Uncertainty Analysis for Land Surface Model Predictions: Application to the Simple Biosphere 3 and Noah Models at Tropical and Semiarid Locations

Uncertainty in model predictions is associated with data, parameters, and model structure. The estimation of these contributions to uncertainty is a critical issue in hydrology. Using a variety of single and multiple criterion methods for sensitivity analysis and inverse modeling, the behaviors of t...

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Main Author: Roundy, Joshua K.
Format: Others
Published: DigitalCommons@USU 2009
Subjects:
Online Access:https://digitalcommons.usu.edu/etd/404
https://digitalcommons.usu.edu/cgi/viewcontent.cgi?article=1417&context=etd
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spelling ndltd-UTAHS-oai-digitalcommons.usu.edu-etd-14172019-10-13T05:55:32Z Uncertainty Analysis for Land Surface Model Predictions: Application to the Simple Biosphere 3 and Noah Models at Tropical and Semiarid Locations Roundy, Joshua K. Uncertainty in model predictions is associated with data, parameters, and model structure. The estimation of these contributions to uncertainty is a critical issue in hydrology. Using a variety of single and multiple criterion methods for sensitivity analysis and inverse modeling, the behaviors of two state-of-the-art land surface models, the Simple Biosphere Model 3 and Noah model, are analyzed. The different algorithms used for sensitivity and inverse modeling are analyzed and compared along with the performance of the land surface models. Generalized sensitivity and variance methods are used for the sensitivity analysis, including the Multi-Objective Generalized Sensitivity Analysis, the Extended Fourier Amplitude Sensitivity Test, and the method of Sobol. The methods used for the parameter uncertainty estimation are based on Markov Chain Monte Carlo simulations with Metropolis type algorithms and include A Multi-algorithm Genetically Adaptive Multi-objective algorithm, Differential Evolution Adaptive Metropolis, the Shuffled Complex Evolution Metropolis, and the Multi-objective Shuffled Complex Evolution Metropolis algorithms. The analysis focuses on the behavior of land surface model predictions for sensible heat, latent heat, and carbon fluxes at the surface. This is done using data from hydrometeorological towers collected at several locations within the Large-Scale Biosphere Atmosphere Experiment in Amazonia domain (Amazon tropical forest) and at locations in Arizona (semiarid grass and shrub-land). The influence that the specific location exerts upon the model simulation is also analyzed. In addition, the Santarém kilometer 67 site located in the Large-Scale Biosphere Atmosphere Experiment in Amazonia domain is further analyzed by using datasets with different levels of quality control for evaluating the resulting effects on the performance of the individual models. The method of Sobol was shown to give the best estimates of sensitivity for the variance-based algorithms and tended to be conservative in terms of assigning parameter sensitivity, while the multi-objective generalized sensitivity algorithm gave a more liberal number of sensitive parameters. For the optimization, the Multi-algorithm Genetically Adaptive Multi-objective algorithm consistently resulted in the smallest overall error; however all other algorithms gave similar results. Furthermore the Simple Biosphere Model 3 provided better estimates of the latent heat and the Noah model gave better estimates of the sensible heat. 2009-05-01T07:00:00Z text application/pdf https://digitalcommons.usu.edu/etd/404 https://digitalcommons.usu.edu/cgi/viewcontent.cgi?article=1417&context=etd Copyright for this work is held by the author. Transmission or reproduction of materials protected by copyright beyond that allowed by fair use requires the written permission of the copyright owners. Works not in the public domain cannot be commercially exploited without permission of the copyright owner. Responsibility for any use rests exclusively with the user. For more information contact Andrew Wesolek (andrew.wesolek@usu.edu). All Graduate Theses and Dissertations DigitalCommons@USU Land Surface Model Optimization Sensitivity Analysis Civil and Environmental Engineering
collection NDLTD
format Others
sources NDLTD
topic Land Surface Model
Optimization
Sensitivity Analysis
Civil and Environmental Engineering
spellingShingle Land Surface Model
Optimization
Sensitivity Analysis
Civil and Environmental Engineering
Roundy, Joshua K.
