Title
Reinforcement Learning-Based Computing and Transmission Scheduling for LTE-U-Enabled IoT
Abstract
To facilitate the private deployment of industrial Internet-of-Things (IoT), applying LTE in unlicensed spectrum (LTE-U) is a promising approach, which both tackles the problem of lacking licensed spectrum and leverages an LTE protocol to meet stringent quality-of- service (QoS) requirements via centralized control. In this paper, we investigate the computing offloading problem in an LTE-U-enabled network, where the task on an IoT device is carried out either locally or is offloaded to the LTE-U base station (BS). The offloading policy is formulated as an optimization problem to maximize the long term discounted reward, considering both task completion profit and the task completion delay. Due to the stochastic task arrival process at each device and the Wi-Fi's contention-based random access, we reformulate the computing offloading problem into a Q-learning problem and solve it by a deep learning network-based approximation method. Simulation results show that the proposed scheme considerably enhances the system performance.
Year
DOI
Venue
2018
10.1109/GLOCOM.2018.8647178
2018 IEEE Global Communications Conference (GLOBECOM)
Field
DocType
ISBN
Base station,Software deployment,Computer science,Computer network,Quality of service,Artificial intelligence,Deep learning,LTE in unlicensed spectrum,Optimization problem,Reinforcement learning,Random access
Conference
978-1-5386-4727-1
Citations 
PageRank 
References 
1
0.34
0
Authors
5
Name
Order
Citations
PageRank
Hongli He1162.67
Hangguan Shan246144.52
Aiping Huang326232.43
Qiang Ye413818.73
Zhuang, W.54190302.05