How Is Urban Greenness Spatially Associated with Dockless Bike Sharing Usage on Weekdays, Weekends, and Holidays?
暂无分享,去创建一个
Shaoying Li | Zhangzhi Tan | Feng Gao | Xiaoming Zhang | Zhipeng Lai | Ziling Tan | Zhangzhi Tan | Feng Gao | Shaoying Li | Ziling Tan | Zhipeng Lai | Xiaoming Zhang
[1] Yao Yao,et al. Using deep learning to examine street view green and blue spaces and their associations with geriatric depression in Beijing, China , 2019, Environment international.
[2] Suhong Zhou,et al. Assessing the Impact of Street-View Greenery on Fear of Neighborhood Crime in Guangzhou, China , 2021, International journal of environmental research and public health.
[3] Christopher R. Cherry,et al. Spatial variations in active mode trip volume at intersections: a local analysis utilizing geographically weighted regression , 2017 .
[4] Shaoying Li,et al. Inferring the trip purposes and uncovering spatio-temporal activity patterns from dockless shared bike dataset in Shenzhen, China , 2021 .
[5] D. Botteldooren,et al. View on outdoor vegetation reduces noise annoyance for dwellers near busy roads , 2016 .
[6] W. Tobler. A Computer Movie Simulating Urban Growth in the Detroit Region , 1970 .
[7] Deborah Salvo,et al. Bikeability: Assessing the Objectively Measured Environment in Relation to Recreation and Transportation Bicycling , 2020, Environment and Behavior.
[8] A. Bauman,et al. Health benefits of cycling: a systematic review , 2011, Scandinavian journal of medicine & science in sports.
[9] Amirreza Nickkar,et al. A spatial-temporal gender and land use analysis of bikeshare ridership: The case study of Baltimore City , 2019, City, Culture and Society.
[10] Xiaoping Liu,et al. Delineating urban functional areas with building-level social media data: A dynamic time warping (DTW) distance based k-medoids method , 2017 .
[11] Paolo Santi,et al. Understanding spatio-temporal heterogeneity of bike-sharing and scooter-sharing mobility , 2020, Comput. Environ. Urban Syst..
[12] Shaoying Li,et al. Understanding the modifiable areal unit problem in dockless bike sharing usage and exploring the interactive effects of built environment factors , 2021, Int. J. Geogr. Inf. Sci..
[13] Xiaoping Liu,et al. Spatially varying impacts of built environment factors on rail transit ridership at station level: A case study in Guangzhou, China , 2020 .
[14] J D Mackenbach,et al. Perceived environmental correlates of cycling for transport among adults in five regions of Europe , 2016, Obesity reviews : an official journal of the International Association for the Study of Obesity.
[15] Tetsuo Yai,et al. Built environment and public bike usage for metro access: A comparison of neighborhoods in Beijing, Taipei, and Tokyo , 2018, Transportation Research Part D: Transport and Environment.
[16] Sofie Compernolle,et al. Built environmental correlates of cycling for transport across Europe , 2017, Health & place.
[17] Yeran Sun,et al. Examining Associations of Environmental Characteristics with Recreational Cycling Behaviour by Street-Level Strava Data , 2017, International journal of environmental research and public health.
[18] Daniel A. Rodriguez,et al. Objective correlates and determinants of bicycle commuting propensity in an urban environment , 2015 .
[19] K. McPherson. Reducing the global prevalence of overweight and obesity , 2014, The Lancet.
[20] Yijie Cao,et al. Contribution of shared bikes to carbon dioxide emission reduction and the economy in Beijing , 2019, Sustainable Cities and Society.
[21] M. Thun,et al. American Cancer Society guidelines on nutrition and physical activity for cancer prevention , 2002, CA: a cancer journal for clinicians.
[22] P. Barnes,et al. GIS-Based Equity Gap Analysis: Case Study of Baltimore Bike Share Program , 2019, Urban Science.
[23] P. Groenewegen,et al. Streetscape greenery and health: stress, social cohesion and physical activity as mediators. , 2013, Social science & medicine.
[24] Takemi Sugiyama,et al. Perceived Neighborhood Environmental Attributes Associated with Walking and Cycling for Transport among Adult Residents of 17 Cities in 12 Countries: The IPEN Study , 2015, Environmental health perspectives.
[25] Ari Rabl,et al. Benefits of shift from car to active transport , 2012 .
[26] Yan Guo,et al. Estimating the Willingness to Pay for Green Space Services in Shanghai: Implications for Social Equity in Urban China , 2017 .
[27] Wei Tu,et al. Unravel the landscape and pulses of cycling activities from a dockless bike-sharing system , 2019, Comput. Environ. Urban Syst..
[28] M. Charlton,et al. Geographically Weighted Regression: A Natural Evolution of the Expansion Method for Spatial Data Analysis , 1998 .
[29] Luis F. Miranda-Moreno,et al. Exploring the link between the neighborhood typologies, bicycle infrastructure and commuting cycling over time and the potential impact on commuter GHG emissions , 2016 .
[30] S. Melo,et al. Spatial Modeling for Homicide Rates Estimation in Pernambuco State-Brazil , 2020, ISPRS Int. J. Geo Inf..