Uncertainty Analysis for Land Surface Model Predictions: Application to the Simple Biosphere 3 and Noah Models at Tropical and Semiarid Locations
description Uncertainty in model predictions is associated with data, parameters, and model structure. The estimation of these contributions to uncertainty is a critical issue in hydrology. Using a variety of single and multiple criterion methods for sensitivity analysis and inverse modeling, the behaviors of two state-of-the-art land surface models, the Simple Biosphere Model 3 and Noah model, are analyzed. The different algorithms used for sensitivity and inverse modeling are analyzed and compared along with the performance of the land surface models. Generalized sensitivity and variance methods are used for the sensitivity analysis, including the Multi-Objective Generalized Sensitivity Analysis, the Extended Fourier Amplitude Sensitivity Test, and the method of Sobol. The methods used for the parameter uncertainty estimation are based on Markov Chain Monte Carlo simulations with Metropolis type algorithms and include A Multi-algorithm Genetically Adaptive Multi-objective algorithm, Differential Evolution Adaptive Metropolis, the Shuffled Complex Evolution Metropolis, and the Multi-objective Shuffled Complex Evolution Metropolis algorithms. The analysis focuses on the behavior of land surface model predictions for sensible heat, latent heat, and carbon fluxes at the surface. This is done using data from hydrometeorological towers collected at several locations within the Large-Scale Biosphere Atmosphere Experiment in Amazonia domain (Amazon tropical forest) and at locations in Arizona (semiarid grass and shrub-land). The influence that the specific location exerts upon the model simulation is also analyzed. In addition, the Santarém kilometer 67 site located in the Large-Scale Biosphere Atmosphere Experiment in Amazonia domain is further analyzed by using datasets with different levels of quality control for evaluating the resulting effects on the performance of the individual models. The method of Sobol was shown to give the best estimates of sensitivity for the variance-based algorithms and tended to be conservative in terms of assigning parameter sensitivity, while the multi-objective generalized sensitivity algorithm gave a more liberal number of sensitive parameters. For the optimization, the Multi-algorithm Genetically Adaptive Multi-objective algorithm consistently resulted in the smallest overall error; however all other algorithms gave similar results. Furthermore the Simple Biosphere Model 3 provided better estimates of the latent heat and the Noah model gave better estimates of the sensible heat.
author Roundy, Joshua K.
author_facet Roundy, Joshua K.
author_sort Roundy, Joshua K.
title Uncertainty Analysis for Land Surface Model Predictions: Application to the Simple Biosphere 3 and Noah Models at Tropical and Semiarid Locations
title_short Uncertainty Analysis for Land Surface Model Predictions: Application to the Simple Biosphere 3 and Noah Models at Tropical and Semiarid Locations
title_full Uncertainty Analysis for Land Surface Model Predictions: Application to the Simple Biosphere 3 and Noah Models at Tropical and Semiarid Locations
title_fullStr Uncertainty Analysis for Land Surface Model Predictions: Application to the Simple Biosphere 3 and Noah Models at Tropical and Semiarid Locations
title_full_unstemmed Uncertainty Analysis for Land Surface Model Predictions: Application to the Simple Biosphere 3 and Noah Models at Tropical and Semiarid Locations
title_sort uncertainty analysis for land surface model predictions: application to the simple biosphere 3 and noah models at tropical and semiarid locations
publisher DigitalCommons@USU
publishDate 2009
url https://digitalcommons.usu.edu/etd/404
https://digitalcommons.usu.edu/cgi/viewcontent.cgi?article=1417&context=etd
work_keys_str_mv AT roundyjoshuak uncertaintyanalysisforlandsurfacemodelpredictionsapplicationtothesimplebiosphere3andnoahmodelsattropicalandsemiaridlocations
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