Potential Energy Surface
A potential energy surface (PES) maps the energy of a molecular system as a function of its atomic coordinates, crucial for understanding chemical reactions and material properties. Current research heavily utilizes machine learning, particularly graph neural networks and Gaussian process regression, to build accurate and computationally efficient surrogate models of PESs, often focusing on improving extrapolation capabilities and uncertainty quantification to identify unreliable predictions. These advancements enable faster and more accurate simulations of complex systems, impacting fields like materials science, drug discovery, and catalysis by accelerating the design and optimization of new molecules and materials.
Papers
Symmetry Adapted Residual Neural Network Diabatization: Conical Intersections in Aniline Photodissociation
Yifan Shen, David Yarkony
Integrating Graph Neural Networks and Many-Body Expansion Theory for Potential Energy Surfaces
Siqi Chen, Zhiqiang Wang, Xianqi Deng, Yili Shen, Cheng-Wei Ju, Jun Yi, Lin Xiong, Guo Ling, Dieaa Alhmoud, Hui Guan, Zhou Lin