Title of article
Uncertainty quantification and inference of Manning’s friction coefficients using DART buoy data during the Tōhoku tsunami
Author/Authors
M. and Sraj، نويسنده , , Ihab and Mandli، نويسنده , , Kyle T. and Knio، نويسنده , , Omar M. and Dawson، نويسنده , , Clint N. and Hoteit، نويسنده , , Ibrahim، نويسنده ,
Issue Information
روزنامه با شماره پیاپی سال 2014
Pages
16
From page
82
To page
97
Abstract
Tsunami computational models are employed to explore multiple flooding scenarios and to predict water elevations. However, accurate estimation of water elevations requires accurate estimation of many model parameters including the Manning’s n friction parameterization. Our objective is to develop an efficient approach for the uncertainty quantification and inference of the Manning’s n coefficient which we characterize here by three different parameters set to be constant in the on-shore, near-shore and deep-water regions as defined using iso-baths. We use Polynomial Chaos (PC) to build an inexpensive surrogate for the GeoClaw model and employ Bayesian inference to estimate and quantify uncertainties related to relevant parameters using the DART buoy data collected during the Tōhoku tsunami. The surrogate model significantly reduces the computational burden of the Markov Chain Monte-Carlo (MCMC) sampling of the Bayesian inference. The PC surrogate is also used to perform a sensitivity analysis.
Keywords
Sensitivity analysis , Bayesian inference , Polynomial chaos , Tsunami , Manning’s n friction coefficient
Journal title
Ocean Modelling
Serial Year
2014
Journal title
Ocean Modelling
Record number
2282316
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