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Development of a Heavy-Duty Electric Vehicle Integration and Implementation (HEVII) Tool

Journal Article
2023-01-0708
ISSN: 2641-9645, e-ISSN: 2641-9645
Published April 11, 2023 by SAE International in United States
Development of a Heavy-Duty Electric Vehicle Integration and Implementation (HEVII) Tool
Citation: Badheka, A., Eagon, M., Fakhimi, S., Wiringa, P. et al., "Development of a Heavy-Duty Electric Vehicle Integration and Implementation (HEVII) Tool," SAE Int. J. Adv. & Curr. Prac. in Mobility 5(6):2093-2105, 2023, https://doi.org/10.4271/2023-01-0708.
Language: English

Abstract:

As demand for consumer electric vehicles (EVs) has drastically increased in recent years, manufacturers have been working to bring heavy-duty EVs to market to compete with Class 6-8 diesel-powered trucks. Many high-profile companies have committed to begin electrifying their fleet operations, but have yet to implement EVs at scale due to their limited range, long charging times, sparse charging infrastructure, and lack of data from in-use operation. Thus far, EVs have been disproportionately implemented by larger fleets with more resources. To aid fleet operators, it is imperative to develop tools to evaluate the electrification potential of heavy-duty fleets. However, commercially available tools, designed mostly for light-duty vehicles, are inadequate for making electrification recommendations tailored to a fleet of heavy-duty vehicles. The main challenge is that light-duty tools do not estimate real-time vehicle mass, a factor that has a disproportionate impact on the energy consumption of large commercial vehicles. The Heavy-Duty Electric Vehicle Integration and Implementation (HEVII) tool advances the state of the art in evaluating electrification potential and infrastructure requirements for fleets of commercial vehicles. In this work, the HEVII tool is demonstrated with non-uniformly sampled telematics data from an existing fleet to assess the suitability for electrification of each individual vehicle, determine optimal locations for charging infrastructure to support a fleet of EVs and analyze associated costs. Payload mass is predicted using sparse ground-truth data for all input drive cycles and an initial data analysis is conducted to assess the characteristics driving behaviors and energy consumption of the fleet using an adaptable vehicle model. Battery size requirements are determined by applying a novel charger placement algorithm to maximize routes that are viable for EVs and balance time delays with infrastructure development costs. This work details and demonstrates the different aspects of the HEVII tool, presenting preliminary results from an example use case.