for the current state-of-the-art NN approaches in computational chemistry and also to point out the current challenges in enhancing reliability and applicability of NN methods on a larger scale.
人工神经网络(NN)已经广泛应用于计算化学领域的常见任务的方法和应用中,例如势能面(PES)的表示和光谱预测。本综述概述了基于神经网络的全维势能面的基础、其架构、基本概念、它们在化学系统中的表示和应用。讨论了用于生成数据和构建PES的训练程序的方法,并介绍了通过迁移学习进行误差评估和改进的方法。一系列近期结果说明了在PES表示精度和动力学模拟中的系统规模限制方面的最新进展,同时也展示了神经网络的应用能够在无需动力学模拟的情况下直接预测物理结果。目的是概述计算化学中当前最先进的神经网络方法,并指出在更大规模上提高神经网络方法的可靠性和适用性方面的当前挑战。