Survey of intelligent transportation applications based on cloud computing technology
DOI:
https://doi.org/10.62051/ijcsit.v1n1.06Keywords:
Cloud computing, Transportation, Urban rail transit, Highway traffic, Safety early warningAbstract
China is a large transportation country, and in addition to the huge demand for public transportation such as rail transit, private cars on city streets and highways are also a major force, followed by safety issues, and cloud computing plays an important role in today's society, and in some areas where transportation wisdom has been applied, transportation wisdom has become the general trend. As a result, this article will examine and describe the use of cloud computing in urban rail transit information security issues as well as urban and highway traffic safety early warning.
Downloads
References
Gao C C & Xiao Y. (2017). Research on urban rail transit information security early warning and defense system based on cloud computing. (Eds.), Proceedings of the Fourth National Academic Conference on Smart Cities and Rail Transit and the Annual Meeting of Rail Transit Research Group, Digital City Professional Committee, China Society for Urban Studies. China Minzu University Press. pp.74-77.
Wei J H. (2018). Simulation of delay optimization control for fast multipath transmission of network information. Computer Simulation (07),139-142+216.
Wang Y A. (2018). The city traffic safety early warning system based on mobile cloud computing research. Thesis of Beijing University Of Technology, 1-3+5-6.
Li S, Yang L, Zhao X H. (2023). Short-term Traffic congestion prediction algorithm based on deep learning in urban areas. Science, Technology and Engineering (25),10866-10878.
Chu L D. (2023). On the role of highway transportation in promoting regional economic development. China Aviation Weekly (15),49-51.
Cheng C. (2016). The highway traffic safety early warning system based on cloud architecture studies. Thesis of Chongqing Jiaotong University, 44-54.
Liu S. (2019). The urban expressway traffic flow data fusion methods. Thesis of Lanzhou Jiaotong University,10-11.
Downloads
Published
Issue
Section
License

This work is licensed under a Creative Commons Attribution-NonCommercial 4.0 International License.







