摘要
We consider solving linear ill-posed operator equations. Based on a multi-scale decomposition for the solution space, we propose a multi-parameter regularization for solving the equations. We establish weak and strong convergence theorems for the multi-parameter regularization solution. In particular, based on the eigenfunction decomposition, we develop a posteriori choice strategy for multi-parameters which gives a regularization solution with the optimal error bound. Several practical choices of multi-parameters are proposed. We also present numerical experiments to demonstrate the outperformance of the multiparameter regularization over the single parameter regularization.
We consider solving linear ill-posed operator equations. Based on a multi-scale decomposition for the solution space, we propose a multi-parameter regularization for solving the equations. We establish weak and strong convergence theorems for the multi-parameter regularization solution. In particular, based on the eigenfunction decomposition, we develop a posteriori choice strategy for multi-parameters which gives a regularization solution with the optimal error bound. Several practical choices of multi-parameters are proposed. We also present numerical experiments to demonstrate the outperformance of the multiparameter regularization over the single parameter regularization.
基金
supported in part by the Natural Science Foundation of China under grants 10371137
the Foundation of Doctoral Program of National Higher Education of China under grant 20030558008
Guangdong Provincial Natural Science Foundation of China under grant 05003308
the Foundation of Zhongshan University Advanced Research Center
supported in part by the US National Science Foundation under grant CCR-0407476
National Aeronautics and Space Administration under Cooperative Agreement NNX07AC37A
the Natural Science Foundation of China under grants 10371122 and 10631080
the Education Ministry of the People's Republic of China under the Changjiang Scholar Chair Professorship Program through Zhongshan University