Model calibration and issues related to validation, sensitivity analysis, post-audit, uncertainty evaluation and assessment of prediction data needs
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Abstract
When simulating natural and engineered groundwater flow and transport systems, one objective is to produce a model that accurately represents important aspects of the true system. However, using direct measurements of system characteristics, such as hydraulic conductivity, to construct a model often produces simulated values that poorly match observations of the system state, such as hydraulic heads, flows and concentrations (for example, Barth et al., 2001). This occurs because of inaccuracies in the direct measurements and because the measurements commonly characterize system properties at different scales from that of the model aspect to which they are applied. In these circumstances, the conservation of mass equations represented by flow and transport models can be used to test the applicability of the direct measurements, such as by comparing model simulated values to the system state observations. This comparison leads to calibrating the model, by adjusting the model construction and the system properties as represented by model parameter values, so that the model produces simulated values that reasonably match the observations.
Publication type | Book chapter |
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Publication Subtype | Book Chapter |
Title | Model calibration and issues related to validation, sensitivity analysis, post-audit, uncertainty evaluation and assessment of prediction data needs |
DOI | 10.1007/978-1-4020-5729-8_9 |
Year Published | 2007 |
Language | English |
Publisher | Springer Netherlands |
Contributing office(s) | Office of Ground Water |
Description | 46 p. |
Larger Work Type | Book |
Larger Work Subtype | Monograph |
Larger Work Title | Groundwater: Resource Evaluation, Augmentation, Contamination, Restoration, Modeling and Management |
First page | 237 |
Last page | 282 |
Google Analytic Metrics | Metrics page |