[31] Yu Liu,et al. Integrating multi-source big data to infer building functions , 2017, Int. J. Geogr. Inf. Sci..
[32] Karel Martens,et al. The bicycle as a feedering mode: experiences from three European countries , 2004 .
[33] Shengxiao Li,et al. Bicycle-metro integration in a growing city: The determinants of cycling as a transfer mode in metro station areas in Beijing , 2017 .
[34] L. Steg,et al. Promoting physical activity and reducing climate change: opportunities to replace short car trips with active transportation. , 2009, Preventive medicine.
[35] Patricia Jasmin Krenn,et al. Route choices of transport bicyclists: a comparison of actually used and shortest routes , 2014, International Journal of Behavioral Nutrition and Physical Activity.
[36] J. Wolch,et al. Urban green space, public health, and environmental justice: The challenge of making cities ‘just green enough’ , 2014 .
[37] Jakub Kronenberg,et al. Creating a Map of the Social Functions of Urban Green Spaces in a City with Poor Availability of Spatial Data: A Sociotope for Lodz , 2020, Land.
[38] Zhonghua Gou,et al. Associations between overhead-view and eye-level urban greenness and cycling behaviors , 2019, Cities.
[39] Lili Jiang,et al. Exploring urban taxi ridership and local associated factors using GPS data and geographically weighted regression , 2019, Cities.
[40] Xiaoping Liu,et al. The varying patterns of rail transit ridership and their relationships with fine-scale built environment factors: Big data analytics from Guangzhou , 2020 .
[41] Xiaohu Zhang,et al. Understanding the usage of dockless bike sharing in Singapore , 2018 .
[42] T. Kazantsev,et al. Urban Green Infrastructure Inventory as a Key Prerequisite to Sustainable Cities in Ukraine under Extreme Heat Events , 2021, Sustainability.
[43] George Grekousis,et al. Perceptions of built environment and health outcomes for older Chinese in Beijing: A big data approach with street view images and deep learning technique , 2019, Comput. Environ. Urban Syst..
[44] Ahmed M El-Geneidy,et al. Much-Anticipated Marriage of Cycling and Transit , 2011 .
[45] Yatao Zhang,et al. Mapping fine-scale population distributions at the building level by integrating multisource geospatial big data , 2017, Int. J. Geogr. Inf. Sci..
[46] A. Stewart Fotheringham,et al. Geographically Weighted Regression: A Method for Exploring Spatial Nonstationarity , 2010 .
[47] Shigejiro Yoshida,et al. Use of GIS-derived environmental factors in predicting site indices in Japanese larch plantations in Hokkaido , 2001, Journal of Forest Research.
[48] Michael W. Strohbach,et al. Challenges of urban green space management in the face of using inadequate data , 2017 .
[49] K. Lock,et al. Cycling for transport and public health: a systematic review of the effect of the environment on cycling. , 2011, European journal of public health.
[50] Rui Zhu,et al. Considering user behavior in free-floating bike sharing system design: A data-informed spatial agent-based model , 2019, Sustainable Cities and Society.
[51] Wenwen Li,et al. Understanding intra-urban human mobility through an exploratory spatiotemporal analysis of bike-sharing trajectories , 2020, Int. J. Geogr. Inf. Sci..
[52] A. Yeh,et al. Understanding the modifiable areal unit problem and identifying appropriate spatial unit in jobs–housing balance and employment self-containment using big data , 2020, Transportation.
[53] Wei Tu,et al. Is eye-level greening associated with the use of dockless shared bicycles? , 2020 .
[54] Thomas D. Giles,et al. Obesity and Cardiovascular Disease: Pathophysiology, Evaluation, and Effect of Weight Loss , 2006, Arteriosclerosis, thrombosis, and vascular biology.
[55] Yao Yao,et al. Relationship between eye-level greenness and cycling frequency around metro stations in Shenzhen, China: A big data approach , 2020 .
[56] K Nakamura,et al. Urban residential environments and senior citizens’ longevity in megacity areas: the importance of walkable green spaces , 2002, Journal of epidemiology and community health.
[57] Yu-Chiun Chiou,et al. Factors affecting public transportation usage rate: Geographically weighted regression , 2015 .
[58] Peng Chen,et al. Built environment determinants of bicycle volume: A longitudinal analysis , 2017 .
[59] Jana A. Hirsch,et al. Freedom from the Station: Spatial Equity in Access to Dockless Bike Share. , 2019, Journal of transport geography.
[60] Takemi Sugiyama,et al. International comparisons of the associations between objective measures of the built environment and transport-related walking and cycling: IPEN Adult Study. , 2016, Journal of transport & health.
[61] S. Blair,et al. Effect of physical inactivity on major non-communicable diseases worldwide: an analysis of burden of disease and life expectancy , 2012, BDJ.
[62] A. Jones,et al. Greenspace and obesity: a systematic review of the evidence , 2011, Obesity reviews : an official journal of the International Association for the Study of Obesity.
[63] Yao Yao,et al. Urban greenery and mental wellbeing in adults: Cross-sectional mediation analyses on multiple pathways across different greenery measures. , 2019, Environmental research.
[64] Karolina Lewandowska-Gwarda,et al. Urban Ageing in Europe - Spatiotemporal Analysis of Determinants , 2020, ISPRS Int. J. Geo Inf..