Abstract
In subsurface inverse problems, it is common to assume a perfect process
model that, in the absence of measurement error, would exactly produce
the data. Model bias has been recognized as important, but is resistant
to systematic analysis. To address this problem, we introduce a new
technique based on expansion in series of Laguerre functions, which maps
inverse problems with a convolution structure into matrix inverse
problems with triangular Toeplitz structure. Exploiting this form, we
develop analytic lower bounds on the reconstruction error. We also use
this as the foundation for a Monte Carlo study in which a reconstruction
of a time series of hydraulic head values is attempted using remote
measurements transmitted through an imperfectly characterized domain.
Qualitative properties of the reconstruction error are related to
qualitative properties of the oversimplified inverse model, and the
expected square reconstruction error due to model inadequacy is compared
with that due to measurement error.
Original language | English GB |
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Journal | Geophysical Research Abstracts |
Volume | 34 |
State | Published - 1 Dec 2016 |
Externally published | Yes |
Keywords
- 1805 Computational hydrology
- HYDROLOGYDE: 1873 Uncertainty assessment
- HYDROLOGYDE: 1916 Data and information discovery
- INFORMATICSDE: 1920 Emerging informatics technologies
- INFORMATICS