Analysing the performance of low-cost air quality sensors, their drivers, relative benefits and calibration in cities-a case study in Sheffield

Environ Monit Assess. 2019 Jan 22;191(2):94. doi: 10.1007/s10661-019-7231-8.

Abstract

Traditional real-time air quality monitoring instruments are expensive to install and maintain; therefore, such existing air quality monitoring networks are sparsely deployed and lack the measurement density to develop high-resolution spatiotemporal air pollutant maps. More recently, low-cost sensors have been used to collect high-resolution spatial and temporal air pollution data in real-time. In this paper, for the first time, Envirowatch E-MOTEs are employed for air quality monitoring as a case study in Sheffield. Ten E-MOTEs were deployed for a year (October 2016 to September 2017) monitoring several air pollutants (NO, NO2, CO) and meteorological parameters. Their performance was compared to each other and to a reference instrument installed nearby. E-MOTEs were able to successfully capture the temporal variability such as diurnal, weekly and annual cycles in air pollutant concentrations and demonstrated significant similarity with reference instruments. NO2 concentrations showed very strong positive correlation between various sensors. Mostly, correlation coefficients (r values) were greater than 0.92. CO from different sensors also had r values mostly greater than 0.92; however, NO showed r value less than 0.5. Furthermore, several multiple linear regression models (MLRM) and generalised additive models (GAM) were developed to calibrate the E-MOTE data and reproduce NO and NO2 concentrations measured by the reference instruments. GAMs demonstrated significantly better performance than linear models by capturing the non-linear association between the response and explanatory variables. The best GAM developed for reproducing NO2 concentrations returned values of 0.95, 3.91, 0.81, 0.005 and 0.61 for factor of two (FAC2), root mean square error (RMSE), coefficient of determination (R2), normalised mean biased (NMB) and coefficient of efficiency (COE), respectively. The low-cost sensors offer a more affordable alternative for providing real-time high-resolution spatiotemporal air quality and meteorological parameter data with acceptable performance.

Keywords: Air pollution monitoring; Envirowatch E-MOTEs; Generalised additive model; Sensor cost; Sensor networks.

Publication types

  • Evaluation Study

MeSH terms

  • Air Pollutants / analysis*
  • Air Pollution / analysis*
  • Calibration
  • Carbon Monoxide / analysis
  • Cities
  • Environmental Monitoring / instrumentation*
  • Environmental Monitoring / methods
  • Linear Models
  • Nitric Oxide / analysis
  • Nitrogen Dioxide / analysis
  • Particulate Matter / analysis
  • Time Factors
  • United Kingdom

Substances

  • Air Pollutants
  • Particulate Matter
  • Nitric Oxide
  • Carbon Monoxide
  • Nitrogen Dioxide