IEEE Open Journal of the Communications Society (Jan 2023)

An Unsupervised Deep Unfolding Framework for Robust Symbol-Level Precoding

  • Abdullahi Mohammad,
  • Christos Masouros,
  • Yiannis Andreopoulos

DOI
https://doi.org/10.1109/OJCOMS.2023.3270455
Journal volume & issue
Vol. 4
pp. 1075 – 1090

Abstract

Read online

Symbol Level Precoding (SLP) has attracted significant research interest due to its ability to exploit interference for energy-efficient transmission. This paper proposes an unsupervised deep-neural network (DNN) based SLP framework. Instead of naively training a DNN architecture for SLP without considering the specifics of the optimization objective of the SLP domain, our proposal unfolds a power minimization SLP formulation based on the interior point method (IPM) proximal ‘log’ barrier function. Furthermore, we extend our proposal to a robust precoding design under channel state information (CSI) uncertainty. The results show that our proposed learning framework provides near-optimal performance while reducing the computational cost from $\mathcal{O}(n^{7.5})$ to $\mathcal{O}(n^{3})$ for the symmetrical system case where $n=\text {number of transmit antennas}=\text {number of users}$ . This significant complexity reduction is also reflected in a proportional decrease in the proposed approach’s execution time compared to the SLP optimization-based solution.

Keywords