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Published byShannon Richard McCoy Modified over 9 years ago
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Uncertainty Analysis & UATools Statistical network March 3rd 2009
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Outline presentation Why uncertainty analysis? What is it? How to perform an uncertainty analysis? What can I do with the results? Discussion: Do we want UATools? How to arrange further development of UATools?
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Take a physical model … Model R
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… with uncertainties in input… Model R
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… uncertainties in the parameters … Model R
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… uncertainties in the model structure… Model R
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… and thus uncertainty about the results. Model R
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Why uncertainty analysis on models? It suits the character of the modelled processes: variable and uncertain But also: Accuracy of results acceptable? Possible to improve the accuracy? Objectives for further research Estimation of risk of undesired events …
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Example: Regional watermanagement Noordelijke IJsselvallei (Ruben Dahm)
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Example: Regional watermanagement
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Uncertainty analysis in 6 steps: 1.Problem definition 2.Inventory of uncertainties 3.Quantification of uncertainties 4.Identification of main sources of uncertainty 5.Quantification of uncertainty in the model results 6.Interpretation and presentation Tip: Guidance for UA => bulletin\klis
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Model...... R statistics R R Often necessary: Monte Carlo analysis
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Model UATools Define uncertainties Batch run Ensemble of output Statistical analysis of output Select values To facilitate UA: UATools
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Screendump of UATools
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Example: UA of HBC Waddensea Uncertainty in HBC Water level Wave heigth Wave period water level wave height, period critical crest level => Uncertainty in critical crest level Joost Beckers et al.
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Set-up UA of HBC Waddensea SWAN calculations in a Monte Carlo setting h( α w ), U w ( α w ) H m0, T m-1,0 Uncertainty of water level Uncertainty of wind speed SWAN model parameters uncertainty SWAN input uncertainty Hydra-K calculations in a Monte Carlo setting uncertainty of SWAN results uncertainty of HBC uncertainty of crest levels 1a1a 2c2c 2a2a 2b2b 1b1b
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UA Waddensea: Contributions to uncertainty Shallow water locationsDeep water locations Water level statistics Wind speed statistics important at deep water SWAN uncertainty, predominanty depth induced breaking will be less
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Example: river morphology Delft3D variability of the river bed
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shipping width at OLR Example: river morphology Delft3D
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Questions & discussion Do we want UATools? How to arrange further development of UATools?
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