Conservation-preserved Fourier Neural Operator through Adaptive Correction
By: Chaoyu Liu , Yangming Li , Zhongying Deng and more
Potential Business Impact:
Makes computer models follow physics rules better.
Fourier Neural Operators (FNOs) have recently emerged as a promising and efficient approach for learning the numerical solutions to partial differential equations (PDEs) from data. However, standard FNO often fails to preserve key conservation laws, such as mass conservation, momentum conservation, norm conservation, etc., which are crucial for accurately modeling physical systems. Existing methods for incorporating these conservation laws into Fourier neural operators are achieved by designing related loss function or incorporating post-processing method at the training time. None of them can both exactly and adaptively correct the outputs to satisfy conservation laws, and our experiments show that these methods can lead to inferior performance while preserving conservation laws. In this work, we propose a novel adaptive correction approach to ensure the conservation of fundamental quantities. Our method introduces a learnable matrix to adaptively adjust the solution to satisfy the conservation law during training. It ensures that the outputs exactly satisfy the goal conservation law and allow for more flexibility and adaptivity for the model to correct the outputs. We theoretically show that applying our adaptive correction to an unconstrained FNO yields a solution with data loss no worse than that of the best conservation-satisfying FNO. We compare our approach with existing methods on a range of representative PDEs. Experiment results show that our method consistently outperform other methods.
Similar Papers
LOGLO-FNO: Efficient Learning of Local and Global Features in Fourier Neural Operators
Machine Learning (CS)
Helps computers understand fast, swirling movements.
Enhancing Fourier Neural Operators with Local Spatial Features
Machine Learning (CS)
Helps computers solve hard math problems better.
Sensitivity-Constrained Fourier Neural Operators for Forward and Inverse Problems in Parametric Differential Equations
Machine Learning (CS)
Helps computers solve tough math problems faster.