Analyzing demand reduction and recovery of major rail stations in Japan during COVID-19 using mobile spatial statistics

Jiannan Dai, Jan-Dirk Schmöcker, Wenzhe Sun
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引用次数: 0

Abstract

Mobile spatial statistics from across Japan are used to analyze the vitality of stations over the COVID period. Time series population information of 500m × 500m meshes that include major stations are extracted. We analyze the demand loss patterns of 69 train stations during the first COVID wave. We firstly discuss the correlation of this data with annual ridership information. We then conduct a clustering analysis of the time series data and distinguish five impact patterns which we try to explain with a multinomial logistic regression. Stations in large cities had higher ridership but were also more affected than smaller cities. We also find that cities with less dense populations and more local population frequenting the station appear to be more robust to the pandemic. Our results can be used to help cities forecasting the impact of future pandemics on the local economy.

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利用移动空间统计分析 COVID-19 期间日本主要铁路车站的需求减少和恢复情况
利用日本全国的移动空间统计数据来分析 COVID 期间各站点的活力。我们提取了包括主要车站在内的 500m × 500m 网格的时间序列人口信息。我们分析了第一波 COVID 期间 69 个火车站的需求损失模式。我们首先讨论了这些数据与年度乘客信息的相关性。然后,我们对时间序列数据进行聚类分析,区分出五种影响模式,并尝试用多项式逻辑回归对其进行解释。大城市的车站乘客量更高,但受到的影响也比小城市更大。我们还发现,人口密度较低且有更多本地人口经常光顾车站的城市似乎更能抵御大流行病的影响。我们的研究结果可用于帮助城市预测未来流行病对当地经济的影响。
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