Intelligent and Converged Networks (Dec 2021)

QSPCA: A two-stage efficient power control approach in D2D communication for 5G networks

  • Saurabh Chandra,
  • Prateek,
  • Rohit Sharma,
  • Rajeev Arya,
  • Korhan Cengiz

DOI
https://doi.org/10.23919/ICN.2021.0021
Journal volume & issue
Vol. 2, no. 4
pp. 295 – 305

Abstract

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The existing literature on device-to-device (D2D) architecture suffers from a dearth of analysis under imperfect channel conditions. There is a need for rigorous analyses on the policy improvement and evaluation of network performance. Accordingly, a two-stage transmit power control approach (named QSPCA) is proposed: First, a reinforcement Q-learning based power control technique and; second, a supervised learning based support vector machine (SVM) model. This model replaces the unified communication model of the conventional D2D setup with a distributed one, thereby requiring lower resources, such as D2D throughput, transmit power, and signal-to-interference-plus-noise ratio as compared to existing algorithms. Results confirm that the QSPCA technique is better than existing models by at least 15.31% and 19.5% in terms of throughput as compared to SVM and Q-learning techniques, respectively. The customizability of the QSPCA technique opens up multiple avenues and industrial communication technologies in 5G networks, such as factory automation.

Keywords