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Quantifying the predictive consequences of model error with linear subspace analysis

February 1, 2014

All computer models are simplified and imperfect simulators of complex natural systems. The discrepancy arising from simplification induces bias in model predictions, which may be amplified by the process of model calibration. This paper presents a new method to identify and quantify the predictive consequences of calibrating a simplified computer model. The method is based on linear theory, and it scales efficiently to the large numbers of parameters and observations characteristic of groundwater and petroleum reservoir models. The method is applied to a range of predictions made with a synthetic integrated surface-water/groundwater model with thousands of parameters. Several different observation processing strategies and parameterization/regularization approaches are examined in detail, including use of the Karhunen-Loève parameter transformation. Predictive bias arising from model error is shown to be prediction specific and often invisible to the modeler. The amount of calibration-induced bias is influenced by several factors, including how expert knowledge is applied in the design of parameterization schemes, the number of parameters adjusted during calibration, how observations and model-generated counterparts are processed, and the level of fit with observations achieved through calibration. Failure to properly implement any of these factors in a prediction-specific manner may increase the potential for predictive bias in ways that are not visible to the calibration and uncertainty analysis process.

Publication Year 2014
Title Quantifying the predictive consequences of model error with linear subspace analysis
DOI 10.1002/2013WR014767
Authors Jeremy T. White, John E. Doherty, Joseph D. Hughes
Publication Type Article
Publication Subtype Journal Article
Series Title Water Resources Research
Index ID 70144299
Record Source USGS Publications Warehouse
USGS Organization Texas Water Science Center