Xiao, Z., Shu, J., Jiang, H., Lui, J. C. S., Min, G., Liu, J., & Dustdar, S. (2023). Multi-Objective Parallel Task Offloading and Content Caching in D2D-Aided MEC Networks. IEEE Transactions on Mobile Computing, 22(11), 6599–6615. https://doi.org/10.1109/TMC.2022.3199876
In device to device (D2D) aided mobile edge computing (MEC) networks, by implementing content caching and D2D links, the edge server and nearby mobile devices can provide task offloading platforms. For parallel tasks, proper decisions on content caching and task offloading help reduce delay and energy consumption. However, what is often ignored in the previous works is the joint optimization of parallel task offloading and content caching. In this paper, we aim to find optimal content caching and parallel task offloading strategies, so as to minimize task delay and energy consumption. The minimization problem is formulated as a multi-objective optimization problem, concerning both content caching and parallel task offloading. The content caching is formulated as an integer knapsack problem (IKP). To solve the IKP problem, an enhanced Binary Particle Swarm Optimization algorithm is proposed. The parallel task offloading problem is formulated as a constrained multi-objective optimization problem, an improved multi-objective bat algorithm is proposed to address the problem. Experimental results show that our algorithm can decrease delay and energy cost by at most 45% and 56%, respectively. In addition, the parallel task offloading ratio remains over 91% even with large number of mobile devices (MDs).
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Project (external):
National Natural Science Foundation of China National Natural Science Foundation of China Key Research and Development Projects of Hunan Province of China Key Research and Development Projects of Hunan Province of China Hunan Natural Science Foundation of China Funding Projects of Zhejiang Open Research Fund from Guangdong Laboratory of Artificial Intelligence and Digital Economy Open Research Fund from Guangdong Laboratory of Artificial Intelligence and Digital Economy
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Project ID:
Grant 62202148 Grant U20A20181 Grant 2022GK2020 Grant 2021WK2001 Grant 2022JJ30171 Grant 2021LC0AB05 Grant GML-KF-22-22 Grant GML-KF-22-23