The Impact of Intelligence on Digital Transformation of Enterprises

Taking Listed Companies in China's New Energy Vehicle Industry as an Example

Authors

  • Poyu Liu
  • Fangping Zhang
  • Mengke Hou

DOI:

https://doi.org/10.54691/xcyz9640

Keywords:

Intelligence, Digital transformation, New energy.

Abstract

Chinese enterprises have entered a new stage of digital development and are accelerating towards the stage of comprehensive intelligent development. With the deepening of a new round of technological revolution, intelligent technologies such as artificial intelligence, big data, and the Internet of Things continue to penetrate into various aspects of enterprises, becoming a key force in promoting digital transformation. Especially in the manufacturing industry, as a high-tech intensive industry, the intelligent manufacturing system, intelligent networking technology, and digital management platform of new energy vehicles have become representative directions for enterprises to achieve intelligent transformation. This article takes listed companies in the new energy vehicle industry as the research object, selects data from 2013 to 2023, takes enterprise digital transformation as the dependent variable, enterprise intelligence level as the explanatory variable, and other factors that affect enterprise digital transformation as control variables. A panel regression model is established, and benchmark regression, industry heterogeneity test, and robustness test are conducted to analyze the impact mechanism and size of enterprise intelligence on digital transformation. Finally, countermeasures and suggestions for accelerating enterprise digital transformation are proposed.

Downloads

Download data is not yet available.

References

[1] Song Yanyan, Shi Zhenshan, Ji Xuecheng, etc. Research on Promoting Digital Transformation of Manufacturing Industry with Intelligent Manufacturing [J]. China Instrument and Meter, 2022, (04): 31-36.

[2] Zhang Shaofeng, Xu Mengsu, Zhu Yue, etc. Technological Innovation, Organizational Resilience, and High Quality Development of Manufacturing Enterprises [J]. Science and Technology Progress and Countermeasures, 2023, (13).

[3] Zuo Xiaoming, Cheng Yingjiao, Peng Jiali. Measurement of Intelligent Level and Countermeasures for Intelligent Transformation of Manufacturing Industry in the Pearl River Delta [J]. Journal of Guangdong Vocational and Technical College of Light Industry, 2023, 22 (06): 18-25.

[4] Yang Fang, Zhang Heping, Sun Qingqing, Liu Yuxuan. The Impact of Enterprise Digital Transformation on New Quality Productivity [J]. Finance and Economics, 2024, (05): 35-48.

[5] Su Jingqin, Wu Xianyun. How digital transformation enterprises can achieve organizational inertia restructuring [J]. Nankai Management Review,2024,27(02):150-162.

[6] Wu Fei, Chang Xi, Ren Xiaoyi. Government Driven Innovation: Fiscal Technology Expenditure and Enterprise Digital Transformation [J]. Fiscal Research, 2021, (01): 102-115.

[7] Gao Xirong, Wang Xingrong. Research on the Intelligent Empowerment Mechanism of User Innovation from the Perspective of Information Space [J]. Technology and Economics, 2020, 39 (12): 89-99.

[8] Shen Yanhong, Huang Jing, Zhang Sally, Xu Zhitao. Research on Digital Maturity Evaluation of Intelligent Manufacturing Enterprises Based on FAHP and Cloud Model [J]. Logistics Engineering and Management, 2024, 46 (04): 89-92+75.

[9] Shao Jingting. Research on the Reshaping of Enterprise Value Chain by Digital and Intelligent Technologies [J]. Economic Journal, 2019 (09): 95-102.

[10] Li Changlong. A Brief Analysis of the Digital and Intelligent Development of Mechanical Design and Manufacturing [J]. China Equipment Engineering, 2024 (08): 28-30.

Downloads

Published

20-05-2025

Issue

Section

Articles

How to Cite

Liu , P., Zhang, F., & Hou, M. (2025). The Impact of Intelligence on Digital Transformation of Enterprises: Taking Listed Companies in China’s New Energy Vehicle Industry as an Example. Frontiers in Humanities and Social Sciences, 5(5), 178-189. https://doi.org/10.54691/xcyz9640