Measuring the route topography impact on real driving emissions based on neural network models

Environ Res. 2023 Aug 15;231(Pt 1):116072. doi: 10.1016/j.envres.2023.116072. Epub 2023 May 5.

Abstract

Route topography is an important test boundary of real driving emission (RDE) tests. However, the RDE test boundaries, such as atmospheric environment, driver behavior, route topography, and traffic congestion, are random, uncertain, and completely coupled. It is difficult to know to what extent route topography can determine on-road emissions, especially in a region with hilly topography. In this regard, the neural network predictor importance algorithms were proposed to measure the importance of the route topography test boundary. Based on tens of thousands of data window samples from the RDE tests in Chongqing, factor analysis was performed to reduce the data dimensionality and eliminate information overlap, and neural network models were established to predict pollutant emissions and calculate the relative importance of input variables. The results show that route topography is comparable to trip dynamics for on-road emissions but the importance of the route topography test boundary is not fully appreciated in the existing RDE regulation, making mountain cities suffer from severe vehicle emissions that are not effectively controlled.

Keywords: Neural network; Real driving emissions; Route topography; Trip dynamics; Vehicle emissions.

MeSH terms

  • Air Pollutants* / analysis
  • Cities
  • Environmental Pollutants* / analysis
  • Neural Networks, Computer
  • Vehicle Emissions / analysis

Substances

  • Vehicle Emissions
  • Air Pollutants
  • Environmental Pollutants