Mobile QR Code QR CODE

2024

Acceptance Ratio

21%

References

1 
Chen D. , Mustafaoglu Z. , Koundal D. , Guo Y. , 2020, Resource cube: multi-virtual resource management for integrated satellite-terrestrial industrial IoT networks, IEEE Transactions on Vehicular Technology, Vol. 69, No. 10, pp. 11963-11974DOI
2 
Chuang I. H. , Sun R. C. , Tsai H. J. , Horng M. F. , Kuo Y. H. , 2019, A dynamic multi-resource management for edge computing, Proc. of the European Conference on Networks and Communications, pp. 379-383DOI
3 
Chen Q. , Wang Z. , Xu Y. , Li J. , 2019, Avalon: towards QoS awareness and improved utilization through multi-resource management in datacenters, Proc. of the ACM International Conference on Supercomputing, pp. 272-283Google Search
4 
Qadeer A. , Lee M. J. , 2023, Deep-deterministic policy gradient based multi-resource allocation in edge-cloud system: a distributed approach, IEEE Access, Vol. 11, pp. 20381-20398DOI
5 
Lin W. , Xu S. , Wang Y. , Li J. , 2017, Multi-resource scheduling and power simulation for cloud computing, Information Sciences, Vol. 397-398, pp. 168-186DOI
6 
Li X. , Xu L. D. , 2020, A review of Internet of Things resource allocation, IEEE Internet of Things Journal, Vol. 8, No. 11, pp. 8657-8666Google Search
7 
Sangaiah A. , Hosseinabadi A. , Tavana M. B. , Khan S. J. K. , 2020, IoT resource allocation and optimization based on heuristic algorithm, Sensor Fusion for IoT Applications, Vol. 20, No. 2, pp. 539DOI
8 
Zhao L. , Wang J. , Liu J. , Kato N. , 2019, Optimal edge resource allocation in IoT-based smart cities, IEEE Network, Vol. 33, No. 2, pp. 30-35DOI
9 
Gu Y. , Chang Z. , Pan M. , Song L. , Han Z. , 2018, Joint radio and computational resource allocation in IoT fog computing, IEEE Transactions on Vehicular Technology, Vol. 67, No. 8, pp. 7475-7484DOI
10 
Chang Z. , Liu L. , Guo X. , Sheng Q. , 2021, Dynamic resource allocation and computation offloading for IoT fog computing system, IEEE Transactions on Industrial Informatics, Vol. 17, No. 5, pp. 3348-3357DOI
11 
Xiong X. , Zheng K. , Lei L. , Hou L. , 2020, Resource allocation based on deep reinforcement learning in IoT edge computing, IEEE Journal on Selected Areas in Communications, Vol. 38, No. 6, pp. 1133-1146DOI
12 
He X. , Wang K. , Huang H. , Miyazaki T. , Wang Y. , Guo S. , 2020, Green resource allocation based on deep reinforcement learning in content-centric IoT, IEEE Transactions on Emerging Topics in Computing, Vol. 8, No. 3, pp. 781-796DOI
13 
Chun W. , 2018, SEIRA: an effective algorithm for IoT resource allocation problem, Computer Communications, Vol. 119, pp. 156-166DOI
14 
Du Y. , Wang K. , Yang K. , Zhang G. , 2018, Energy-efficient resource allocation in UAV based MEC system for IoT devices, Proc. of the IEEE Global Communications Conference, pp. 1-6DOI
15 
Liu B. , Liu C. , Peng M. , 2020, Resource allocation for energy-efficient MEC in NOMA-enabled massive IoT networks, IEEE Journal on Selected Areas in Communications, Vol. 39, No. 4, pp. 1015-1027Google Search
16 
Yang O. , Wang Y. , 2020, Optimization of time and power resources allocation in communication systems under the industrial Internet of Things, IEEE Access, Vol. 8, pp. 140392-140398DOI
17 
Wang J. , Jin C. , Tang Q. , Xiong N. , 2020, GJRA: a global joint resource allocation scheme for UAV service of PEC in industrial IoTs, arXiv preprintGoogle Search
18 
Xu H. , Li Q. , Gao H. , Xu X. , Han Z. , 2021, Residual energy maximization-based resource allocation in wireless-powered edge computing industrial IoT, IEEE Internet of Things Journal, Vol. 8, pp. 17678-17690DOI
19 
Liang H. , Zhang X. , Hong X. , Zhang Z. , Li M. , Hu G. , Hou F. , 2021, Reinforcement learning enabled dynamic resource allocation in the Internet of Vehicles, IEEE Transactions on Industrial Informatics, Vol. 17, pp. 4957-4967DOI
20 
Khan L. , Alsenwi M. , Yaqoob I. , Imran M. , Han Z. , Hong C. , 2020, Resource optimized federated learning-enabled cognitive Internet of Things for smart industries, IEEE Access, Vol. 8, pp. 168854-168864DOI
21 
Goswami P. , Mukherjee A. , Maiti M. , Tyagi S. , Yang L. , 2021, A neural-network-based optimal resource allocation method for secure industrial IoT network, IEEE Internet of Things Journal, Vol. 9, pp. 2538-2544Google Search
22 
Leng S. , Yener A. , 2019, Age of information minimization for an energy harvesting cognitive radio, IEEE Transactions on Cognitive Communications and Networking, Vol. 5, pp. 427-439DOI
23 
Tripathi V. , Talak R. , Modiano E. , 2019, Age of information for discrete time queues, arXiv preprintGoogle Search
24 
Kadota I. , Sinha A. , Modiano E. , 2019, Scheduling algorithms for optimizing age of information in wireless networks with throughput constraints, IEEE/ACM Transactions on Networking, Vol. 27, pp. 1359-1372DOI
25 
Yates R. , Sun Y. , Brown D. , Kaul S. , Modiano E. , Ulukus S. , 2020, Age of information: an introduction and survey, IEEE Journal on Selected Areas in Communications, Vol. 39, pp. 1183-1210Google Search
26 
Wang X. , Ning Z. , Guo S. , Wen M. , Poor H. V. , 2022, Minimizing the age-of-critical-information: an imitation learning-based scheduling approach under partial observations, IEEE Transactions on Mobile Computing, Vol. 21, pp. 3225-3238DOI
27 
Gindullina E. , Badia L. , Gündüz D. , 2020, Age-of-information with information source diversity in an energy harvesting system, IEEE Transactions on Green Communications and Networking, Vol. 5, pp. 1529-1540Google Search
28 
Abbas Q. , Zeb S. , Hassan S. , Mumtaz R. , Zaidi S. , 2020, Joint optimization of age of information and energy efficiency in IoT networks, Proc. of the IEEE 91st Vehicular Technology ConferenceDOI