Delay Optimization in Mobile Edge Computing: Cognitive UAV-Assisted eMBB and mMTC Services
2022; Institute of Electrical and Electronics Engineers; Volume: 8; Issue: 2 Linguagem: Inglês
10.1109/tccn.2022.3149089
ISSN2372-2045
AutoresSaifur Rahman Sabuj, Derek Kwaku Pobi Asiedu, Kyoung‐Jae Lee, Han‐Shin Jo,
Tópico(s)Distributed Control Multi-Agent Systems
ResumoMobile edge computing (MEC) in cognitive radio networks is an optimistic technique for improving the computational capability and spectrum utilization efficiency. In this study, we developed an MEC system assisted by a cognitive unmanned aerial vehicle (CUAV), where a CUAV equipped with an MEC server can serve as a relay node and computing node. In such networks, a non-orthogonal multiple access scheme is considered to serve enhanced mobile broadband communication (eMBB) and massive machine-type communication (mMTC) users, in which the transmission delay for both users is derived. To optimize the delay in this system, we formulated an optimization problem aimed at minimizing the processing delay of eMBB and mMTC users by jointly optimizing the transmit power of the users' information, considering the constraints of the transmit power of the secondary network. The numerical results demonstrate that the proposed Rosen's gradient projection algorithm can considerably minimize the processing delay for a CUAV with a fixed position compared with a CUAV with a predetermined trajectory.
Referência(s)