AONN: An Adjoint-Oriented Neural Network Method for All-At-Once Solutions of Parametric Optimal Control Problems
From MaRDI portal
Publication:6194971
DOI10.1137/22m154209xarXiv2302.02076MaRDI QIDQ6194971
Chao Yang, Unnamed Author, Guangqiang Xiao, Kejun Tang
Publication date: 12 March 2024
Published in: SIAM Journal on Scientific Computing (Search for Journal in Brave)
Full work available at URL: https://arxiv.org/abs/2302.02076
Numerical methods based on necessary conditions (49M05) Numerical methods for inverse problems for boundary value problems involving PDEs (65N21) PDE constrained optimization (numerical aspects) (49M41)
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