Literature DB >> 28668173

Mapping urban air quality in near real-time using observations from low-cost sensors and model information.

Philipp Schneider1, Nuria Castell2, Matthias Vogt2, Franck R Dauge2, William A Lahoz2, Alena Bartonova2.   

Abstract

The recent emergence of low-cost microsensors measuring various air pollutants has significant potential for carrying out high-resolution mapping of air quality in the urban environment. However, the data obtained by such sensors are generally less reliable than that from standard equipment and they are subject to significant data gaps in both space and time. In order to overcome this issue, we present here a data fusion method based on geostatistics that allows for merging observations of air quality from a network of low-cost sensors with spatial information from an urban-scale air quality model. The performance of the methodology is evaluated for nitrogen dioxide in Oslo, Norway, using both simulated datasets and real-world measurements from a low-cost sensor network for January 2016. The results indicate that the method is capable of producing realistic hourly concentration fields of urban nitrogen dioxide that inherit the spatial patterns from the model and adjust the prior values using the information from the sensor network. The accuracy of the data fusion method is dependent on various factors including the total number of observations, their spatial distribution, their uncertainty (both in terms of systematic biases and random errors), as well as the ability of the model to provide realistic spatial patterns of urban air pollution. A validation against official data from air quality monitoring stations equipped with reference instrumentation indicates that the data fusion method is capable of reproducing city-wide averaged official values with an R2 of 0.89 and a root mean squared error of 14.3 μg m-3. It is further capable of reproducing the typical daily cycles of nitrogen dioxide. Overall, the results indicate that the method provides a robust way of extracting useful information from uncertain sensor data using only a time-invariant model dataset and the knowledge contained within an entire sensor network.
Copyright © 2017 The Authors. Published by Elsevier Ltd.. All rights reserved.

Entities:  

Keywords:  Air quality; Crowdsourcing; Low-cost microsensors; Mapping; Nitrogen dioxide; Urban air quality

Mesh:

Substances:

Year:  2017        PMID: 28668173     DOI: 10.1016/j.envint.2017.05.005

Source DB:  PubMed          Journal:  Environ Int        ISSN: 0160-4120            Impact factor:   9.621


  25 in total

1.  Mapping urban air quality using mobile sampling with low-cost sensors and machine learning in Seoul, South Korea.

Authors:  Chris C Lim; Ho Kim; M J Ruzmyn Vilcassim; George D Thurston; Terry Gordon; Lung-Chi Chen; Kiyoung Lee; Michael Heimbinder; Sun-Young Kim
Journal:  Environ Int       Date:  2019-07-27       Impact factor: 9.621

2.  Toward a Unified Terminology of Processing Levels for Low-Cost Air-Quality Sensors.

Authors:  Philipp Schneider; Alena Bartonova; Nuria Castell; Franck R Dauge; Michel Gerboles; Gayle S W Hagler; Christoph Hüglin; Roderic L Jones; Sean Khan; Alastair C Lewis; Bas Mijling; Michael Müller; Michele Penza; Laurent Spinelle; Brian Stacey; Matthias Vogt; Joost Wesseling; Ronald W Williams
Journal:  Environ Sci Technol       Date:  2019-07-29       Impact factor: 9.028

Review 3.  Applications of low-cost sensing technologies for air quality monitoring and exposure assessment: How far have they gone?

Authors:  Lidia Morawska; Phong K Thai; Xiaoting Liu; Akwasi Asumadu-Sakyi; Godwin Ayoko; Alena Bartonova; Andrea Bedini; Fahe Chai; Bryce Christensen; Matthew Dunbabin; Jian Gao; Gayle S W Hagler; Rohan Jayaratne; Prashant Kumar; Alexis K H Lau; Peter K K Louie; Mandana Mazaheri; Zhi Ning; Nunzio Motta; Ben Mullins; Md Mahmudur Rahman; Zoran Ristovski; Mahnaz Shafiei; Dian Tjondronegoro; Dane Westerdahl; Ron Williams
Journal:  Environ Int       Date:  2018-04-26       Impact factor: 9.621

4.  Deliberating Performance Targets: Follow-on workshop discussing PM10, NO2, CO, and SO2 air sensor targets.

Authors:  R M Duvall; G S W Hagler; A L Clements; K Benedict; K Barkjohn; V Kilaru; T Hanley; N Watkins; A Kaufman; A Kamal; S Reece; P Fransioli; M Gerboles; G Gillerman; R Habre; M Hannigan; Z Ning; V Papapostolou; R Pope; P J E Quintana; J Lam Snyder
Journal:  Atmos Environ (1994)       Date:  2021       Impact factor: 4.798

5.  Changes of NOx in urban air detected with monitoring VIS-NIR field spectrometer during the coronavirus pandemic: A case study in Germany.

Authors:  Paul Naethe; Michael Delaney; Tommaso Julitta
Journal:  Sci Total Environ       Date:  2020-07-27       Impact factor: 7.963

6.  City Scale Particulate Matter Monitoring Using LoRaWAN Based Air Quality IoT Devices.

Authors:  Steven J Johnston; Philip J Basford; Florentin M J Bulot; Mihaela Apetroaie-Cristea; Natasha H C Easton; Charlie Davenport; Gavin L Foster; Matthew Loxham; Andrew K R Morris; Simon J Cox
Journal:  Sensors (Basel)       Date:  2019-01-08       Impact factor: 3.576

7.  Using Low-Cost Air Quality Sensor Networks to Improve the Spatial and Temporal Resolution of Concentration Maps.

Authors:  Faraz Enayati Ahangar; Frank R Freedman; Akula Venkatram
Journal:  Int J Environ Res Public Health       Date:  2019-04-08       Impact factor: 3.390

8.  Improving emissions inputs via mobile measurements to estimate fine-scale Black Carbon monthly concentrations through geostatistical space-time data fusion.

Authors:  Alejandro Valencia; Saravanan Arunachalam; Vlad Isakov; Brian Naess; Marc Serre
Journal:  Sci Total Environ       Date:  2021-06-10       Impact factor: 7.963

9.  Developing Relative Humidity and Temperature Corrections for Low-Cost Sensors Using Machine Learning.

Authors:  Ivan Vajs; Dejan Drajic; Nenad Gligoric; Ilija Radovanovic; Ivan Popovic
Journal:  Sensors (Basel)       Date:  2021-05-11       Impact factor: 3.576

10.  Sensor Selection to Improve Estimates of Particulate Matter Concentration from a Low-Cost Network.

Authors:  Sinan Sousan; Alyson Gray; Christopher Zuidema; Larissa Stebounova; Geb Thomas; Kirsten Koehler; Thomas Peters
Journal:  Sensors (Basel)       Date:  2018-09-08       Impact factor: 3.576

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