In this work, we investigate the performance CutFEM as a high fidelity solver as well as we construct a competent and economical reduced order solver for PDE-constrained optimization problems in parametrized domains that live in a fixed background geometry and mesh. Its effectiveness and reliability will be assessed through its application for the numerical solution of quadratic optimization problems with elliptic equations as constraints, examining an archetypal case. The reduction strategy will be via Proper Orthogonal Decomposition of suitable FE snapshots, using an aggregated state and adjoint test space, while the efficiency of the offline-online decoupling will be ensured by means of Discrete Empirical Interpolation of the optimality system matrix and right-hand side, enabling thus a rapid resolution of the reduced order model for each new spatial configuration.
翻译:在这项工作中,我们调查CutFEM作为高度忠诚解答者的性能,并针对在固定背景几何和网格中生活的对称化领域受PDE限制的优化问题,建立一个合格和经济经济减缩的订单解答器,其有效性和可靠性将通过应用该软件来评估,用于以椭圆方程式作为制约的二次优化问题的数字解决方案,并研究一个古老案例。 削减战略将通过利用综合状态和联合测试空间对合适的FE片进行适当的正正正方形分解,同时通过对最佳系统矩阵和右侧进行分解式的实证性内插,确保离线脱钩的效率,从而能够迅速解决每个新的空间配置的缩序模式。