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“Space, the Final Frontier”: How Good are Agent-Based Models at Simulating Individuals and Space in Cities?

机译:“空间,最后的边界”:基于Agent的模型在模拟城市中的个人和空间方面有多好?

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摘要

Cities are complex systems, comprising of many interacting parts. How we simulate and understand causality in urban systems is continually evolving. Over the last decade the agent-based modeling (ABM) paradigm has provided a new lens for understanding the effects of interactions of individuals and how through such interactions macro structures emerge, both in the social and physical environment of cities. However, such a paradigm has been hindered due to computational power and a lack of large fine scale datasets. Within the last few years we have witnessed a massive increase in computational processing power and storage, combined with the onset of Big Data. Today geographers find themselves in a data rich era. We now have access to a variety of data sources (e.g., social media, mobile phone data, etc .) that tells us how, and when, individuals are using urban spaces. These data raise several questions: can we effectively use them to understand and model cities as complex entities? How well have ABM approaches lent themselves to simulating the dynamics of urban processes? What has been, or will be, the influence of Big Data on increasing our ability to understand and simulate cities? What is the appropriate level of spatial analysis and time frame to model urban phenomena? Within this paper we discuss these questions using several examples of ABM applied to urban geography to begin a dialogue about the utility of ABM for urban modeling. The arguments that the paper raises are applicable across the wider research environment where researchers are considering using this approach.
机译:城市是复杂的系统,由许多相互作用的部分组成。我们如何模拟和理解城市系统中的因果关系正在不断发展。在过去的十年中,基于主体的建模(ABM)范式为理解个人互动的影响以及城市社会和自然环境中宏观结构如何通过这种互动出现提供了新的视角。但是,由于计算能力强和缺乏大型精细数据集,这种范例受到了阻碍。在过去的几年中,随着大数据的出现,我们见证了计算处理能力和存储的巨大增长。今天,地理学家发现自己处于一个数据丰富的时代。现在,我们可以访问各种数据源(例如社交媒体,移动电话数据等),这些数据源告诉我们个人如何以及何时使用城市空间。这些数据提出了几个问题:我们能否有效地使用它们来将城市理解为复杂的实体并将其建模? ABM方法在模拟城市进程动态方面有多出色?大数据对提高我们理解和模拟城市的能力产生了或将会产生什么影响?对城市现象进行建模的空间分析和时间框架的合适水平是多少?在本文中,我们将使用应用于城市地理的ABM的几个示例来讨论这些问题,以开始讨论ABM在城市建模中的作用。本文提出的论点适用于研究人员正在考虑使用这种方法的更广泛的研究环境。

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