Modelling urban cyclists' exposure to black carbon particles using high spatiotemporal data: A statistical approach.
暂无分享,去创建一个
David Segersson | Lars Gidhagen | Gabriela Polezer | Admir Créso Targino | Patricia Krecl | R. Godoi | L. Gidhagen | D. Segersson | P. Krecl | Gabriela Polezer | A. Targino | Yago Alonso Cipoli | Matheus de Oliveira Toloto | Álvaro Parra | Ricardo Henrique Moreton Godoi | A. Parra | Y. Cipoli
[1] Geert Wets,et al. Personal exposure to Black Carbon in transport microenvironments , 2012 .
[2] J. Kamińska,et al. A random forest partition model for predicting NO2 concentrations from traffic flow and meteorological conditions. , 2019, The Science of the total environment.
[3] K. Balakrishnan,et al. Development of land-use regression models for fine particles and black carbon in peri-urban South India. , 2018, The Science of the total environment.
[4] M. Gibson,et al. Spatial variability of on-bicycle black carbon concentrations in the megacity of São Paulo: A pilot study. , 2018, Environmental pollution.
[5] Robert Tibshirani,et al. The Elements of Statistical Learning: Data Mining, Inference, and Prediction, 2nd Edition , 2001, Springer Series in Statistics.
[6] C. Johansson,et al. Trends in black carbon and size-resolved particle number concentrations and vehicle emission factors under real-world conditions , 2017 .
[7] M. Figliozzi,et al. Review of Urban Bicyclists' Intake and Uptake of Traffic-Related Air Pollution , 2014 .
[8] Khalid M. Saqr,et al. A review on the flow structure and pollutant dispersion in urban street canyons for urban planning strategies , 2014, Simul..
[9] J. Gulliver,et al. A review of land-use regression models to assess spatial variation of outdoor air pollution , 2008 .
[10] K. Bhalla,et al. Tracking global bicycle ownership patterns , 2015 .
[11] Bernard De Baets,et al. Development and evaluation of land use regression models for black carbon based on bicycle and pedestrian measurements in the urban environment , 2018, Environ. Model. Softw..
[12] M. Ketzel,et al. Screening of short-lived climate pollutants in a street canyon in a mid-sized city in Brazil , 2016 .
[13] M. Brauer,et al. Land use regression modelling of air pollution in high density high rise cities: A case study in Hong Kong. , 2017, The Science of the total environment.
[14] Min Liu,et al. Spatial characteristics and determinants of in-traffic black carbon in Shanghai, China: Combination of mobile monitoring and land use regression model. , 2019, The Science of the total environment.
[15] I. Mura,et al. Air Pollution alongside Bike-Paths in Bogotá-Colombia , 2016 .
[16] Bernard De Baets,et al. Cyclist exposure to UFP and BC on urban routes in Antwerp, Belgium , 2014 .
[17] P. Krecl,et al. Commuter exposure to black carbon particles on diesel buses, on bicycles and on foot: a case study in a Brazilian city , 2017, Environmental Science and Pollution Research.
[18] Luc Int Panis,et al. Land use regression models as a tool for short, medium and long term exposure to traffic related air pollution. , 2014, The Science of the total environment.
[19] G. Lemasters,et al. Exposure assessment models for elemental components of particulate matter in an urban environment: A comparison of regression and random forest approaches. , 2017, Atmospheric environment.
[20] T. Zhu,et al. Black carbon particles and ozone-oxidized black carbon particles induced lung damage in mice through an interleukin-33 dependent pathway. , 2018, The Science of the total environment.
[21] Gabriela Polezer,et al. Assessing the impact of PM2.5 on respiratory disease using artificial neural networks. , 2018, Environmental pollution.
[22] Leo Breiman,et al. Random Forests , 2001, Machine Learning.
[23] R. Kinnersley,et al. When smoke gets in our eyes: the multiple impacts of atmospheric black carbon on climate, air quality and health. , 2006, Environment international.
[24] K. Pericleous,et al. Modelling air quality in street canyons : a review , 2003 .
[25] M. Heal,et al. Land-Use Regression Modelling of Intra-Urban Air Pollution Variation in China: Current Status and Future Needs , 2018 .
[26] Luc Int Panis,et al. Short-term fluctuations in personal black carbon exposure are associated with rapid changes in carotid arterial stiffening. , 2016, Environment international.
[27] B. Brunekreef,et al. Comparison of Ultrafine Particle and Black Carbon Concentration Predictions from a Mobile and Short-Term Stationary Land-Use Regression Model. , 2016, Environmental science & technology.
[28] M. Brauer,et al. Spatiotemporal land use regression models of fine, ultrafine, and black carbon particulate matter in New Delhi, India. , 2013, Environmental science & technology.
[29] M. Ketzel,et al. Potential to reduce the concentrations of short-lived climate pollutants in traffic environments: A case study in a medium-sized city in Brazil , 2019, Transportation Research Part D: Transport and Environment.
[30] Steve Hankey,et al. Land Use Regression Models of On-Road Particulate Air Pollution (Particle Number, Black Carbon, PM2.5, Particle Size) Using Mobile Monitoring. , 2015, Environmental science & technology.
[31] C. Johansson,et al. A feasibility study of mapping light-absorbing carbon using a taxi fleet as a mobile platform , 2014 .
[32] O. Sarmiento,et al. Exposure to fine particulate, black carbon, and particle number concentration in transportation microenvironments , 2017 .
[33] C. Johansson,et al. Personal exposure to black carbon in Stockholm, using different intra-urban transport modes. , 2019, The Science of the total environment.
[34] C. Johansson,et al. Spatiotemporal distribution of light-absorbing carbon and its relationship to other atmospheric pollutants in Stockholm , 2011 .
[35] M. Ketzel,et al. Determination of black carbon, PM2.5, particle number and NOx emission factors from roadside measurements and their implications for emission inventory development , 2018, Atmospheric Environment.
[36] Admir Créso Targino,et al. Hotspots of black carbon and PM2.5 in an urban area and relationships to traffic characteristics. , 2016, Environmental pollution.
[38] Liliana Suárez,et al. Personal exposure to particulate matter in commuters using different transport modes (bus, bicycle, car and subway) in an assigned route in downtown Santiago, Chile. , 2014, Environmental science. Processes & impacts.
[39] Bert Brunekreef,et al. Land Use Regression Models for Ultrafine Particles and Black Carbon Based on Short-Term Monitoring Predict Past Spatial Variation. , 2015, Environmental science & technology.
[40] Joris Van den Bossche,et al. Mobile monitoring for mapping spatial variation in urban air quality: Development and validation of a methodology based on an extensive dataset , 2015 .