Evaluation of roadside air quality using deep learning models after the application of the diesel vehicle policy (Euro 6).

Journal: Scientific reports
Published Date:

Abstract

Euro 6 is the latest vehicle emission standards for pollutants such as CO, NO and PM, that all new vehicles must comply, and it was introduced in September 2015 in South Korea. This study examined the effect of Euro 6 by comparing the measured pollutant concentrations after 2016 (Euro 6-era) to the estimated concentrations without Euro 6. The concentration without Euro 6 was estimated by first modeling the air quality using various environmental factors related to diesel vehicles, meteorological conditions, temporal information such as date and precursors in 2002-2015 (pre-Euro 6-era), and then applying the model to predict the concentration after 2016. In this study, we used both recurrent neural network (RNN) and random forest (RF) algorithms to model the air quality and showed that RNN can achieve higher R (0.634 ~ 0.759 depending on pollutants) than RF, making it more suitable for air quality modeling. According to our results, the measured concentrations during 2016-2019 were lower than the concentrations predicted using RNN by - 1.2%, - 3.4%, and - 4.8% for CO, NO and PM. Such reduction can be attributed to the result of Euro 6.

Authors

  • Hyemin Hwang
    Environmental Engineering Department, Ajou University, Suwon, 16499, Korea.
  • Sung Rak Choi
    Environmental and Safety Engineering Department, Ajou University, Suwon, 16499, Korea.
  • Jae Young Lee
    Department of Radiology and the Institute of Radiation Medicine, Seoul National University Hospital, Seoul, Republic of Korea. leejy4u@gmail.com.