Bosong Huang, Weiting Zhang, Ruibin Guo, et al., “Industrial deterministic computation and networking resource scheduling via deep reinforcement learning,” Chinese Journal of Electronics, vol. x, no. x, pp. 1–9, xxxx. DOI: 10.23919/cje.2024.00.014
Citation: Bosong Huang, Weiting Zhang, Ruibin Guo, et al., “Industrial deterministic computation and networking resource scheduling via deep reinforcement learning,” Chinese Journal of Electronics, vol. x, no. x, pp. 1–9, xxxx. DOI: 10.23919/cje.2024.00.014

Industrial Deterministic Computation and Networking Resource Scheduling via Deep Reinforcement Learning

  • In this paper, a D3QN-based resource scheduling algorithm is proposed for industrial Internet of Things (IoT) to achieve the flexible adaptation of network resources. In the considered network scenario, the TSN-5G network architecture, primarily composed of TSN switches and 5G base stations, is designed accprdingly. Simulation results show that when network resources are limited, the D3QN-based resource scheduling algorithm can significantly improve the efficiency of task allocation, making it an ideal solution for reducing latency and optimizing resource utilization in industrial IoT.
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