کد مقاله | کد نشریه | سال انتشار | مقاله انگلیسی | نسخه تمام متن |
---|---|---|---|---|
4525806 | 1625656 | 2013 | 17 صفحه PDF | دانلود رایگان |
![عکس صفحه اول مقاله: Distance-based kriging relying on proxy simulations for inverse conditioning Distance-based kriging relying on proxy simulations for inverse conditioning](/preview/png/4525806.png)
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.
► Kriging is proposed to predict the misfit in an inverse procedure.
► The forward model is a costly numerical simulator.
► The input data are high dimensional stochastic parameter fields.
► A fast and approximate numerical model is encapsulated within the covariance kernel.
► The method allows finding rapidly the best parameter fields within a prior ensemble.
Journal: Advances in Water Resources - Volume 52, February 2013, Pages 275–291