ScholarMate
客服热线:400-1616-289

Applications of Domain Adversarial Neural Network in phase transition of 3D Potts model

Chen, Xiangna; Liu, Feiyi*; Deng, Weibing; Chen, Shiyang; Shen, Jianmin; Papp, Gabor; Li, Wei; Yang, Chunbin
Science Citation Index Expanded
1

摘要

Machine learning techniques exhibit significant performance in discriminating different phases of matter and provide a new avenue for studying phase transitions. We investigate the phase transitions of three dimensional q -state Potts model on cubic lattice by using a transfer learning approach, Domain Adversarial Neural Network (DANN). With the unique neural network architecture, it could evaluate the high -temperature (disordered) and low -temperature (ordered) phases, and identify the first and second order phase transitions. Meanwhile, by training the DANN with a few labeled configurations, the critical points for q = 2, 3, 4 and 5 can be predicted with high accuracy, which are consistent with those of the Monte Carlo simulations. These findings would promote us to learn and explore the properties of phase transitions in high -dimensional systems.

关键词

Machine learning Domain adversarial neural network 3D Potts model Phase transitions Critical phenomena