Spatial Microsimulation and Activity Allocation in Python: An Update on the Likeness Toolkit

Joseph V. Tuccillo, James D. Gaboardi
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Abstract

—Understanding human security and social equity issues within human systems requires large-scale models of population dynamics that simulate high-fidelity representations of individuals and access to essential activities (work/school, social, errands, health). Likeness is a Python toolkit that provides these capabilities for Oak Ridge National Laboratory’s (ORNL) UrbanPop spatial microsimulation project. In step with the initial development phase for Likeness (2021 - 2022), we built out several foundational examples of work/school and health service access. In this paper, we describe expansion and scaling of Likeness capabilities to metropolitan areas in the United States. We then provide an integrated demonstration of our methods based on a case study of Leon County, FL and perform validation exercises on 1) neighborhood demographic composition and 2) visits by demographic cohorts (gender/age) obtained from point of interest (POI) footfall data for essential services (grocery stores). Taking into account lessons learned from our case study, we scope improvements to our model as well as provide a roadmap of the anticipated Likeness development cycle into 2023 - 2024.
空间微模拟和活动分配在Python:对相似性工具包的更新
-理解人类系统内的人类安全和社会公平问题,需要大规模的人口动态模型,模拟个人的高保真表现和基本活动(工作/学校、社交、差事、健康)。Likeness是一个Python工具包,它为橡树岭国家实验室(ORNL)的UrbanPop空间微模拟项目提供了这些功能。根据Likeness的初始开发阶段(2021 - 2022年),我们建立了几个工作/学校和医疗服务获取的基本示例。在本文中,我们描述了相似能力在美国大都市地区的扩展和规模。然后,我们基于佛罗里达州莱昂县的案例研究,对我们的方法进行了综合演示,并对以下方面进行了验证练习:1)社区人口构成;2)从基本服务(杂货店)的兴趣点(POI)客流量数据中获得的人口队列(性别/年龄)访问。考虑到从案例研究中吸取的教训,我们对模型进行了改进,并提供了2023 - 2024年预期的相似性开发周期的路线图。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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