主办:应用物理与技术研究中心
报告人:王涵 副研究员 北京应用物理与计算数学研究所
时间:11月27日(周二)中午 12:10-13:10
地点:6163am银河线路1号楼210会议室(成府路北,力学大院内)
主持人:康炜 副教授
报告摘要:
We introduce a series of deep learning based methods for molecular modeling at different scales. We discuss this topic in two aspects: model construction and data generation. In terms of model construction, we introduce the Deep Potential scheme based on a many-body potential and inter-atomic forces generated by a carefully crafted deep neural network trained with ab initio data. We show that the proposed scheme provides an efficient and accurate protocol for a variety of systems, including bulk materials and molecules, and, in particular, for some challenging systems like a high-entropy alloy system. We further show how this scheme is generalized to the context of coarse-graining and free energy computation. In terms of data generation, we present a new active learning approach named Deep Potential Generator (DP-GEN), which is an iterative procedure including exploration, labeling, and training steps. By the example system of Al-Mg alloys, we demonstrate that DP-GEN can generate uniformly accurate potential energy models with a minimum number of labeled data.