4.5 Article

Geographical Modeling of Charging Infrastructure Requirements for Heavy-Duty Electric Autonomous Truck Operations

Journal

ENERGIES
Volume 16, Issue 10, Pages -

Publisher

MDPI
DOI: 10.3390/en16104161

Keywords

autonomous electric truck; charging infrastructure; grid requirements; modeling

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This study analyzes the charging infrastructure requirements for autonomous electric trucks (AETs) in Texas, using a simulation model to consider various parameters and assess the sensitivity of charging needs. AETs offer benefits like reduced emissions and improved operational costs. The analysis reveals the charging energy and power requirements for major cities in the Texas highway triangle, along with the associated costs.
This study presents an analysis of the charging infrastructure requirements for autonomous electric trucks (AETs) in a specified geographical region, focusing on the state of Texas as a case study. A discrete-time, agent-based model is used to simulate the AET fleet and consider various model parameters such as trip distance/duration, the number of trips, and charging speeds. The framework incorporates unique properties of the Texas road network to assess the sensitivity of charging infrastructure needs. By synergizing electrification and automation, AETs offer benefits such as reduced carbon emissions, enhanced transportation safety, decreased congestion, and improved operational costs for fleets. By simulating daily trips and energy consumption patterns, an analysis of the charging infrastructure needs for cities along the Texas highway triangle formed by I-35, I-45 and I-10 revealed that the total charging energy and average charging power for these major cities ranges between 443 similar to 533 MWh/day and 18.5 similar to 22 MW, with costs in the range of USD $7.74 similar to$15.93 million for each city, depending on charging infrastructure design and exclusive of any enhancements to the distribution grid infrastructure needed to support the charging infrastructure. This data-driven approach may be replicated for other regions by adapting the simulation parameters to allow policymakers and stakeholders to assess the charging infrastructure requirements and related investments needed to support the transition to electric and autonomous heavy-duty trucking.

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