Statistical evaluation of on-road vehicle emissions measurement using a dual remote sensing technique

Environ Pollut. 2020 Dec:267:115456. doi: 10.1016/j.envpol.2020.115456. Epub 2020 Aug 23.

Abstract

On-road remote sensing (RS) is a rapid, non-intrusive and economical tool to monitor and control the emissions of in-use vehicles, and currently is gaining popularity globally. However, a majority of studies used a single RS technique, which may bias the measurements since RS only captures a snapshot of vehicle emissions. This study aimed to use a unique dual RS technique to assess the characteristics of on-road vehicle emissions. The results show that instantaneous vehicle emissions are highly dynamic under real-world driving conditions. The two emission factors measured by the dual RS technique show little correlation, even under the same driving condition. This indicates that using the single RS technique may be insufficient to accurately represent the emission level of a vehicle based on one measurement. To increase the accuracy of identifying high-emitting vehicles, using the dual RS technique is essential. Despite little correlation, the dual RS technique measures the same average emission factors as the single RS technique does when a large number of measurements are available. Statistical analysis shows that both RS systems demonstrate the same Gamma distribution with ≥200 measurements, leading to converged mean emission factors for a given vehicle group. These findings point to the need for a minimum sample size of 200 RS measurements in order to generate reliable emission factors for on-road vehicles. In summary, this study suggests that using the single or dual RS technique will depend on the purpose of applications. Both techniques have the same accuracy in calculating average emission factors when sufficient measurements are available, while the dual RS technique is more accurate in identifying high-emitters based on one measurement only.

Keywords: Dual scope technique; Emission factors; Emission variability; On-road remote sensing; Real driving emissions.

MeSH terms

  • Air Pollutants*
  • Automobile Driving*
  • Environmental Monitoring
  • Motor Vehicles
  • Remote Sensing Technology
  • Research Design
  • Sample Size
  • Vehicle Emissions

Substances

  • Air Pollutants
  • Vehicle Emissions