Theses and Dissertations at Montana State University (MSU)

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    Selected multivariate statistical methods applied to runoff data from Montana watersheds
    (Montana State University - Bozeman, College of Engineering, 1968) Lewis, Gary Lee
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    Design and installation of a study to determine the effect of multiple logging roads on the soil mantle hydrology of a spruce-fir forest
    (Montana State University - Bozeman, College of Engineering, 1967) Burroughs, Edward Robbins
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    Analysis of the Soil Conservation Service Project Formulation Program - Hydrology
    (Montana State University - Bozeman, College of Engineering, 1968) Ferris, Orrin Albert
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    The effect of unit weight and slope on the erosion of unprotected slopes
    (Montana State University - Bozeman, College of Engineering, 1967) Foster, Richard Lee
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    Frequency of peak flows predicted from rainfall frequencies
    (Montana State University - Bozeman, College of Engineering, 1968) Robinson, Lee
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    A conceptual precipitation-runoff modeling suite : model selection, calibration and predictive uncertainty assessment
    (Montana State University - Bozeman, College of Engineering, 2008) Smith, Tyler Jon; Chairperson, Graduate Committee: Joel Cahoon; Lucy Marshall (co-chair)
    In Montana and much of the Rocky Mountain West, the single most important parameter in forecasting the controls on regional water resources is snowpack. Despite the heightened importance of snowpack, few studies have considered the representation of uncertainty in coupled snowmelt/hydrologic conceptual models. Uncertainty estimation provides a direct interpretation of the risk associated with predictive modeling results. Bayesian inference, through the application of Markov chain Monte Carlo methods, provides a statistical means of approximating uncertainty associated with both the parameters and the model structure. This thesis addresses the complexities of predictive modeling in hydrology through the development, implementation and analysis of a suite of conceptual hydrologic models under a Bayesian inference framework. The research is presented in four main sections. First, a comparative assessment of three recently developed Markov chain Monte Carlo algorithms, based on their performance across two case studies, is performed. This study has revealed that the extreme complexity of the parameter space associated with simple, conceptual models is best explored by the Delayed Rejection Adaptive Metropolis algorithm. Second, a complete description of the models and study site incorporated in the study are presented, building on established theories of model development. Third, an investigation of the value of each model structure, considering predictive performance, uncertainty and physical realism is presented. This section builds on results of the first section, through the application of the Delayed Rejection Adaptive Metropolis algorithm for model calibration and uncertainty quantification under Bayesian principles. Finally, a discussion of the Simulation and Prediction Lab for Analysis of Snowmelt Hydrology, developed to incorporate the tasks of model selection, calibration and uncertainty analysis into a simple graphical user interface is explained. The application of a complete modeling framework from model selection to calibration and assessment presented in this thesis represents a holistic approach to the development of improved understanding of snow-dominated watersheds through prediction by coupled snowmelt/hydrologic modeling strategies.
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