Frozen city: Analysing the disruption and resilience of urban activities during a heavy snowfall event using Google Popular Times

[1]  Jan-Dirk Schmöcker,et al.  Explaining and Predicting Station Demand Patterns Using Google Popular Times Data , 2023, Data Science for Transportation.

[2]  Leticia Serrano-Estrada,et al.  The role of successful public spaces in historic centres. Insights from social media data , 2023, Cities.

[3]  Mengyang Liu,et al.  Spatially heterogeneous influence of street greenery on street-level PM2.5 pollution using mobile monitoring from a three-dimensional perspective , 2023, Urban Climate.

[4]  Jikun Huang,et al.  How online food delivery platforms contributed to the resilience of the urban food system in China during the COVID-19 pandemic , 2022, Global Food Security.

[5]  Alec Foster,et al.  An environmental justice analysis of urban tree canopy distribution and change , 2022, Journal of Urban Affairs.

[6]  B. Menounos,et al.  Future Snow Changes over the Columbia Mountains, Canada, using a Distributed Snow Model , 2022, Climatic Change.

[7]  J. Urchueguía,et al.  Development of sectorial and territorial information system to monitor GHG emissions as local and regional climate governance tool: Case study in Valencia (Spain) , 2022, Urban Climate.

[8]  J. G. García Alvarado,et al.  La borrasca Filomena: características y estimación de daños en el arbolado de Madrid mediante imágenes de satélite , 2022, Boletín de la Asociación de Geógrafos Españoles.

[9]  S. Romshoo,et al.  Impact of climate change on snow precipitation and streamflow in the Upper Indus Basin ending twenty-first century , 2022, Climatic Change.

[10]  Rocío Pérez-Campaña,et al.  Applying a Pedestrian Level of Service in the Context of Social Distancing: The Case of the City of Madrid , 2021, International journal of environmental research and public health.

[11]  J. Overpeck,et al.  Climate Change 2007: The Physical Science Basis , 2007 .

[12]  Qijiao Xie,et al.  Monitoring thermal environment deterioration and its dynamic response to urban expansion in Wuhan, China , 2021 .

[13]  B. Hobbs,et al.  Monitoring intra-urban temperature with dense sensor networks: Fixed or mobile? An empirical study in Baltimore, MD , 2021, Urban Climate.

[14]  M. Franz,et al.  Rapid responding to the COVID-19 crisis: Assessing the resilience in the German restaurant and bar industry , 2021, International Journal of Hospitality Management.

[15]  C. Antoniou,et al.  Explaining demand patterns during COVID-19 using opportunistic data: a case study of the city of Munich , 2021, European Transport Research Review.

[16]  Constantine E. Kontokosta,et al.  Measuring inequality in community resilience to natural disasters using large-scale mobility data , 2021, Nature Communications.

[17]  J. Duro,et al.  Territorial tourism resilience in the COVID-19 summer , 2020, Annals of Tourism Research Empirical Insights.

[18]  J. Gutiérrez,et al.  Consumption and symbolic capital in the metropolitan space: Integrating ‘old’ retail data sources with social big data , 2020 .

[19]  T. Jiang,et al.  Snow cover loss compounding the future economic vulnerability of western China. , 2020, The Science of the total environment.

[20]  Scott G. Dacko,et al.  Google Popular Times: towards a better understanding of tourist customer patronage behavior , 2020 .

[21]  M. Ohba,et al.  Impacts of climate change on heavy wet snowfall in Japan , 2020, Climate Dynamics.

[22]  Pablo Martí,et al.  Social Media data: Challenges, opportunities and limitations in urban studies , 2019, Comput. Environ. Urban Syst..

[23]  Yu Cui,et al.  Forecasting current and next trip purpose with social media data and Google Places , 2018, Transportation Research Part C: Emerging Technologies.

[24]  D. Takeuchi,et al.  Residential Segregation and Racial/Ethnic Disparities in Ambient Air Pollution , 2018, Race and social problems.

[25]  Shawn D. Newsam,et al.  Quantitative Comparison of Open-Source Data for Fine-Grain Mapping of Land Use , 2017, UrbanGIS@SIGSPATIAL.

[26]  Xiaoping Liu,et al.  Sensing spatial distribution of urban land use by integrating points-of-interest and Google Word2Vec model , 2017, Int. J. Geogr. Inf. Sci..

[27]  P. Stott,et al.  How climate change affects extreme weather events , 2016, Science.

[28]  Alison L. Kay,et al.  An assessment of the possible impacts of climate change on snow and peak river flows across Britain , 2016, Climatic Change.

[29]  Sara Meerow,et al.  Defining urban resilience: A review , 2016 .

[30]  J. Fowler,et al.  Rapid assessment of disaster damage using social media activity , 2016, Science Advances.

[31]  K. Ard By all measures: an examination of the relationship between segregation and health risk from air pollution , 2016 .

[32]  Sako Musterd,et al.  Socioeconomic segregation in European capital cities. Increasing separation between poor and rich , 2015, SSRN Electronic Journal.

[33]  Malte Jahn,et al.  Economics of extreme weather events: Terminology and regional impact models , 2015 .

[34]  E. García‐Ortega,et al.  Numerical diagnosis of a heavy snowfall event in the center of the Iberian Peninsula , 2015 .

[35]  J. Lawrimore,et al.  The Regional Snowfall Index , 2014 .

[36]  M. De Sario,et al.  Climate change, extreme weather events, air pollution and respiratory health in Europe , 2013, European Respiratory Journal.

[37]  Gerhard Krinner,et al.  An analysis of present and future seasonal Northern Hemisphere land snow cover simulated by CMIP5 coupled climate models , 2012 .

[38]  Erik Jenelius,et al.  Road network vulnerability analysis of area-covering disruptions: A grid-based approach with case study , 2012 .

[39]  S. G. Decker,et al.  The Local Winter Storm Scale: A Measure of the Intrinsic Ability of Winter Storms to Disrupt Society , 2011 .

[40]  Juan Ignacio López-Moreno,et al.  Effects of climate change on the intensity and frequency of heavy snowfall events in the Pyrenees , 2011 .

[41]  Mark Freeman,et al.  Fire, Wind and Water: Social Networks in Natural Disasters , 2011, J. Cases Inf. Technol..

[42]  M. L. Cadenasso,et al.  Characterization of Households and its Implications for the Vegetation of Urban Ecosystems , 2006, Ecosystems.

[43]  J. Jaagus THE IMPACT OF CLIMATE CHANGE ON THE SNOW COVER PATTERN IN ESTONIA , 1997 .

[44]  A. Perry,et al.  The economic and social disruption arising from the snowfall hazard in Scotland—The example of January 1978 , 1980 .

[45]  De Freitas,et al.  Estimation of the Disruptive Impact of Snowfalls in Urban Areas , 1975 .

[46]  J. Rooney,et al.  The Urban Snow Hazard in the United States: An Appraisal of Disruption , 1967 .

[47]  J. Gutiérrez,et al.  Towards a new urban geography of expenditure: Using bank card transactions data to analyze multi-sector spatiotemporal distributions , 2022, Cities.

[48]  Anqi Lin,et al.  Identifying Urban Building Function by Integrating Remote Sensing Imagery and POI Data , 2021, IEEE Journal of Selected Topics in Applied Earth Observations and Remote Sensing.

[49]  D. Faranda,et al.  An attempt to explain recent changes in European snowfall extremes , 2020 .

[50]  Qi Wang,et al.  Resilience of Human Mobility Under the Influence of Typhoons , 2015 .

[51]  Gordon McBean,et al.  Climate Change and Extreme Weather: A Basis for Action , 2004 .