Physics Informed Neural Networks: Reducing Data Size Requirements via Hybrid Learning
被引:1
作者:
Lew, Charlotte
论文数: 0引用数: 0
h-index: 0
机构:
Palos Verdes Peninsula High Sch, Rolling Hills Estates, CA 90274 USAPalos Verdes Peninsula High Sch, Rolling Hills Estates, CA 90274 USA
Lew, Charlotte
[1
]
机构:
[1] Palos Verdes Peninsula High Sch, Rolling Hills Estates, CA 90274 USA
来源:
2022 IEEE/ACM INTERNATIONAL CONFERENCE ON BIG DATA COMPUTING, APPLICATIONS AND TECHNOLOGIES, BDCAT
|
2022年
关键词:
PINN;
PDE;
unsupervised training;
D O I:
10.1109/BDCAT56447.2022.00032
中图分类号:
TP18 [人工智能理论];
学科分类号:
081104 ;
0812 ;
0835 ;
1405 ;
摘要:
Training physics informed neural networks (PINN) in a supervised manner requires enormous amounts of data. This is a strain on hard disk space and RAM. To decrease the amount of data required, and to increase accuracy, we can train a PINN using both supervised and unsupervised learning. In this method, we use a smaller dataset to nudge the PINN in the correct direction; then, the unsupervised training takes control to smooth out the final results and increase accuracy. While some research has been done using this hybrid approach, there is a gap in literature regarding the size of the requisite training set and the correct method to weigh the supervised and unsupervised losses. In this research, we used a hybrid approach to model the Allen-Cahn equation. We found that even applying a tiny weight to the unsupervised loss of 0.00255 was sufficient to dramatically increase the accuracy of our PINN.