Abstract
A new second-order dynamic method (SODM) is proposed for solving ill-posed linear inverse problems in Hilbert spaces. The SODM can be viewed as a combination of Tikhonov regularization and second-order asymptotical regularization methods. As a result, a double-regularization-parameter strategy is adopted. The regularization properties of SODM are demonstrated under both a priori and a posteriori stopping rules. In the context of time discretization, we propose several iterative schemes with different choices of damping parameters. A truncated discrepancy principle is employed as the stop criterion. Finally, numerical experiments are performed to show the efficiency of the SODM: on the whole, compared with the classical Tikhonov method and the first-order dynamical-system method, the SODM leads to more-accurate approximate solutions while requiring fewer-iterative numbers.
Original language | English |
---|---|
Article number | 128642 |
Journal | Applied Mathematics and Computation |
Volume | 473 |
DOIs | |
Publication status | Published - 15 Jul 2024 |
Keywords
- Acceleration
- Convergence
- Dynamical method
- Linear inverse problems
- Regularization