Lightening the performance burden of individual-based models through dimensional analysis and scale modeling
Authored by Nathaniel Osgood
Date Published: 2009
DOI: 10.1002/sdr.417
Sponsors:
No sponsors listed
Platforms:
AnyLogic
Model Documentation:
Other Narrative
Mathematical description
Model Code URLs:
https://onlinelibrary-wiley-com.ezproxy1.lib.asu.edu/action/downloadSupplement?doi=10.1002%2Fsdr.417&attachmentId=52226695
Abstract
While individual-based models are attractive for some modeling problems, the lengthy times required for simulating large populations can impose
high opportunity costs by limiting model comprehension, refinement and
user interaction. This paper demonstrates a novel technique for using
dimensional analysis and scale modeling to reduce the performance
barriers associated with individual-based model simulation. Given a
dimensionally homogeneous simulation model with a large population, We
propose a rigorous, systematic and general-purpose technique to
formulate a ``reduced-scale{''} individual-based model that simulates a
smaller population. Outputs of the reduced-scale models can be precisely
transformed to yield results representative of a full-scale
model-without the need to run the full-scale model. While discretization
effects and heterogeneity limit the degree of scaling that call be
achieved, these techniques are notable in relying only upon dimensional
homogeneity of the full-scale model. and not on the specifics of model
behavior or use of a particular mathematical framework. Copyright (C)
2009 John Wiley \& Sons. Ltd.
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