Path identification and effect assessment of digital economy-driven manufacturing quality development in the context of big data analysis

Author:

Liu Yu1,Zhang Zhengchao2,Ding Yunfei3,Jiang Shicao3

Affiliation:

1. 1 College of Management , Bohai University , Jinzhou, Liaoning, 121000 , China .

2. 2 College of Economic , Bohai University , Jinzhou, Liaoning, 121000 , China .

3. 3 School of Economics & Management , Liaoning University of Technology , Jinzhou, Liaoning, 121000 , China .

Abstract

Abstract This paper uses big data analysis technology to construct a digital intelligent manufacturing system. Firstly, the K-mean algorithm is used to cluster the enterprise manufacturing data, and then the fuzzy C-mean algorithm is combined to detect the abnormal data and realize the preferential selection and control of product features. A semi-parametric algorithm is introduced to establish index weights to achieve optimal resource allocation. The results show that after manufacturing enterprises produce through the digital intelligent manufacturing system, qualified products account for 82% of the total output and productivity increases by approximately 44% on average. Big data analysis technology enables enterprises to analyze data effectively and enhances the development of the manufacturing industry in the digital economy.

Publisher

Walter de Gruyter GmbH

Subject

Applied Mathematics,Engineering (miscellaneous),Modeling and Simulation,General Computer Science

Reference21 articles.

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3. Saharudin, N. N., & Ho, F. H. (2021). Development of a green packaging assessment tool for manufacturing industry. Mechatronics, 2(1), 56-66.

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5. Cui, X. (2021). Cyber-physical system (cps) architecture for real-time water sustainability management in manufacturing industry. Procedia CIRP, 99, 543-548.

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