Industrial Deterministic Computation and Networking Resource Scheduling via Deep Reinforcement Learning
-
Graphical Abstract
-
Abstract
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.
-
-