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Published May 2018 | Submitted
Journal Article Open

Parameterizations for ensemble Kalman inversion

Abstract

The use of ensemble methods to solve inverse problems is attractive because it is a derivative-free methodology which is also well-adapted to parallelization. In its basic iterative form the method produces an ensemble of solutions which lie in the linear span of the initial ensemble. Choice of the parameterization of the unknown field is thus a key component of the success of the method. We demonstrate how both geometric ideas and hierarchical ideas can be used to design effective parameterizations for a number of applied inverse problems arising in electrical impedance tomography, groundwater flow and source inversion. In particular we show how geometric ideas, including the level set method, can be used to reconstruct piecewise continuous fields, and we show how hierarchical methods can be used to learn key parameters in continuous fields, such as length-scales, resulting in improved reconstructions. Geometric and hierarchical ideas are combined in the level set method to find piecewise constant reconstructions with interfaces of unknown topology.

Additional Information

© 2018 IOP Publishing Ltd. Received 6 September 2017; Accepted 15 March 2018; Accepted Manuscript online 15 March 2018; Published 13 April 2018. The authors are grateful to M. M. Dunlop, O. Papaspiliopoulos and G. O. Roberts for helpful discussions about centering and non-centering parameterizations. The research of AMS was partially supported by the EPSRC programme grant EQUIP and by AFOSR Grant FA9550-17-1-0185. LR was supported by the EPSRC programme grant EQUIP. NKC was partially supported by the EPSRC MASDOC Graduate Training Program and by Premier Oil.

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August 19, 2023
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