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Cokriging for multivariate Hilbert space valued random fields: application to multi-fidelity computer code emulation
Authors:Email authorEmail author  Alessandra?Menafoglio  Guang?Yang  Jef?Caers
Institution:1.Stanford Center for Reservoir Forecasting (SCRF),Stanford University,Stanford,USA;2.MOX,Politecnico di Milano,Milan,Italy
Abstract:In this paper we propose Universal trace co-kriging, a novel methodology for interpolation of multivariate Hilbert space valued functional data. Such data commonly arises in multi-fidelity numerical modeling of the subsurface and it is a part of many modern uncertainty quantification studies. Besides theoretical developments we also present methodological evaluation and comparisons with the recently published projection based approach by Bohorquez et al. (Stoch Environ Res Risk Assess 31(1):53–70, 2016.  https://doi.org/10.1007/s00477-016-1266-y). Our evaluations and analyses were performed on synthetic (oil reservoir) and real field (uranium contamination) subsurface uncertainty quantification case studies. Monte Carlo analyses were conducted to draw important conclusions and to provide practical guidelines for all future practitioners.
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