科学研究

午间学术报告会(一百八十四):Simulating non-equilibrium Green’s function by dynamic mode decomposition and operator learning

发布时间:2024-10-08

报告题目:
午间学术报告会(一百八十四):Simulating non-equilibrium Green’s function by dynamic mode decomposition and operator learning
报告人:
印佳
报告人所在单位:
复旦大学数学科学学院
报告日期:
2024-10-11
报告时间:
12:00-13:00
报告地点:
光华东主楼2201
报告摘要:

Simulating the nonequilibrium Green’s function by dynamic mode decomposition and operator learning Computing the numerical solution of the Kadanoff-Baym equations (KBEs), a set of nonlinear integral differential equations satisfied by the two-time Green’s functions derived from many-body perturbation theory for a quantum many-body system away from equilibrium, is a challenging task. In this talk, I will report our recent efforts on extrapolating the two-time Green’s function by applying dynamic mode decomposition (DMD) and recurrent neural networks (RNN)-based operator learning. These methods require constructing models from the numerical solution of the KBE within a small time window to extrapolate both the time-diagonal and off-diagonal elements of the Green’s function. We demonstrate the efficiency and accuracy of these approaches by applying it to Hubbard model problems.

午间学术报告会184.pdf

本年度学院报告总序号:
1213