Mapping Urban Air Quality from Mobile Sensors Using Spatio-Temporal Geostatistics
暂无分享,去创建一个
Olivier Orfila | Benoit Sagot | Vincent Judalet | Patrice Chatellier | Yacine Mohamed Idir | Benoît Sagot | P. Chatellier | O. Orfila | Vincent Judalet
[1] J. Chilès,et al. Geostatistics: Modeling Spatial Uncertainty , 1999 .
[2] M. Brauer,et al. High-Resolution Air Pollution Mapping with Google Street View Cars: Exploiting Big Data. , 2017, Environmental science & technology.
[3] Michael Heimbinder,et al. Mapping urban air quality using mobile sampling with low-cost sensors and machine learning in Seoul, South Korea. , 2019, Environment international.
[4] Lester L. Yuan,et al. Comparison of spatial interpolation methods for the estimation of air quality data , 2004, Journal of Exposure Analysis and Environmental Epidemiology.
[5] Lothar Thiele,et al. Deriving high-resolution urban air pollution maps using mobile sensor nodes , 2015 .
[6] Daniele Peri,et al. Urban Air Quality Monitoring Using Vehicular Sensor Networks , 2014, Advances onto the Internet of Things.
[7] A. Colette,et al. Data fusion for air quality mapping using low-cost sensor observations: Feasibility and added-value. , 2020, Environment international.
[8] Pedro Mariano,et al. Pollution Prediction Model Using Data Collected by a Mobile Sensor Network , 2020, 2020 5th International Conference on Smart and Sustainable Technologies (SpliTech).
[9] Hyesop Shin,et al. Ordinary kriging approach to predicting long-term particulate matter concentrations in seven major Korean cities , 2014, Environmental health and toxicology.
[10] Jun Song,et al. Deep-MAPS: Machine-Learning-Based Mobile Air Pollution Sensing , 2019, IEEE Internet of Things Journal.
[11] Ole Hertel,et al. Using measurements of air pollution in streets for evaluation of urban air quality — meterological analysis and model calculations , 1996 .
[12] Bert Brunekreef,et al. Robustness of intra urban land‐use regression models for ultrafine particles and black carbon based on mobile monitoring , 2017, Environmental research.
[13] Mysore G. Satish,et al. Dispersion model evaluation of PM2.5, NOx and SO2 from point and major line sources in Nova Scotia, Canada using AERMOD Gaussian plume air dispersion model , 2013 .
[14] E. Seto,et al. The Imperial County Community Air Monitoring Network: A Model for Community-based Environmental Monitoring for Public Health Action , 2017, Environmental health perspectives.
[15] E. Bezirtzoglou,et al. Environmental and Health Impacts of Air Pollution: A Review , 2020, Frontiers in Public Health.
[16] Michel Arnaud,et al. Estimation et interpolation spatiale : méthodes déterministes et méthodes géostatistiques , 2000 .
[17] Prashant Kumar,et al. An integrated statistical approach for evaluating the exceedence of criteria pollutants in the ambient air of megacity Delhi , 2013 .
[18] Kees Meliefste,et al. A national fine spatial scale land-use regression model for ozone. , 2015, Environmental research.
[19] Simon S. Woo,et al. Real Time Localized Air Quality Monitoring and Prediction Through Mobile and Fixed IoT Sensing Network , 2020, IEEE Access.
[20] Elaine Symanski,et al. Kriged and modeled ambient air levels of benzene in an urban environment: an exposure assessment study , 2011, Environmental health : a global access science source.
[21] Shaofei Kong,et al. A land use regression for predicting NO2 and PM10 concentrations in different seasons in Tianjin region, China. , 2010, Journal of environmental sciences.
[22] Roy N. Colvile,et al. Assessing the representativeness of monitoring data from an urban intersection site in central London, UK , 1999 .
[23] Bernard De Baets,et al. Development of a land use regression model for black carbon using mobile monitoring data and its application to pollution-avoiding routing. , 2019, Environmental research.
[24] Xinlei Chen,et al. Gotcha II: Deployment of a Vehicle-based Environmental Sensing System: Poster Abstract , 2016, SenSys.
[25] 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.
[26] Marianne Hatzopoulou,et al. Integrating a street-canyon model with a regional Gaussian dispersion model for improved characterisation of near-road air pollution , 2017 .
[27] Jelle Hofman,et al. Graph-Deep-Learning-Based Inference of Fine-Grained Air Quality From Mobile IoT Sensors , 2020, IEEE Internet of Things Journal.
