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Electric Vehicles With Fuel Cells: A Review of Technologies and Strategies for Energy Management

Poorvi Omer, Arun Kumar Yadav

Abstract


The vehicle business is always growing along with the advancement of the world economy. In recent years, one of the solutions to the energy crisis and other issues has been to use clean energy to power automobiles instead of conventional fossil fuels. Reducing environmental contamination through measures. Fuel cell hybrid electric vehicles (FCHEVs) have drawn a lot of attention from researchers due to their benefits in terms of high energy efficiency, environmental protection, and long driving range.. The structure of typical FCHEVs is initially introduced in this work, after which the most recent energy management strategies (emss) for FCHEVs are categorized and introduced. The discussion on EMSs for FCHEVs future trends concludes. Researchers may find this study helpful in their efforts to comprehend more fully the most recent developments in EMSs for FCHEVs. The most recent theoretical approaches and application outcomes are provided through an in-depth examination of important scientific challenges. In order to offer fresh perspectives and sources of inspiration for the ongoing study of hybrid energy storage systems, some future research challenges and outlooks are finally presented.


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