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Short-Packet Communications in Multihop Networks With WET: Performance Analysis and Deep Learning-Aided Optimization

Authors
Toan-Van NguyenVan-Dinh Nguyenda Costa, Daniel BenevidesThien Huynh-TheHu, Rose QingyangAn, Beongku
Issue Date
Jan-2023
Publisher
IEEE-INST ELECTRICAL ELECTRONICS ENGINEERS INC
Keywords
Deep learning; energy harvesting; finite blocklength; multi-hop networks; nonconvex optimization
Citation
IEEE TRANSACTIONS ON WIRELESS COMMUNICATIONS, v.22, no.1, pp 439 - 456
Pages
18
Journal Title
IEEE TRANSACTIONS ON WIRELESS COMMUNICATIONS
Volume
22
Number
1
Start Page
439
End Page
456
URI
https://scholarworks.bwise.kr/kumoh/handle/2020.sw.kumoh/28428
DOI
10.1109/TWC.2022.3195234
ISSN
1536-1276
1558-2248
Abstract
In this paper, we study short-packet communications in multi-hop networks with wireless energy transfer, where relay nodes harvest energy from power beacons to transmit short packets to multiple destinations. It is proposed a novel cooperative beamforming relay selection (CRS) scheme which incorporates partial relay selection and distributed multiuser beamforming to achieve a high-reliable transmission in two consecutive hops. A closed-form expression for the average block error rate (BLER) of the CRS scheme is derived, based on which an asymptotic analysis is also carried out. To achieve optimal channel uses allocation, we formulate a fairness end-to-end throughput maximization problem which is generally NP-hard due to the non-concavity of the objective function and mixed-integer constraints. To solve this challenging problem efficiently, we first relax channel uses to be continuous and transform the relaxed problem into an equivalent non-convex one, but with a more tractable form. We then develop a low-complexity iterative algorithm relying on inner approximation framework to convexify non-convex parts that converges to at least a locally optimal solution. Towards real-time settings, we design an efficient deep convolutional neural network (CNN) with multiscale-accumulation connections to achieve the sub-optimal solution of the relaxed problem via real-time inference processes. Numerical results are presented to verify the analytical derivations and to demonstrate performance improvements of the CRS scheme over the benchmark ones in terms of BLER, reliability, latency, and throughput in various settings. Moreover, the designed CNN provides the lowest root-mean-square error compared to the state-of-the-art deep learning approaches while the CNN-aided optimization framework estimates accurately the optimal channel uses allocation with low execution time.
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