ABSTRACT
This paper explores the problem of optoelectronic task processing based on multilevel collaborative computing networks. The core keywords of the research include optoelectronic task processing, edge computing, cloud computing, and computational offloading. The aim of the article is to investigate how to efficiently process optoelectronic tasks in a multilevel collaborative computing network through an optimization approach. We propose a distribution-based algorithm to solve the minimum overhead of optoelectronic task processing. Further, we propose an entropy decision-based algorithm to improve existing algorithms to avoid falling into local optimal solutions.
- S. Yuan, J. Li, Y. Zhu, C. Wu, and Y. Ding, "An energy-efficient computing offloading framework for blockchain-enabled video streaming systems," in IEEE Global Communications Conference. ieee, 2022, pp. 5183-5188.Google Scholar
- S. Yuan, J. Li, H. Chen, Z. Han, C. Wu, and Y. Zhang, "Jira: Joint incentive design and resource allocation for edge-based real-time video streaming systems," IEEE Transactions on Wireless Communications, 2022.Google Scholar
- X. Xu, Q. Wu, L. Qi, W. Dou, S.-B. Tsai, and M. Z. A. Bhuiyan, "Trust-aware service offloading for video surveillance in edge computing enabled internet of vehicles," IEEE Transactions on Intelligent Trans- portation Systems, vol. 22, no. 3, pp. 1787-1796, 2012. 2021.Google ScholarDigital Library
- A. Sacco, F. Esposito, G. Marchetto, and P. Montuschi, "Sustainable task offloading in uav networks via multi-agent reinforcement learning," IEEE Transactions on Vehicular Technology, vol. 70, pp. 5003-5015, 5 2021.Google ScholarCross Ref
- S. Yuan, J. Li, J. Liang, Y. Zhu, X. Yu, J. Chen, and C. Wu, "Sharding for blockchain based mobile edge computing system: a deep reinforcement learning approach," in 2021 IEEE Global Communications Conference (GLOBECOM). IEEE, 2021, pp. 1-6.Google Scholar
- S. Yuan, J. Li, C. Wu, Y. Ji, and Y. Zhang, "Dcvp: Distributed collaborative video stream processing in edge computing," in 2020 IEEE 26th International Conference on Parallel and Distributed Systems (ICPADS), 2020, pp. 625-632.Google Scholar
- R. Lowe, Y. I. Wu, A. Tamar, J. Harb, O. PieterAbbeel, and I. Mordatch, "Multi-agent actor-critic for mixed cooperative-competitive environ- ments," Advances in neural information processing systems, vol. 30, 2017.Google Scholar
- S. Yuan, J. Li, and C. Wu, "Jora: Blockchain-based efficient joint computing offloading and resource allocation for edge video streaming systems," Journal of Systems Architecture, vol. 133, p. 102740, 2022.Google ScholarDigital Library
- Yan Ding , Kenli Li , Chubo Liu , and Keqin Li , "A Potential Game Theoretic Approach to Computation Offloading Strategy Optimization in End-Edge-Cloud Computing," IEEE Transactions on parallel and distributed systems, Vol. 33, No. 6, June 2022.Google Scholar
- Liu Zening , Li Kai , Wu Liantao , Wang Zhi , and YangYang , "CATS: Cost Aware Task Scheduling in Multi-Tier Computing Networks, " Journal of Computer Research and Development, 57(9): 1810-1822 , 2020.Google Scholar
- Xiantao Jiang , F. Richard Yu , Tian Song, and Victor C.M. Leung, Intelligent Resource Allocation for Video Analytics in Blockchain-Enabled Internet of Autonomous Vehicles with Edge Computing, IEEE Internet of Things Journal, 9 (16), pp. 14260-14272, August 2022.Google ScholarCross Ref
- Yuan S, Dong B, Lvy H, Adaptive Incentivize for Cross-Silo Federated Learning in IIoT: A Multi-agent Reinforcement Learning Approach[J]. IEEE Internet of Things Journal, 2023.Google Scholar
- S. Yuan "TradeFL: A Trading Mechanism for Cross-Silo Federated Learning," 2023 IEEE 43rd International Conference on Distributed Computing Systems (ICDCS), Hong Kong, Hong Kong, 2023, pp. 920-930, doi: 10.1109/ICDCS57875.2023.00051.Google ScholarCross Ref
- H. Liu “Adaptive Processing for Video Streaming with Energy Constraint: A Multi-Agent Reinforcement Learning Method,” 2023 IEEE Global Communications Conference (Globecom), Kuala Lumpur, Malaysia, 2023.Google ScholarCross Ref
Index Terms
- Optoelectronic Task Processing based on Multilevel Collaborative Computing Networks: An Optimization-based Approach
Recommendations
A Pattern for Fog Computing
VikingPLoP '16: Proceedings of the 10th Travelling Conference on Pattern Languages of ProgramsFog Computing is a new variety of the cloud computing paradigm that brings virtualized cloud services to the edge of the network to control the devices in the IoT. We present a pattern for fog computing which describes its architecture, including its ...
All one needs to know about fog computing and related edge computing paradigms: A complete survey
AbstractWith the Internet of Things (IoT) becoming part of our daily life and our environment, we expect rapid growth in the number of connected devices. IoT is expected to connect billions of devices and humans to bring promising advantages ...
A Survey of Fog Computing: Concepts, Applications and Issues
Mobidata '15: Proceedings of the 2015 Workshop on Mobile Big DataDespite the increasing usage of cloud computing, there are still issues unsolved due to inherent problems of cloud computing such as unreliable latency, lack of mobility support and location-awareness. Fog computing can address those problems by ...
Comments