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Diagnosing the performance of human mobility models at small spatial scales using volunteered geographical information

机译:使用自愿性地理信息在小空间尺度上诊断人类出行模型的性能

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摘要

Accurate modelling of local population movement patterns is a core, contemporary concern for urban policymakers, affecting both the short-term deployment of public transport resources and the longer-term planning of transport infrastructure. Yet, while macro-level population movement models (such as the gravity and radiation models) are well developed, micro-level alternatives are in much shorter supply, with most macro-models known to perform poorly at smaller geographical scales. In this paper, we take a first step to remedy this deficit, by leveraging two novel datasets to analyse where and why macro-level models of human mobility break down. We show how freely available data from OpenStreetMap concerning land use composition of different areas around the county of Oxfordshire in the UK can be used to diagnose mobility models and understand the types of trips they over- and underestimate when compared with empirical volumes derived from aggregated, anonymous smartphone location data. We argue for new modelling strategies that move beyond rough heuristics such as distance and population towards a detailed, granular understanding of the opportunities presented in different regions.
机译:对当地人口流动模式的精确建模是当代城市决策者关注的核心问题,它影响着公共交通资源的短期部署和交通基础设施的长期规划。然而,尽管宏观层次上的人口迁移模型(例如引力和辐射模型)得到了很好的发展,但微观层次的替代方案却供不应求,众所周知,大多数宏观模型在较小的地理尺度上表现不佳。在本文中,我们迈出了第一步,通过利用两个新颖的数据集来分析宏观水平的人类移动性模型在何处以及为什么会崩溃,从而弥补这一不足。我们展示了如何从OpenStreetMap中免费获得有关英国牛津郡县周围不同地区土地利用构成的数据,这些数据可用于诊断出行模型,并与通过汇总得出的经验量相比,了解他们过高和过低估计的出行类型,匿名智能手机位置数据。我们主张采用新的建模策略,该策略应从粗略的启发式方法(如距离和人口)转变为对不同地区所提供机会的详细,细致的理解。

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