Speeding-up Symbol-Level Precoding Using Separable and Dual Optimizations
Junwen Yang, Ang Li, Xuewen Liao, Christos Masouros

TL;DR
This paper introduces low-complexity algorithms for symbol-level precoding in multi-user wireless systems, leveraging duality and separability to improve efficiency for PSK and QAM modulations.
Contribution
It establishes a duality between power minimization and SINR balancing SLP problems and develops new algorithms that reduce computational complexity.
Findings
Algorithms outperform state-of-the-art in complexity and performance
Duality enables efficient solution transfer between problems
Closed-form solutions for subproblems enhance computational speed
Abstract
Symbol-level precoding (SLP) manipulates the transmitted signals to accurately exploit the multi-user interference (MUI) in the multi-user downlink. This enables that all the resultant interference contributes to correct detection, which is the so-called constructive interference (CI). Its performance superiority comes at the cost of solving a nonlinear optimization problem on a symbol-by-symbol basis, for which the resulting complexity becomes prohibitive in realistic wireless communication systems. In this paper, we investigate low-complexity SLP algorithms for both phase-shift keying (PSK) and quadrature amplitude modulation (QAM). Specifically, we first prove that the max-min SINR balancing (SB) SLP problem for PSK signaling is not separable, which is contrary to the power minimization (PM) SLP problem, and accordingly, existing decomposition methods are not applicable. Next, we…
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Taxonomy
TopicsAdvanced Wireless Communication Techniques · Antenna Design and Optimization · PAPR reduction in OFDM
