Bulletin of Chinese Academy of Sciences (Chinese Version)
Keywords
digital intelligence; digitalization; networkization; intelligentization; traditional industries; transformation and upgrading
Document Type
S&T Innovation Leads Modern Industrial System Construction
Abstract
Traditional industries are the basic support and driving force for the high-quality development of the economy. Digital intelligence is an important lever for traditional industries to achieve the transformation of old and new kinetic energy and the leapfrogging of the global value chain. This study firstly deconstructs the rich connotations of digital intelligence from the perspectives of digitalization, networkization, and intelligentization. Secondly, it analyzes the transformation mechanism and various pathways through which digital intelligence impacts traditional industries. Thirdly, it analyzes the barriers faced by traditional industries in the process of adopting digital intelligence technologies. Finally, this study puts forward four policy suggestions, including (1) continuing to implement large-scale technological upgrading projects and effectively reducing the cost of digitalization, networkization, and intelligentization; (2) improving the empowerment platform construction and optimizing the service evaluation systems; (3) breaking through the bottleneck of digital intelligence in key core areas; and (4) establishing a comprehensive talent training mechanism for the forefront of digital intelligence.
First page
1183
Last Page
1190
Language
Chinese
Publisher
Bulletin of Chinese Academy of Sciences
References
1 周济. 提升制造业产业链水平 加快建设现代产业体系. 中国工业和信息化, 2019, (12): 38-41.Zhou J. Improve the level of manufacturing industry chain and accelerate the construction of modern industrial system. China Industry & Information Technology, 2019, (12): 38-41. (in Chinese)
2 周济. 全力推动传统制造业优化升级 坚定不移建设制造强国. 中国工业和信息化, 2020, (Z1): 30-33.Zhou J. Fully promote the optimization and upgrading of traditional manufacturing industry and unswervingly build a manufacturing power. China Industry & Information Technology, 2020, (Z1): 30-33. (in Chinese)
3 Zhou J, Zhou Y H, Wang B C, et al. Human-cyber-physical systems (HCPSs) in the context of new-generation intelligent manufacturing. Engineering, 2019, 5(4): 624-636.
4 Zhou J, Li P G, Zhou Y H, et al. Toward new-generation intelligent manufacturing. Engineering, 2018, 4(1): 11-20.
5 Zhou Y, Zang J Y, Miao Z Z, et al. Upgrading pathways of intelligent manufacturing in China: Transitioning across technological paradigms. Engineering, 2019, 5(4): 691-701.
6 王柏村, 臧冀原, 屈贤明, 等. 基于人—信息—物理系统(HCPS)的新一代智能制造研究. 中国工程科学, 2018, 20(4): 29-34.Wang B C, Zang J Y, Qu X M, et al. Research on New-Generation Intelligent Manufacturing based on Human-Cyber-Physical Systems. Strategic Study of CAE, 2018, 20(4): 29-34. (in Chinese)
7 孟柳, 延建林, 董景辰, 等. 智能制造总体架构探析. 中国工程科学, 2018, 20(4): 23-28.Meng L, Yan J L, Dong J C, et al. Research on the general architecture of intelligent manufacturing. Strategic Study of CAE, 2018, 20(4): 23-28. (in Chinese)
8 臧冀原, 王柏村, 孟柳, 等. 智能制造的三个基本范式:从数字化制造、“互联网+”制造到新一代智能制造. 中国工程科学, 2018, 20(4): 13-18.Zang J Y, Wang B C, Meng L, et al. Brief analysis on three basic paradigms of intelligent manufacturing. Strategic Study of CAE, 2018, 20(4): 13-18. (in Chinese)
9 国家工业信息安全发展研究中心. 2022工业互联网平台发展指数报告. 北京: 国家工业信息安全发展研究中心, 2022.China Industrial Control Systems Cyber Emergency Response Team. 2022 Industrial Internet Platform Development Index. Beijing: CIC, 2022. (in Chinese)
10 Brem A, Giones F, Werle M. The AI digital revolution in innovation: A conceptual framework of artificial intelligence technologies for the management of innovation. IEEE Transactions on Engineering Management, 2021, 70(2): 770-776.
11 Rammer C, Fernández G P, Czarnitzki D. Artificial intelligence and industrial innovation: Evidence from German firm-level data. Research Policy, 2022, 51(7): 104555.
12 中国新一代人工发展战略研究院. 中国新一代人工智能科技产业发展报告2023:建设具有全球竞争力的人工智能产业集群. 天津: 中国新一代人工发展战略研究院, 2023. Chinese Institute of New Generation Artificial Intelligence Development Strategies. China’s New Generation Artificial Intelligence Technology Industry Development Report 2023: Building the Artificial Intelligence Industry Clusters with Global Competitiveness. Tianjin: CINGAI, 2023. (in Chinese)
13 周济. 以智能制造为主攻方向推进新型工业化. 中国工业和信息化, 2023, (11): 40-44.Zhou J. Promoting new industrialization with intelligent manufacturing as the main direction. China Industry & Information Technology, 2023, (11): 40-44. (in Chinese)
14 Liu J, Chang H H, Forrest J Y L, et al. Influence of artificial intelligence on technological innovation: Evidence from the panel data of China’s manufacturing sectors. Technological Forecasting and Social Change, 2020, 158: 120142.
15 Grashof N, Kopka A. Artificial intelligence and radical innovation: An opportunity for all companies?. Small Business Economics, 2023, 61(2): 771-797.
16 古依莎娜, 董景辰, 臧冀原, 等. 并行推进、融合发展——新一代智能制造技术路线. 中国工程科学, 2018, 20(4): 19-22.Gu Y, Dong J C, Zang J Y, et al. Parallel promotion and integrated development: A technology roadmap for promoting new-generation intelligent manufacturing. Strategic Study of CAE, 2018, 20(4): 19-22. (in Chinese)
17 王柏村, 朱凯凌, 薛塬, 等. 我国中小企业数字化转型的模式与对策. 中国机械工程, 2023, 34(14): 1756-1763.Wang B C, Zhu K L, Xue Y, et al. Digital transformation mode and strategy of SMEs in China. China Mechanical Engineering, 2023, 34(14): 1756-1763. (in Chinese)
18 季桓永, 周源. 浙江省制造业技术改造智能升级的经验与启示. 中国工程科学, 2018, 20(4): 122-126.Ji H Y, Zhou Y. Policy-related inspirations from technological transformation and intelligence upgrading of manufacturing in Zhejiang Province. Strategic Study of CAE, 2018, 20(4): 122-126. (in Chinese)
Recommended Citation
ZANG, Jiyuan; JI, Huanyong; and HUANG, Qingxue
(2024)
"Empowering traditional industries with digital intelligence for transformation and upgrading,"
Bulletin of Chinese Academy of Sciences (Chinese Version): Vol. 39
:
Iss.
7
, Article 30.
DOI: https://doi.org/10.16418/j.issn.1000-3045.20240407004
Available at:
https://bulletinofcas.researchcommons.org/journal/vol39/iss7/30
Included in
Artificial Intelligence and Robotics Commons, Industrial Organization Commons, Science and Technology Policy Commons, Technology and Innovation Commons