Predictive cordon pricing to reduce air pollution

•Road pricing is a potentially effective means of controlling automobile emissions.•We study a cordon toll with more polluting vehicles paying higher tolls.•A Markov decision-making process sets tolls daily based on weather forecasts.•The welfare gain from reduced congestion and pollution grows with...

Full description

Saved in:
Bibliographic Details
Published in:Transportation research. Part D, Transport and environment Vol. 88; p. 102564
Main Authors: Vosough, Shaghayegh, Poorzahedy, Hossain, Lindsey, Robin
Format: Journal Article
Language:English
Published: Elsevier Ltd 01-11-2020
Subjects:
Online Access:Get full text
Tags: Add Tag
No Tags, Be the first to tag this record!
Description
Summary:•Road pricing is a potentially effective means of controlling automobile emissions.•We study a cordon toll with more polluting vehicles paying higher tolls.•A Markov decision-making process sets tolls daily based on weather forecasts.•The welfare gain from reduced congestion and pollution grows with the forecast time horizon.•The predictive tolling scheme yields a higher welfare gain than the best fixed toll. Traffic is a major contributor to emissions in many large cities with severe air pollution. Experience in London, Milan, and Stockholm shows that charging for the use of roads can be effective in reducing emissions, as well as congestion. This study examines the use of predictive cordon tolls based on weather forecasts to reduce ambient air pollution and congestion. Travelers choose their destinations inside or outside the cordon, and whether to drive or take public transport. Passenger vehicles are divided into three classes according to their emission characteristics, and higher tolls are imposed on more polluting vehicles. The Box model of emission dispersion is used to predict air quality. A Markov decision-making process then determines daily toll levels with the objective of maximizing welfare measured by travelers’ surplus, toll revenue, and air pollution health costs. The model is applied to a hypothetical network using recorded weather data for Tehran in 2016. With base-case parameter values, predictive pricing reduces the daily average CO concentration as well as the number of days with dangerous air quality. Predictive pricing yields a higher welfare gain than a fixed toll (i.e., the same every day regardless of weather conditions). The effects of weather information, wind forecast accuracy, forecast time horizon, values of travel time, destination attractions, and road link capacity on the benefits from predictive pricing are analyzed. The performance of the model under randomized weather conditions is also assessed.
ISSN:1361-9209
1879-2340
DOI:10.1016/j.trd.2020.102564