Demonstration of the Relationship between Sensitivity and Identifiability for Inverse Uncertainty Quantification
Xu Wu, Koroush Shirvan, Tomasz Kozlowski

TL;DR
This paper explores how the sensitivity of model responses influences the identifiability of parameters in inverse uncertainty quantification, demonstrating that selecting significant responses is crucial for accurate calibration.
Contribution
It establishes a direct relationship between parameter sensitivity and identifiability, providing practical guidance for response selection in inverse UQ without relying on informative priors.
Findings
Identifiability depends on parameter sensitivity to responses.
Significant responses are essential for parameter identifiability.
Improper response choice can lead to fake identifiability.
Abstract
Inverse Uncertainty Quantification (UQ), or Bayesian calibration, is the process to quantify the uncertainties of random input parameters based on experimental data. The introduction of model discrepancy term is significant because "over-fitting" can theoretically be avoided. But it also poses challenges in the practical applications. One of the mostly concerned and unresolved problem is the "lack of identifiability" issue. With the presence of model discrepancy, inverse UQ becomes "non-identifiable" in the sense that it is difficult to precisely distinguish between the parameter uncertainties and model discrepancy when estimating the calibration parameters. Previous research to alleviate the non-identifiability issue focused on using informative priors for the calibration parameters and the model discrepancy, which is usually not a viable solution because one rarely has such accurate…
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