Exploring the relationship between the determinants and the ridership decrease of urban rail transit station during the COVID-19 pandemic incorporating spatial heterogeneity

IF 2.6 Q3 TRANSPORTATION
Junfang Li , Haixiao Pan , Weiwei Liu , Yingxue Chen
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Abstract

The study explores the relationship between the determinants and the ridership decrease incorporating spatial heterogeneity. ARIMA model is utilized to estimate the normal ridership assumed absence of COVID-19. Geography weighted regression (GWR) with Gaussian kernel function is constructed for regression. The K-means algorithm is applied to cluster the stations based on coefficients. Stations of Tokyo case are clustered into 2 groups: city area and western ward which represents mainly suburban areas. City stations are mainly influenced by the number of transfer lines, distance to the CBD, number of jobs and residents. In the western ward, the level of importance that residents place on public health primarily influences the ridership decrease. The implementation of work-from-home policies makes number of jobs a positive impactor on the decrease in ridership, with a greater impact observed on urban stations compared to suburban stations. City residents tend to engage in more travel than suburban residents because of less spacious living environments, which partially offsets the decrease in ridership. The findings offer parameters for predicting ridership of both city and suburban stations during public health emergency events, such as COVID-19. They can assist URT operators in developing strategies for balancing passenger demand and operational costs.

结合空间异质性,探讨 COVID-19 大流行期间城市轨道交通车站乘客量减少的决定因素与乘客量减少之间的关系
本研究探讨了决定因素与乘客量减少之间的关系,并纳入了空间异质性。利用 ARIMA 模型来估计假定不存在 COVID-19 的正常乘客量。利用高斯核函数构建地理加权回归(GWR)进行回归。应用 K-means 算法根据系数对车站进行聚类。东京案例中的站点分为两组:城区和主要代表郊区的西区。市区车站主要受换乘线路数量、与中央商务区的距离、工作岗位和居民数量的影响。在西区,居民对公共卫生的重视程度主要影响乘客量的下降。居家办公政策的实施使工作岗位数量成为乘客量减少的一个积极影响因素,与郊区车站相比,市区车站受到的影响更大。由于居住环境不宽敞,城市居民往往比郊区居民出行更多,这部分抵消了乘客减少的影响。研究结果为预测 COVID-19 等公共卫生突发事件期间城市和郊区车站的乘客人数提供了参数。它们可以帮助城市轨道交通运营商制定平衡乘客需求和运营成本的策略。
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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来源期刊
CiteScore
7.10
自引率
8.10%
发文量
41
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