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...
peer reviewedIn this paper, we investigate the symbol-level precoding (SLP) design problem in the do...
In this work, we consider a multiple input multiple-output system with large-scale antenna array whi...
peer reviewedIn this paper, we demonstrate an FPGA accelerated design of the computationally efficie...
This paper proposes an unsupervised learning-based precoding framework that trains deep neural netwo...
Symbol level precoding (SLP) has been proven to be an effective means of managing the interference i...
In this paper, we consider massive multiple-input-multiple-output (MIMO) communication systems with ...
Optimal pilot design to acquire channel state information (CSI) is of critical importance for FDD do...
Conventional symbol-level precoding (SLP) designs assume fixed modulations and detection rules at th...
In this paper, we propose a constructive interference (CI)-based block-level precoding (CI-BLP) app...
peer reviewedIn this letter, we study the optimal solution of multiuser symbol-level precoding (SLP)...
peer reviewedThis paper proposes a new symbol-level precoding scheme at the cognitive transmitter th...
peer reviewedThis paper addresses the optimization problem of symbol-level precoding (SLP) in the do...
peer reviewedWe investigate the performance of multi-user multiple-antenna downlink systems in which...
In this paper, we propose a low-complexity method to approximately solve the SINR-constrained optimi...
peer reviewedIn this paper, we investigate the downlink transmission of a multiuser multiple-input s...
peer reviewedIn this paper, we investigate the symbol-level precoding (SLP) design problem in the do...
In this work, we consider a multiple input multiple-output system with large-scale antenna array whi...
peer reviewedIn this paper, we demonstrate an FPGA accelerated design of the computationally efficie...
This paper proposes an unsupervised learning-based precoding framework that trains deep neural netwo...
Symbol level precoding (SLP) has been proven to be an effective means of managing the interference i...
In this paper, we consider massive multiple-input-multiple-output (MIMO) communication systems with ...
Optimal pilot design to acquire channel state information (CSI) is of critical importance for FDD do...
Conventional symbol-level precoding (SLP) designs assume fixed modulations and detection rules at th...
In this paper, we propose a constructive interference (CI)-based block-level precoding (CI-BLP) app...
peer reviewedIn this letter, we study the optimal solution of multiuser symbol-level precoding (SLP)...
peer reviewedThis paper proposes a new symbol-level precoding scheme at the cognitive transmitter th...
peer reviewedThis paper addresses the optimization problem of symbol-level precoding (SLP) in the do...
peer reviewedWe investigate the performance of multi-user multiple-antenna downlink systems in which...
In this paper, we propose a low-complexity method to approximately solve the SINR-constrained optimi...
peer reviewedIn this paper, we investigate the downlink transmission of a multiuser multiple-input s...
peer reviewedIn this paper, we investigate the symbol-level precoding (SLP) design problem in the do...
In this work, we consider a multiple input multiple-output system with large-scale antenna array whi...
peer reviewedIn this paper, we demonstrate an FPGA accelerated design of the computationally efficie...