arXiv Analytics

Sign in

arXiv:2005.02039 [math.NA]AbstractReferencesReviewsResources

Ensemble Kalman filter for neural network based one-shot inversion

Philipp A. Guth, Claudia Schillings, Simon Weissmann

Published 2020-05-05Version 1

We study the use of novel techniques arising in machine learning for inverse problems. Our approach replaces the complex forward model by a neural network, which is trained simultaneously in a one-shot sense when estimating the unknown parameters from data, i.e. the neural network is trained only for the unknown parameter. By establishing a link to the Bayesian approach to inverse problems, an algorithmic framework is developed which ensures the feasibility of the parameter estimate w.r. to the forward model. We propose an efficient, derivative-free optimization method based on variants of the ensemble Kalman inversion. Numerical experiments show that the ensemble Kalman filter for neural network based one-shot inversion is a promising direction combining optimization and machine learning techniques for inverse problems.

Related articles: Most relevant | Search more
arXiv:1702.07894 [math.NA] (Published 2017-02-25)
Convergence Analysis of the Ensemble Kalman Filter for Inverse Problems: the Noisy Case
arXiv:1811.09387 [math.NA] (Published 2018-11-23)
Kinetic Methods for Inverse Problems
arXiv:2106.10062 [math.NA] (Published 2021-06-18)
The ensemble Kalman filter for rare event estimation