RETRACTED: Model Order Reduction Method Based on Machine Learning for Parameterized Time-Dependent Partial Differential Equations (Retracted Article)

被引:1
作者
Cheng, Fangxiong [1 ]
Xu, Hui [2 ]
Feng, Xinlong [1 ]
机构
[1] Xinjiang Univ, Coll Math & Syst Sci, Urumqi 830046, Peoples R China
[2] Shanghai Jiao Tong Univ, Sch Aeronaut & Astronaut, Shanghai 200240, Peoples R China
关键词
Data-driven model order reduction; Time-dependent partial differential equations; State variable equations; Artificial neural network; Non-intrusive; NEURAL-NETWORKS;
D O I
10.1007/s10915-022-01899-4
中图分类号
O29 [应用数学];
学科分类号
070104 ;
摘要
In this paper, we propose a data-driven model order reduction method to solve parameterized time-dependent partial differential equations. We describe the system with the state variable equations, and represent a class of candidate models with the artificial neural network. The discrete L-2 error between the output of artificial neural network and the high-fidelity solution is minimized with the state variable equations and initial conditions as constraints. Therefore, the model order reduction problem can be described as a kind of optimization problem with constraints, which can be solved by combining Levenberg-Marquardt algorithm and linear search algorithm, followed by sensitivity analysis of the artificial neural network parameters. Finally, by a number of calculating examples, compared to the model-based model order reduction method, data-driven model order reduction method is non-intrusive, is not limited to state variable degrees of freedom. We can find that the data-driven model order reduction method is better than the model-based model order reduction method in both computation time and precision, and has good approximation properties.
引用
收藏
页数:25
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