Sparse CNN and Deep Reinforcement Learning-Based D2D Scheduling in UAV-Assisted Industrial IoT Networks

被引:15
作者
Tuong, Van Dat [1 ]
Noh, Wonjong [2 ]
Cho, Sungrae [1 ]
机构
[1] Chung Ang Univ, Sch Comp Sci & Engn, Seoul 06974, South Korea
[2] Hallym Univ, Sch Software, Chunchon 24252, South Korea
关键词
Device-to-device communication; Industrial Internet of Things; Job shop scheduling; Interference; Neural networks; Deep learning; Computational complexity; Deep deterministic policy gradient (DDPG)-based reinforcement learning; geographical map; sparse convolutional neural network (SCNN); UAV-assisted industrial-Internet-of-Things (IIoT) networks; unmanned aerial vehicle (UAV)-assisted device-to-device (D2D) scheduling; WIRELESS; THROUGHPUT; ALLOCATION;
D O I
10.1109/TII.2023.3254651
中图分类号
TP [自动化技术、计算机技术];
学科分类号
0812 ;
摘要
Unmanned aerial vehicles (UAVs) have been widely applied in wireless communications because of its high flexibility and line-of-sight transmission. In this study, we develop low-complexity and robust device-to-device (D2D) link scheduling in UAV-assisted industrial-Internet-of-Things (IIoT) networks. First, we propose a sparse convolutional neural network (SCNN) model that uses the geographical map of transmission links as input. The model consists of three main blocks: 1) generic feature filtering, 2) speed-accuracy balancing, and 3) deep feature processing. Unlike other state-of-the-art methods, the proposed SCNN directly processes the geographical map collected using a connected UAV. Second, we propose a deep deterministic policy gradient-based reinforcement learning model that processes the output feature map from the SCNN to optimize the D2D scheduling decision and maximize the achievable system rate in the long run. Extensive simulations revealed that the proposed scheme significantly improved the achievable rate over other benchmark comparison schemes, such as transmitters and receivers density-based deep learning (DL), ResNet-based DL, VGGNet-based DL, random scheduling, and all-active schemes, respectively. The simulations also demonstrated that the proposed scheme reduces computational complexity. With reduced complexity and nearly optimal performance, the proposed solution can be more efficiently applied to large-scale and dense IIoT networks.
引用
收藏
页码:213 / 223
页数:11
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