The content discusses an adaptive finite element method (AFEM) for efficiently solving an elliptic eigenvalue optimization problem using a phase-field approach. The key points are:
The authors consider an elliptic eigenvalue optimization problem, where the goal is to find the optimal material distribution in a given domain to minimize or maximize an objective function involving the eigenvalues of the underlying differential operator.
To overcome the high computational cost of traditional finite element methods, the authors adopt a phase-field approach to reformulate the optimization problem over a fixed domain. This allows for topological changes during the optimization process.
The authors propose an AFEM algorithm that iteratively solves the discrete optimization problem, estimates the error using a posteriori error estimators, marks elements for refinement, and generates a new mesh. This adaptive strategy aims to improve the accuracy and efficiency compared to uniform mesh refinement.
The a posteriori error estimators are derived for the phase-field function, the eigenvalues, and the eigenfunctions. Although the reliability of the estimators is not established, the authors show that the estimators play a crucial role in the convergence analysis of the AFEM algorithm.
The convergence analysis of the AFEM algorithm is provided, proving that a subsequence of the adaptively generated solutions converges strongly to a solution of the continuous optimality system.
Numerical examples in 2D demonstrate the effectiveness and efficiency of the proposed AFEM approach compared to uniform refinement, in terms of both the accuracy of the optimized designs and the computational time savings.
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by Jing Li,Yife... a las arxiv.org 04-02-2024
https://arxiv.org/pdf/2310.03970.pdfConsultas más profundas