The accuracy of the reduced-order model (ROM) mainly depends on the selected basis. Therefore, it is essential to compute an appropriate basis with an efficient numerical procedure when applying ROM to nonlinear problems. In this paper, we propose an online adaptive basis technique to increase the quality of ROM while decreasing the computational costs in nonlinear problems. In the proposed method, the adaptive basis is defined by the low-rank update formulation, and two auxiliary vectors are set to implement this low-rank condition. To simultaneously tackle the issues of accuracy and the computational cost of the ROM basis, the auxiliary vectors are algebraically derived by optimizing a local residual operator. As a result, the reliability of ROM is significantly improved with a low computational cost because the error information can be contained without inverse operations of the full model dimension required in conventional approaches. The other feature of the proposed iterative algorithm is that the number of the initial incremental ROM basis could be varied, unlike in the typical online adaptive basis approaches. It may provide a fast and effective spanning process of the high-quality ROM subspace in the iteration step. A detailed derivation process of the proposed method is presented, and its performance is evaluated in various nonlinear numerical examples.
翻译:减序模型(ROM)的准确性主要取决于选定的基准,因此,在对非线性问题应用ROM时,必须用一个有效的数字程序来计算一个适当的基础,在对非线性问题应用ROM时,必须用一个有效的数字程序来计算一个适当的基础;在本文件中,我们建议采用在线适应基础技术,以提高ROM质量,同时减少非线性问题的计算成本;在拟议方法中,适应基础由低调更新配方来界定,并设置两个辅助矢量来实施这一低级条件;为了同时解决ROM基的准确性和计算成本问题,辅助矢量是通过优化本地残余操作者而从地理上推导出来的;因此,ROM的可靠性有了大幅度提高,计算成本较低,因为错误信息可以包含在不逆向操作常规方法所要求的全模型层面的情况下,从而降低ROM质量;提议的迭代算法的另一个特点是,初始增序ROM基数的数目可以不同,典型的在线适应基础方法不同,它可以提供高质量ROM子空间的快速和有效交错过程;因此,在它的步骤中可以提供详细的计算方法的详细推算出数字。