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Distance-based kriging relying on proxy simulations for inverse conditioning
Institution:1. Department of Mathematics and Statistics, University of Bern, Alpeneggstrasse 22, CH-3012 Bern, Switzerland;2. Ecole Nationale Supérieure des Mines, FAYOL-EMSE, LSTI, F-42023 Saint-Etienne, France;3. Centre of Hydrogeology and Geothermics, University of Neuchâtel, 11 Rue Emile Argand, CH-2000 Neuchâtel, Switzerland;4. Department of Computer Science, University of Sheffield, Regent Court, 211 Portobello, Sheffield S1 4DP, UK;1. Institute of Cancer and Genomic Medicine, Institute for Biomedical Research, University of Birmingham, Birmingham B15 2TT, UK;1. Maxwell Institute for Mathematical Sciences, Department of Mathematics, Heriot-Watt University, Edinburgh EH14 4AS, United Kingdom;2. Maxwell Institute for Mathematical Sciences, School of Mathematics, University of Edinburgh, Edinburgh EH9 3FD, United Kingdom;1. Departamento de Etología, Instituto Nacional de Psiquiatría, ‘‘Ramón de la Fuente Muñiz’’, Calzada México-Xochimilco 101, Col. San Lorenzo Huipulco, Tlalpan, 14370 México, D.F., Mexico;2. Laboratorio de Neurofisiología Molecular, Instituto Nacional de Psiquiatría, ‘‘Ramón de la Fuente Muñiz’’, Calzada México-Xochimilco 101, Col. San Lorenzo Huipulco, Tlalpan, 14370 México, D.F., Mexico
Abstract:Let us consider a large set of candidate parameter fields, such as hydraulic conductivity maps, on which we can run an accurate forward flow and transport simulation. We address the issue of rapidly identifying a subset of candidates whose response best match a reference response curve. In order to keep the number of calls to the accurate flow simulator computationally tractable, a recent distance-based approach relying on fast proxy simulations is revisited, and turned into a non-stationary kriging method where the covariance kernel is obtained by combining a classical kernel with the proxy. Once the accurate simulator has been run for an initial subset of parameter fields and a kriging metamodel has been inferred, the predictive distributions of misfits for the remaining parameter fields can be used as a guide to select candidate parameter fields in a sequential way. The proposed algorithm, Proxy-based Kriging for Sequential Inversion (ProKSI), relies on a variant of the Expected Improvement, a popular criterion for kriging-based global optimization. A statistical benchmark of ProKSI’s performances illustrates the efficiency and the robustness of the approach when using different kinds of proxies.
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