Share your thoughts, 1 month free Claude Pro on usSee more
WorkDL logo mark

Transfer Learning Enhanced DeepONet for Long-Time Prediction of Evolution Equations

About

Deep operator network (DeepONet) has demonstrated great success in various learning tasks, including learning solution operators of partial differential equations. In particular, it provides an efficient approach to predict the evolution equations in a finite time horizon. Nevertheless, the vanilla DeepONet suffers from the issue of stability degradation in the long-time prediction. This paper proposes a {\em transfer-learning} aided DeepONet to enhance the stability. Our idea is to use transfer learning to sequentially update the DeepONets as the surrogates for propagators learned in different time frames. The evolving DeepONets can better track the varying complexities of the evolution equations, while only need to be updated by efficient training of a tiny fraction of the operator networks. Through systematic experiments, we show that the proposed method not only improves the long-time accuracy of DeepONet while maintaining similar computational cost but also substantially reduces the sample size of the training set.

Wuzhe Xu, Yulong Lu, Li Wang• 2022

Related benchmarks

TaskDatasetResultRank
Behavioral CloningP2P-Cost
Relative L2 Error4.4
16
Behavioral CloningP2P Small
Relative L2 Error0.075
16
Behavioral CloningPlanar Quadrotor
Relative L2 Error0.057
16
Behavioral Cloningobstacle
Relative L2 Error0.231
16
Behavioral CloningP2P-Dyn.
Relative L2 Error0.171
15
Showing 5 of 5 rows

Other info

Follow for update