| Literature DB >> 28210895 |
J J Huck1, J D Whyatt2, P Coulton3, B Davison2, A Gradinar3.
Abstract
This work investigates the potential of combining the outputs of multiple low-cost sensor technologies for the direct measurement of spatio-temporal variations in phenomena that exist at the interface between our bodies and the environment. The example used herein is the measurement of personal exposure to traffic pollution, which may be considered as a function of the concentration of pollutants in the air and the frequency and volume of that air which enters our lungs. The sensor-based approach described in this paper removes the 'traditional' requirements either to model or interpolate pollution levels or to make assumptions about the physiology of an individual. Rather, a wholly empirical analysis into pollution exposure is possible, based upon high-resolution spatio-temporal data drawn from sensors for NO2, nasal airflow and location (GPS). Data are collected via a custom smartphone application and mapped to give an unprecedented insight into exposure to traffic pollution at the individual level. Whilst the quality of data from low-cost miniaturised sensors is not suitable for all applications, there certainly are many applications for which these data would be well suited, particularly those in the field of citizen science. This paper demonstrates both the potential and limitations of sensor-based approaches and discusses the wider relevance of these technologies for the advancement of citizen science.Entities:
Keywords: Citizen science; GIS; Sensors; Traffic pollution exposure
Mesh:
Substances:
Year: 2017 PMID: 28210895 PMCID: PMC5313578 DOI: 10.1007/s10661-017-5817-6
Source DB: PubMed Journal: Environ Monit Assess ISSN: 0167-6369 Impact factor: 2.513
Fig. 1An illustration of the function of the ‘Spatial Logger’ software
Fig. 2Screenshot of the ‘Spatial Logger’ application for Android, with interface elements labelled
Fig. 3The Cooking Hacks e-Health sensor boards for airflow (left) and the Libelium Waspmote Gases sensor board for pollution (right). A standard credit card (85.60 × 53.98 mm)-sized card has been included in the image for scale
Fig. 4A description of the route used for data collection, designed to take in several areas with different characteristics. Base map contains OS data ©Crown Copyright/database right 2016
Fig. 5The influence of NO2 concentration (left), nasal airflow depth (centre) and nasal airflow rate (right) that contributed to the ‘exposure’ map given in Fig. 6. Base map contains OS data ©Crown Copyright/database right 2016
Fig. 6A map illustrating personal exposure to NO2 for a given individual and journey around Lancaster town centre during the morning rush hour. A description of the route taken is given in Fig. 4, and the three input datasets used to calculate these values are presented in Fig. 5. Base map contains OS data ©Crown Copyright/database right 2016