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Longitudinal interpolation of parameters characterizing channel geometry by piece-wise polynomial and universal kriging methods: effect on flow modeling

Chrysikopoulos Constantinos

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URI: http://purl.tuc.gr/dl/dias/03A5CB4E-49DE-4126-8E6F-A74E4202F2B6
Year 2004
Type of Item Peer-Reviewed Journal Publication
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Bibliographic Citation Brett F. Sanders , Constantios V. Chrysikopoulos , "Longitudinal interpolation of parameters characterizing channel geometry by piece-wise polynomial and universal kriging methods: effect on flow modeling " , Advances in Water Resources 27 (2004) 1061–1073, https://doi.org/10.1016/j.advwatres.2004.08.010
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Summary

Channel geometry often is described by a set of longitudinally varying parameters measured at a set of survey stations. To supportflow modeling at arbitrary resolution, three methods of parameter interpolation are described including piece-wise linear interpolation,monotone piece-wise-cubic Hermitian interpolation, and universal kriging. The latter gives parameter estimates thatminimize the mean square error of the interpolator, and therefore can be used as a standard against which the accuracy of polynomialmethods can be assessed. Based on the application of these methods to a dataset describing cross-sectional properties at 283stations, piece-wise linear interpolation gives parameter estimates that closely track universal kriging estimates and therefore thismethod is recommended for routine modeling purposes. Piece-wise-cubic interpolation gives parameter estimates that do not trackas well. Differences between cubic and kriging estimates were found to be 2–10 times larger than differences between linear and krigingparameter estimates. In the context of one-dimensional flow modeling, the sensitivity of steady state water level predictions tothe channel bed interpolator is comparable to a 5% change in the Manning coefficient.

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