Abstract
This study explores the influencing factors on intelligent transformation and upgrading of China’s logistics firms under smart logistics, and designs the corresponding framework to guide the practice of firms. By analyzing the characteristics of smart logistics and the transformation and upgrading needs of traditional logistics, from the micro perspective of logistics firms, this paper constructs influencing factor index system of smart transformation and development from four dimensions: logistics technology innovation, logistics big data sharing, logistics management upgrading and logistics decision-making transformation. Logistics firms are divided into firms with medium scale and above and small and medium-sized firms according to their scale. Then EWIF-AHP model is proposed to measure the weight of index system and score the decision-making, so as to evaluate the impact of various influencing factors on transformation and development of logistics firms. The results show that, for logistics firms above medium scale, logistics technology innovation and logistics big data sharing have the most significant impact on transformation and development, followed by logistics management upgrading and logistics decision-making transformation. For small and medium-sized logistics firms, the biggest factor is the upgrading of logistics management, followed by the upgrading of logistics technology, which is almost as important as the influencing factors of the upgrading of logistics management, and followed by the sharing of logistics big data and the transformation of logistics decision-making. Therefore, corresponding countermeasures and suggestions for intelligent transformation of logistics firms have been put forward.
Funder
Ministry of Education Humanities and Social Sciences
Key topics of the committee of education ministry
key course construction of logistics economy in Shanghai Municipal Education Commission
Publisher
Public Library of Science (PLoS)
Reference42 articles.
1. Determinants of Innovation Speed towards Innovation Performance among Factory Workers in Malaysia;M Shaharudin;Environment-Behavior Proceedings Journal,2022
2. Industry 4.0 implications in logistics: An overview;L Barreto;Procedia Manufacturing,2017
3. Liu, W., Liang, Y., Wei, S. and Wu, P. The organizational collaboration framework of smart logistics ecological chain: a multi-case study in China, Industrial Management and Data Systems. 2020.
4. Energy-efficient train timetable optimization in the subway system with energy storage devices;P Liu;IEEE Transactions on Intelligent Transportation Systems,2018
5. Supply chain business intelligence and the supply chain performance: the mediating role of supply chain agility;W. Aunyawong;International Journal of Supply Chain Management,2020