{"title":"Explaining demand patterns during COVID-19 using opportunistic data: a case study of the city of Munich.","authors":"Vishal Mahajan, Guido Cantelmo, Constantinos Antoniou","doi":"10.1186/s12544-021-00485-3","DOIUrl":null,"url":null,"abstract":"<p><strong>Background: </strong>The COVID-19 pandemic is a new phenomenon and has affected the population's lifestyle in many ways, such as panic buying (the so-called \"hamster shopping\"), adoption of home-office, and decline in retail shopping. For transportation planners and operators, it is interesting to analyze the spatial factors' role in the demand patterns at a POI (Point of Interest) during the COVID-19 lockdown viz-a-viz before lockdown.</p><p><strong>Data and methods: </strong>This study illustrates a use-case of the POI visitation rate or popularity data and other publicly available data to analyze demand patterns and spatial factors during a highly dynamic and disruptive event like COVID-19. We develop regression models to analyze the correlation of the spatial and non-spatial attributes with the POI popularity before and during COVID-19 lockdown in Munich by using lockdown (treatment) as a dummy variable, with main and interaction effects.</p><p><strong>Results: </strong>In our case-study for Munich, we find consistent behavior of features like stop distance and day-of-the-week in explaining the popularity. The parking area is found to be correlated only in the non-linear models. Interactions of lockdown with POI type, stop-distance, and day-of-the-week are found to be strongly significant. The results might not be transferable to other cities due to the presence of different city-specific factors.</p><p><strong>Conclusion: </strong>The findings from our case-study provide evidence of the impact of the restrictions on POIs and show the significant correlation of POI-type and stop distance with POI popularity. These results suggest local and temporal variability in the impact due to the restrictions, which can impact how cities adapt their transport services to the distinct demand and resulting mobility patterns during future disruptive events.</p>","PeriodicalId":48671,"journal":{"name":"European Transport Research Review","volume":"13 1","pages":"26"},"PeriodicalIF":4.3000,"publicationDate":"2021-01-01","publicationTypes":"Journal Article","fieldsOfStudy":null,"isOpenAccess":false,"openAccessPdf":"https://www.ncbi.nlm.nih.gov/pmc/articles/PMC8050495/pdf/","citationCount":"0","resultStr":null,"platform":"Semanticscholar","paperid":null,"PeriodicalName":"European Transport Research Review","FirstCategoryId":"5","ListUrlMain":"https://doi.org/10.1186/s12544-021-00485-3","RegionNum":3,"RegionCategory":"工程技术","ArticlePicture":[],"TitleCN":null,"AbstractTextCN":null,"PMCID":null,"EPubDate":"2021/4/12 0:00:00","PubModel":"Epub","JCR":"","JCRName":"","Score":null,"Total":0}
引用次数: 0
Abstract
Background: The COVID-19 pandemic is a new phenomenon and has affected the population's lifestyle in many ways, such as panic buying (the so-called "hamster shopping"), adoption of home-office, and decline in retail shopping. For transportation planners and operators, it is interesting to analyze the spatial factors' role in the demand patterns at a POI (Point of Interest) during the COVID-19 lockdown viz-a-viz before lockdown.
Data and methods: This study illustrates a use-case of the POI visitation rate or popularity data and other publicly available data to analyze demand patterns and spatial factors during a highly dynamic and disruptive event like COVID-19. We develop regression models to analyze the correlation of the spatial and non-spatial attributes with the POI popularity before and during COVID-19 lockdown in Munich by using lockdown (treatment) as a dummy variable, with main and interaction effects.
Results: In our case-study for Munich, we find consistent behavior of features like stop distance and day-of-the-week in explaining the popularity. The parking area is found to be correlated only in the non-linear models. Interactions of lockdown with POI type, stop-distance, and day-of-the-week are found to be strongly significant. The results might not be transferable to other cities due to the presence of different city-specific factors.
Conclusion: The findings from our case-study provide evidence of the impact of the restrictions on POIs and show the significant correlation of POI-type and stop distance with POI popularity. These results suggest local and temporal variability in the impact due to the restrictions, which can impact how cities adapt their transport services to the distinct demand and resulting mobility patterns during future disruptive events.
背景:COVID-19 大流行是一种新现象,在许多方面影响了人们的生活方式,如恐慌性购买(所谓的 "仓鼠购物")、采用家庭办公和零售购物减少。对于交通规划者和运营商来说,分析空间因素在 COVID-19 封锁期间与封锁前对兴趣点(POI)需求模式的影响是很有意义的:本研究说明了在 COVID-19 这种高度动态和破坏性事件中,如何利用兴趣点访问率或受欢迎程度数据及其他公开数据来分析需求模式和空间因素。我们建立了回归模型,通过将封锁(处理)作为虚拟变量以及主效应和交互效应,分析慕尼黑 COVID-19 封锁前和封锁期间空间和非空间属性与 POI 人气的相关性:在慕尼黑的案例研究中,我们发现停车距离和星期等特征在解释受欢迎程度方面具有一致性。只有在非线性模型中,停车区域才与之相关。锁定与 POI 类型、站距和周日的交互作用非常显著。由于存在不同的城市特定因素,这些结果可能无法应用于其他城市:我们的案例研究结果提供了限制对 POI 影响的证据,并表明 POI 类型和站点距离与 POI 受欢迎程度存在显著相关性。这些结果表明,限制措施所造成的影响存在地方性和时间性差异,这可能会影响到城市在未来的破坏性事件中如何调整交通服务以适应不同的需求和由此产生的流动模式。
期刊介绍:
European Transport Research Review (ETRR) is a peer-reviewed open access journal publishing original high-quality scholarly research and developments in areas related to transportation science, technologies, policy and practice. Established in 2008 by the European Conference of Transport Research Institutes (ECTRI), the Journal provides researchers and practitioners around the world with an authoritative forum for the dissemination and critical discussion of new ideas and methodologies that originate in, or are of special interest to, the European transport research community. The journal is unique in its field, as it covers all modes of transport and addresses both the engineering and the social science perspective, offering a truly multidisciplinary platform for researchers, practitioners, engineers and policymakers. ETRR is aimed at a readership including researchers, practitioners in the design and operation of transportation systems, and policymakers at the international, national, regional and local levels.