New Energy Vehicle Industry Development Plan (2021-2035)
China Issues the Blueprint for its Electric Vehicle and Intelligent Connected Vehicle Industry Development for the Next 15 years!
Publication Year: 2020
On 02 November 2020, the New Energy Vehicle Industry Development Plan (2021-2035) was published by the State Council Office of the People's Republic of China.
The New Energy Vehicle Industry Development Plan (2021-2035) is a strategic top-level policy guiding the development of a comprehensive and fully integrated New Energy Vehicle (NEV) and Intelligent Connected Vehicle (ICV) eco-system in China over the course of the next 15 years and is part of the comprehensive roadmap to develop China into a global automotive powerhouse.
The plan follows the Energy Conservation and New Energy Vehicle Industry Development Plan (2012-2020)1, which was issued by the State Council in 2012.
This Policy Brief document is the translation of the original policy New Energy Vehicle Industry Development Plan (2021-2035) into the English language (provided by Sebastian Ibold, Xia Yun and Xiao Shuyue of Deutsche Gesellschaft für Internationale Zusammenarbeit (GIZ) GmbH) and published on November 02, 2020.
Series Edition: The index number: 000014349/2020-00104
Policy Brief No.: State Council Fa (2020) No. 39
Publisher/Organisation: Deutsche Gesellschaft für Internationale Zusammenarbeit (GIZ)
Theme: Policies and Regulations | Subtheme: International
Tags: New energy vehicle, NEV, Intelligent connected vehicle, ICV, Sebastian Ibold, Xia Yun, Xiao Shuyue, Policy brief, Policy briefing, Deutsche Gesellschaft für Internationale Zusammenarbeit, GIZ, GmbH, EV, Blueprint, Electric vehicle, Intelligent, Connected, Industry, Transport, ICT, Heavy industry, State council office, People's Republic of China, China, New energy, Transportation, Machinery, Manufacturing,
Published Year: 2005
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