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Volume 1, Issue 1, ICCK Transactions on Electric and Hybrid Vehicles
Volume 1, Issue 1, 2025
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ICCK Transactions on Electric and Hybrid Vehicles, Volume 1, Issue 1, 2025: 12-16

Free to Read | Perspective | 17 August 2025
Future Development and Prospects of Key Technologies for Electric Vehicles: A Refined Perspective
by
1 School of Control Science and Engineering, Shandong University, Jinan 250061, China
* Corresponding Author: Qi Zhang, [email protected]
Received: 23 April 2025, Accepted: 24 June 2025, Published: 17 August 2025  
Abstract
Driven by multiple forces such as the rapid development of battery technology, environmental and energy issues, and government policies, the global automotive industry is accelerating its transition towards electric vehicles (EVs). However, there are still some challenges of key technologies for EVs, including battery energy density limitations, battery management technology, construction of charging infrastructure, etc. This perspective explores the future development and prospects of key technologies for EVs, which mainly focus on predicting future technologies of four main aspects: next-generation battery, fast charging and wireless charging, integration of autonomous and artificial intelligence, and integration of renewable and clean energy. By analyzing the latest research findings and related publications, we have conducted targeted analysis and a detailed description of the development of future technologies for EVs, which can provide an outlook on the future development trends of EVs.

Graphical Abstract
Future Development and Prospects of Key Technologies for Electric Vehicles: A Refined Perspective

Keywords
electric vehicles
EV technologies
future prospects

Data Availability Statement
Not applicable.

Funding
This work was supported without any funding.

Conflicts of Interest
The author declares no conflicts of interest.

Ethical Approval and Consent to Participate
Not applicable.

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Cite This Article
APA Style
Zhang, Q. (2025). Future Development and Prospects of Key Technologies for Electric Vehicles: A Refined Perspective. ICCK Transactions on Electric and Hybrid Vehicles, 1(1), 12–16. https://doi.org/10.62762/TEHV.2025.413889

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