A framework for uncertainty assessment in simulation models
Authored by Gudrun Wallentin, Adrijana Car
Date Published: 2013
DOI: 10.1080/13658816.2012.715163
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Abstract
In this article, we introduce a conceptual framework for systematic
identification and assessment of sources of uncertainty in simulation
models. This concept builds on a novel typology of uncertainty in model
validation and extends the GIScience research focus on uncertainty in
spatial data to uncertainty in simulation modelling. Such a concept
helps a modeller to interpret and handle uncertainty in order to
efficiently optimise a model and better understand simulation results.
To illustrate our approach, we apply the proposed framework for
uncertainty assessment to the TREE LIne Model (TREELIM), an
individual-based model that simulates forest succession at the alpine
tree line. Using this example, uncertainty is identified in the
modelling workflow during conceptualisation, formalisation, parameterisation, analysis and validation. With help of a set of
indicators we quantify the emerging uncertainties and assess the overall
model uncertainty as a function of all occurring sources of uncertainty.
An understanding of the sources of uncertainty in an ecological model
proves beneficial for: (1) developing a structurally valid model in a
systematic way; (2) deciding if further refinement of the conceptual
model is beneficial for the modelling purpose; and (3) interpreting the
overall model uncertainty by understanding its sources. Our approach
results in a guideline for assessing uncertainty in the validation of
simulation models in a feasible and defensible way, and thus functions
as a toolbox for modellers. We consider this work as a contribution
towards a general concept of uncertainty in spatially explicit
simulation models.
Tags
Dynamics
Validation
Error
Challenges
Sensitivity-analysis
Ecological models
Complex-systems
Habitat
models