Abstract
Ensemble Kalman inversion is a parallelizable methodology for solving inverse or parameter estimation problems. Although it is based on ideas from Kalman filtering, it may be viewed as a derivative-free optimization method. In its most basic form it regularizes ill-posed inverse problems through the subspace property: the solution found is in the linear span of the initial ensemble employed. In this work we demonstrate how further regularization can be imposed, incorporating prior information about the underlying unknown. In particular we study how to impose Tikhonov-like Sobolev penalties. As well as introducing this modified ensemble Kalman inversion methodology, we also study its continuous-time limit, proving ensemble collapse; in the language of multi-agent optimization this may be viewed as reaching consensus. We also conduct a suite of numerical experiments to highlight the benefits of Tikhonov regularization in the ensemble inversion context. © 2020 Society for Industrial and Applied Mathematics.
Original language | English |
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Pages (from-to) | 1263-1294 |
Journal | SIAM Journal on Numerical Analysis |
Volume | 58 |
Issue number | 2 |
DOIs | |
Publication status | Published - Jan 2020 |
Externally published | Yes |
Research Keywords
- Bayesian inverse problems
- Ensemble Kalman inversion
- Long-term behavior
- Tikhonov regularization