LGNACOMP-PHMLNov 24, 2020

Deep-learning based discovery of partial differential equations in integral form from sparse and noisy data

arXiv:2011.11981v139 citations
AI Analysis

This work provides a more robust and accurate method for discovering complex PDEs from sparse and noisy data, which is significant for researchers and engineers working with real-world scientific and engineering data.

This paper addresses the challenge of discovering partial differential equations (PDEs) from sparse and noisy data, particularly for high-order derivatives and heterogeneous parametric PDEs. The proposed deep-learning and integral form framework improves accuracy and stability, outperforming existing methods and accurately discovering complex PDEs even with limited and noisy data.

Data-driven discovery of partial differential equations (PDEs) has attracted increasing attention in recent years. Although significant progress has been made, certain unresolved issues remain. For example, for PDEs with high-order derivatives, the performance of existing methods is unsatisfactory, especially when the data are sparse and noisy. It is also difficult to discover heterogeneous parametric PDEs where heterogeneous parameters are embedded in the partial differential operators. In this work, a new framework combining deep-learning and integral form is proposed to handle the above-mentioned problems simultaneously, and improve the accuracy and stability of PDE discovery. In the framework, a deep neural network is firstly trained with observation data to generate meta-data and calculate derivatives. Then, a unified integral form is defined, and the genetic algorithm is employed to discover the best structure. Finally, the value of parameters is calculated, and whether the parameters are constants or variables is identified. Numerical experiments proved that our proposed algorithm is more robust to noise and more accurate compared with existing methods due to the utilization of integral form. Our proposed algorithm is also able to discover PDEs with high-order derivatives or heterogeneous parameters accurately with sparse and noisy data.

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