Ly Amina, Davenport Frances V, Diffenbaugh Noah S
Department of Earth System Science Stanford University Stanford CA USA.
Department of Atmospheric Science Colorado State University Fort Collins CO USA.
Geohealth. 2023 Jun 6;7(6):e2022GH000772. doi: 10.1029/2022GH000772. eCollection 2023 Jun.
Studies on the relationship between temperature and local, small scale mobility are limited, and sensitive to the region and time period of interest. We contribute to the growing mobility literature through a detailed characterization of the observed temperature-mobility relationship in the San Francisco Bay Area at fine spatial and temporal scale across two summers (2020-2021). We used anonymized cellphone data from SafeGraph's neighborhood patterns data set and gridded temperature data from gridMET, and analyzed the influence of incremental changes in temperature on mobility rate (i.e., visits per capita) using a panel regression with fixed effects. This strategy enabled us to control for spatial and temporal variability across the studied region. Our analysis suggested that all areas exhibited lower mobility rate in response to higher summer temperatures. We then explored how several additional variables altered these results. Extremely hot days resulted in faster mobility declines with increasing temperatures. Weekdays were often more resistant to temperature changes when compared to the weekend. In addition, the rate of decrease in mobility in response to high temperature was significantly greater among the wealthiest census block groups compared with the least wealthy. Further, the least mobile locations experienced significant differences in mobility response compared to the rest of the data set. Given the fundamental differences in the mobility response to temperature across most of our additive variables, our results are relevant for future mobility studies in the region.
关于温度与局部小尺度流动性之间关系的研究有限,且对所关注的区域和时间段敏感。我们通过在两个夏天(2020 - 2021年)以精细的空间和时间尺度详细刻画旧金山湾区观测到的温度 - 流动性关系,为不断增长的流动性文献做出了贡献。我们使用了来自SafeGraph邻里模式数据集的匿名手机数据以及来自gridMET的网格化温度数据,并通过固定效应面板回归分析了温度的增量变化对流动率(即人均访问量)的影响。这种策略使我们能够控制研究区域内的空间和时间变异性。我们的分析表明,所有区域在夏季温度较高时流动率都较低。然后,我们探讨了几个其他变量如何改变这些结果。极端炎热的日子导致随着温度升高流动率下降得更快。与周末相比,工作日通常对温度变化更具抵抗力。此外,与最不富裕的人口普查街区组相比,最富裕的人口普查街区组对高温的流动率下降幅度明显更大。此外,流动性最低的地点与数据集中的其他地点相比,在流动性响应方面存在显著差异。鉴于我们大多数附加变量对温度的流动性响应存在根本差异,我们的结果与该地区未来的流动性研究相关。