Speaker: Professor Zhipan LIU
Institution: Department of Chemistry, Fudan University
Hosted by: Professor Zhenyang LIN
 

Abstract

While the underlying potential energy surface (PES) determines the structure and other properties of material, it has been frustrated to predict new materials from theory even with the advent of supercomputing facilities. The accuracy of PES and the efficiency of PES sampling are two major bottlenecks, not least because of the great complexity of material PES. This lecture introduces a “Global-to-Global” approach for material discovery by combining for the first time the global optimization method with neural network (NN) techniques. The novel global optimization method, the stochastic surface walking (SSW) method is carried out massively in parallel for generating a global training data set, the fitting of which by the atom-centered NN produces a multi-dimensional global PES; the subsequent SSW exploration of large systems with the analytic NN PES can provide key information on the thermodynamics and kinetics stability of unknown phases identified from global PES. We describe in detail the current implementation of the SSW-NN method with particular focuses on the size of the global data set and the simultaneous energy/force/stress NN training procedure. All these methods have been implemented in LASP software (www.lasphub.com). A number of important functional materials, in particular those for catalysis e.g. ZnCrO oxides, are utilized as the examples to demonstrate the automated global data set generation, the improved NN training procedure and the application in material discovery and catalysis. As a general tool for material simulation, the SSW-NN method provides an efficient and predictive platform for large-scale computational material screening.
8月1日
10:30am - 12:00pm
地點
Room 4504, 4/F (Lifts 25/26), Academic Building, HKUST
講者/表演者
主辦單位
Department of Chemistry
聯絡方法
chivy@ust.hk
付款詳情
對象
PG Students, Faculty and Staff
語言
英語
其他活動
11月22日
研討會, 演講, 講座
IAS / School of Science Joint Lecture - Leveraging Protein Dynamics Memory with Machine Learning to Advance Drug Design: From Antibiotics to Targeted Protein Degradation
Abstract Protein dynamics are fundamental to protein function and encode complex biomolecular mechanisms. Although Markov state models have made it possible to capture long-timescale protein co...
11月8日
研討會, 演講, 講座
IAS / School of Science Joint Lecture - Some Theorems in the Representation Theory of Classical Lie Groups
Abstract After introducing some basic notions in the representation theory of classical Lie groups, the speaker will explain three results in this theory: the multiplicity one theorem for classical...