Study on Application Model of Construction Logistics in Supply Chain Based on Big Data
Publication: ICCREM 2023
ABSTRACT
The rapid development of information technology provides advanced management tools for modern enterprise management, and the application of big data to the value enhancement of enterprise supply chain management fully demonstrates the important role played by information technology. In recent years, the amount of data generated in supply chain management practice has increased exponentially, and big data analysis (BDA) has a huge space for development in the supply chain, however, there is still a lack of in-depth research on the application of BDA in the supply chain at present. Through combing the relevant literature, this paper makes a deep analysis of the application of big data in foreign supply chain, reviews the application of big data and its commercial value in supply chain of different industries at home and abroad, and probes into the performance improvement of construction supply chain management for big data application. This paper mainly selects the construction logistics process in the supply chain to construct the application model based on big data, in turn improves the performance of construction supply chain management to a great extent.
Get full access to this article
View all available purchase options and get full access to this chapter.
REFERENCES
Akter, S., Wamba, S.F., Gunasekaran, A., Dubey, R., and Childe, S.J. (2016). “How to improve firm performance using Big Data analytics capability and business strategy alignment?” International Journal of Production Economics, 182(3), 113-131.
Boratto, L., Carta, S., and Fenu, G. (2017). “Investigating the role of the rating prediction task in granularity-based group recommender systems and Big Data scenarios.” Information Sciences, 378(4), 424-443.
Fan, J.Q., Han, F., and Liu, H. (2014). “Challenges of Big Data analysis.” National Science Review, 1(2), 293-314.
Giannakis, M., and Louis, M. (2016). “A multi-agent based system with big data processing for enhanced supply chain agility.” Journal of Enterprise Information Management, 29(5), 706-727.
Jin, J., Liu, Y., Ji, P., and Liu, H.G. (2016). “Understanding big consumer opinion data for market-driven product design.” International Journal of Production Research, 54(10), 3019-3041.
Mazzei, M.J., and Noble, D. (2017). “Big Data dreams: A framework for corporate strategy.” Business Horizons, 60(3), 405-414.
Sanders, N.R. (2014). Big Data Driven Supply Chain Management: A Framework for Implementing Analytics and Turning Information Into Intelligence, Pearson FT Press, New Jersey.
Schlegel, G.L. (2014) “Utilizing Big Data and predictive analytics to manage supply chain risk.” Journal of Business Forecasting, 33(4), 11-17.
Wang, L.D. (2008) “Evaluation of operational performance of supply chain: Based on the analyses of conformity character and dissipative structure in supply chain.” 2008 IEEE International Conference on Service Operations and Logistics, and Informatics, Beijing, China, 2411-2414.
Information & Authors
Information
Published In
History
Published online: Nov 30, 2023
ASCE Technical Topics:
- Big data
- Computing in civil engineering
- Construction engineering
- Construction industry
- Construction management
- Data analysis
- Engineering fundamentals
- Freight transportation
- Information management
- Information Technology (IT)
- Infrastructure
- Logistics
- Methodology (by type)
- Research methods (by type)
- Supply chain management
- Transportation engineering
- Value engineering
Authors
Metrics & Citations
Metrics
Citations
Download citation
If you have the appropriate software installed, you can download article citation data to the citation manager of your choice. Simply select your manager software from the list below and click Download.