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Life Cycle Air Pollution, Greenhouse Gas, and Traffic Externality Benefits and Costs of Electrifying Uber and Lyft

CSS Publication Number
CSS23-05
Abstract

Transportation network companies (TNCs), such as Uber and Lyft, have pledged to fully electrify their ridesourcing vehicle fleets by 2030 in the United States. In this paper, we introduce AgentX, a novel agent-based model built in Julia for simulating ridesourcing services with high geospatial and temporal resolution. We then instantiate this model to estimate the life cycle air pollution, greenhouse gas, and traffic externality benefits and costs of serving rides based on Chicago TNC trip data from 2019 to 2022 with fully electric vehicles. We estimate that electrification reduces life cycle greenhouse gas emissions by 40–45% (9–10¢ per trip) but increases life cycle externalities from criteria air pollutants by 6–11% (1–2¢ per trip) on average across our simulations, which represent demand patterns on weekdays and weekends across seasons during prepandemic, pandemic, and post-vaccination periods. A novel finding of our work, enabled by our high resolution simulation, is that electrification may increase deadheading for TNCs due to additional travel to and from charging stations. This extra vehicle travel increases estimated congestion, crash risk, and noise externalities by 2–3% (2–3¢ per trip). Overall, electrification reduces net external costs to society by 3–11% (5–24¢ per trip), depending on the assumed social cost of carbon.

Co-Author(s)
Aniruddh Mohan
Matthew Bruchon
Jeremy Michalek
Research Areas
Transportation
Keywords

agent-based modeling, criteria pollutants, greenhouse gas emissions, transportation network, companies traffic externalities

Publication Type
Journal Article
Digital Object Identifier
https://doi.org/10.1021/acs.est.2c07030
Full Citation

Life Cycle Air Pollution, Greenhouse Gas, and Traffic Externality Benefits and Costs of Electrifying Uber and Lyft

Aniruddh Mohan, Matthew Bruchon, Jeremy Michalek, and Parth Vaishnav

Environmental Science & Technology 2023 57 (23), 8524-8535

DOI: 10.1021/acs.est.2c07030