Resources & Industries ›› 2023, Vol. 25 ›› Issue (3): 69-81.DOI: 10.13776j.cnki.resourcesindustries.20230427.002
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LI Yang1,2,LI Huajiao1,2,FENG Sida3
Received:
2022-07-19
Revised:
2023-02-18
Online:
2023-06-20
Published:
2023-06-29
李 扬1,2,李华姣1,2,冯思达3
(1 中国地质大学(北京)经济管理学院 北京 100083;2 自然资源部资源环境承载力评价重点实验室,北京 100083;3 北京化工大学 经济管理学院,北京 100029)
通讯作者:
李华姣,博士、教授,主要从事资源产业链研究。Email:hli@cugb.edu.cn
作者简介:
李扬,博士生,主要从事产业链网络研究。Email:yang.lee.leon@foxmail.com
基金资助:
CLC Number:
LI Yang, LI Huajiao, FENG Sida. EVOLUTIONARY MECHANISM OF SUPPLY-DEMAND DEPENDENCE NETWORK OF CHINA ‘S NEW ENERGY VEHICLE INDUSTRY[J]. Resources & Industries, 2023, 25(3): 69-81.
李扬, 李华姣, 冯思达. 中国新能源汽车产业供需依赖网络演化机制研究[J]. 资源与产业, 2023, 25(3): 69-81.
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