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Lightening the performance burden of individual-based models through dimensional analysis and scale modeling

机译:通过维度分析和规模建模减轻基于个人的模型的性能负担

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摘要

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 can 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 © 2009 John Wiley & Sons, Ltd.
机译:尽管基于个人的模型对于某些建模问题很有吸引力,但是通过限制模型的理解,完善和用户交互,模拟大量人口所需的漫长时间可能会带来较高的机会成本。本文演示了一种使用尺寸分析和比例建模来减少与基于个人的模型仿真相关的性能障碍的新技术。给定一个具有大量人口的尺寸均一的模拟模型,我们提出了一种严格的,系统的和通用的技术来制定一个“缩小规模的”基于个人的模型,用于模拟较小的人口。缩小比例模型的输出可以精确地转换为代表完整比例模型的结果,而无需运行完整比例模型。尽管离散化效果和异质性限制了可以实现的缩放程度,但是这些技术值得注意的是仅依赖于完整模型的尺寸同质性,而不依赖于模型行为的细节或特定数学框架的使用。版权所有©2009 John Wiley&Sons,Ltd.

著录项

  • 来源
    《System dynamics review》 |2009年第2期|101-134|共34页
  • 作者

    Nathaniel Osgood;

  • 作者单位

    Department of Computer Science, 280.6 Thorvaldson Building, 110 Science Place, University of Saskatchewan, Saskatoon, SK S7N 5C9 Canada;

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  • 正文语种 eng
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