REDUCING LATENCY IN SMART MANUFACTURING SERVICE SYSTEM USING EDGE COMPUTING |
Vimal, S.
(Department of Computer Science and Engineering, Ramco Institute of Technology)
Jesuva, Arockiadoss S (Department of Information Technology National Engineering College) Bharathiraja, S (Department of Information Technology National Engineering College) Guru, S (Department of Information Technology National Engineering College) Jackins, V. (Department of Information Technology National Engineering College) |
1 | Liang, Junbin, Min Zhang, and Victor CM Leung. "A Reliable Trust Computing Mechanism based on Multi-source Feedback and Fog Computing in Social Sensor Cloud." IEEE Internet of Things Journal (2020). |
2 | Ren, Jinke, et al. "Collaborative cloud and edge computing for latency minimization." IEEE Transactions on Vehicular Technology 68.5 (2019): 5031-5044. DOI |
3 | Wang, Haoxin, et al. "Architectural design alternatives based on cloud/edge/fog computing for connected vehicles." IEEE Communications Surveys & Tutorials 22.4 (2020): 2349-2377. DOI |
4 | Qi, Qinglin, and Fei Tao. "A smart manufacturing service system based on edge computing, fog computing, and cloud computing." IEEE Access 7 (2019): 86769-86777. DOI |
5 | Lin, Bing, et al. "A time-driven data placement strategy for a scientific workflow combining edge computing and cloud computing." IEEE Transactions on Industrial Informatics 15.7 (2019): 4254-4265. DOI |
6 | Zhang, Yongmin, et al. "Efficient computing resource sharing for mobile edge-cloud computing networks." IEEE/ACM Transactions on Networking 28.3 (2020): 1227-1240. DOI |
7 | F. Tao and Q. Qi, "New IT driven service-oriented smart manufacturing: Framework and characteristics," IEEE Trans. Syst., Man, Cybern. Syst., vol. 49, no. 1, pp. 81-91, Jan. 2019 DOI |
8 | Alarifi, Abdulaziz, et al. "Energy-Efficient Hybrid Framework for Green Cloud Computing." IEEE Access 8 (2020):115356-115369. DOI |
9 | Hou, Shoulu, et al. "Frequency-Reconfigurable Cloud Versus Fog Computing: An Energy-Efficiency Aspect." IEEE Transactions on GreenCommunications and Networking 4.1 (2019): 221-235 |
10 | Q. Qi and F. Tao, "Digital twin and big data towards smart manufacturing and industry 4.0: 360 degree comparison," IEEE Access, vol. 6, pp. 3585-3593, 2018. DOI |
11 | Siddiqi, Muhammad Hameed, et al. "Dynamic Priority-Based Efficient Resource Allocation and Computing Framework for Vehicular Multimedia Cloud Computing." IEEE Access 8 (2020): 81080-81089. DOI |
12 | Wang, Xiaofei, et al. "Convergence of edge computing and deep learning: A comprehensive survey." IEEE Communications Surveys & Tutorials 22.2 (2020): 869-904. DOI |
13 | Wang, T., Ke, H., Zheng, X., Wang, K., Sangaiah, A. K., & Liu, A. (2019). Big data cleaning based on mobile edge computing in industrial sensor-cloud. IEEE Transactions on Industrial Informatics, 16(2), 1321- 1329. DOI |
14 | Zhao, Dongfang, Mohamed Mohamed, and Heiko Ludwig. "Locality Aware scheduling for containers in cloud computing." IEEE Transactions on Cloud Computing (2018) |
15 | M. S. de Brito, S. Hoque, R. Steinke, A. Willner, and T. Magedanz, Application of the Fog computing paradigm to smart factories and cyber physical systems," Trans. Emerg. Telecommun. Technol., vol. 29, no. 4, p. E3184, 2018. DOI |