A quick-start guide for conducting a sensitivity analysis focusing on data poor coastal environments Model outcomes inherently involve a degree of uncertainty. This is due to the high degree of natural variability and our limited understanding of underlying processes. In data poor environments not much data on the coastal area under study is available. The limited data availability complicates model calibration and validation. Consequently the degree of uncertainty of model outcomes in data poor environments is higher compared to data rich environments. Conducting a sensitivity analysis is a way to deal with modeling under uncertainty. Sensitivity analysis is the study of how the uncertainty in the output of a model can be apportioned to different sources of uncertainty in the model input. A sensitivity analysis can be very time-consuming due to Engineers use approaches to speed up the sensitivity analysis through: The aim of this research is to develop a quick-start guide that can assist in the decision-making on the speed-accuracy tradeoff related to the three approaches. This quick-start guide is useful for engineers who aim to obtain quick insights in the coastal area under study, especially when this area is a data poor environment. |
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Info:
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Name |
Mieke van Arkel |
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mieke.vanarkel@deltares.nl |
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Room |
Tetra - Flex |
Software package |
<software> |
Start Date |
<date> |
Specialisation Programme |
<programme> |
Deltares supervisor |
Wiebe de Boer |
TU Delft supervisor |
Arjen Luijendijk |