[28] Boi Faltings,et al. Estimating Urban Ultrafine Particle Distributions with Gaussian Process Models , 2014 .
[29] Christoph Schneider,et al. Mobile measurements and regression modeling of the spatial particulate matter variability in an urban area. , 2012, The Science of the total environment.
[30] 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 .
[31] Daniel Coca,et al. Analysing the performance of low-cost air quality sensors, their drivers, relative benefits and calibration in cities—a case study in Sheffield , 2019, Environmental Monitoring and Assessment.
[32] Joshua Rickard,et al. Long-term evaluation of air sensor technology under ambient conditions in Denver, Colorado , 2018, Atmospheric measurement techniques.
[33] Jian Gao,et al. Applications of low-cost sensing technologies for air quality monitoring and exposure assessment: How far have they gone? , 2018, Environment international.
[34] Lothar Thiele,et al. OpenSense: open community driven sensing of environment , 2010, IWGS '10.
[35] Armistead G. Russell,et al. Field Test of Several Low-Cost Particulate Matter Sensors in High and Low Concentration Urban Environments. , 2018, Aerosol and air quality research.
[36] Matthias Katzfuss,et al. Fine-Scale Spatiotemporal Air Pollution Analysis Using Mobile Monitors on Google Street View Vehicles , 2018, Journal of the American Statistical Association.
[37] Marianne Hatzopoulou,et al. Robustness of Land-Use Regression Models Developed from Mobile Air Pollutant Measurements. , 2017, Environmental science & technology.
[38] Shikha Gupta,et al. Identifying pollution sources and predicting urban air quality using ensemble learning methods , 2013 .
[39] Liviu Iftode,et al. Real-time air quality monitoring through mobile sensing in metropolitan areas , 2013, UrbComp '13.
[40] Ali Marjovi,et al. Extending Urban Air Quality Maps Beyond the Coverage of a Mobile Sensor Network: Data Sources, Methods, and Performance Evaluation , 2017, EWSN.
[41] Michael Brauer,et al. Within-urban variability in ambient air pollution: Comparison of estimation methods , 2008 .
[42] Andrea Cattaneo,et al. Miniaturized Monitors for Assessment of Exposure to Air Pollutants: A Review , 2017, International journal of environmental research and public health.
[43] Yan Zhang,et al. A land use regression model for estimating the NO2 concentration in Shanghai, China. , 2015, Environmental research.
[44] Ali Marjovi,et al. High Resolution Air Pollution Maps in Urban Environments Using Mobile Sensor Networks , 2015, 2015 International Conference on Distributed Computing in Sensor Systems.
[45] P. Kanaroglou,et al. Mapping real-time air pollution health risk for environmental management: Combining mobile and stationary air pollution monitoring with neural network models. , 2016, Journal of environmental management.
[46] Augusto Marcelli,et al. Mobile monitoring of particulate matter: State of art and perspectives , 2016 .
[47] Boi Faltings,et al. Sensing the Air We Breathe - The OpenSense Zurich Dataset , 2021, AAAI.
[48] Lothar Thiele,et al. Pushing the spatio-temporal resolution limit of urban air pollution maps , 2014, 2014 IEEE International Conference on Pervasive Computing and Communications (PerCom).
[49] Suresh Jain,et al. Response to discussion on: “An integrated statistical approach for evaluating the exceedance of criteria pollutants in the ambient air of megacity Delhi”, Atmospheric Environment , 2013 .
[50] P. Dong,et al. Monitoring, Mapping, and Modeling Spatial–Temporal Patterns of PM2.5 for Improved Understanding of Air Pollution Dynamics Using Portable Sensing Technologies , 2020, International journal of environmental research and public health.
[51] R. Britter,et al. FLOW AND DISPERSION IN URBAN AREAS , 2003 .
[52] Rui Ma,et al. Fine-Grained Air Pollution Inference with Mobile Sensing Systems , 2020, Proc. ACM Interact. Mob. Wearable Ubiquitous Technol..
[53] M. Vogt,et al. The urban dispersion model EPISODE v10.0 – Part 1: An Eulerian and sub-grid-scale air quality model and its application in Nordic winter conditions , 2020 .
[54] Edzer Pebesma,et al. Spatio-Temporal Interpolation using gstat , 2016, R J..
[55] John Kaiser Calautit,et al. A review of artificial neural network models for ambient air pollution prediction , 2019, Environ. Model. Softw..
[56] Charles E. Catlett,et al. Array of things: a scientific research instrument in the public way: platform design and early lessons learned , 2017, SCOPE@CPSWeek.