A Recurrent Neural Network (RNN) detector is obtained by interfacing the RNN BCJR, introduced by the authors, with the channel output through a convolutional linear layer that mimics the presence of a shortening filter. The RNN detector can be trained to implement a channel and modulationagnostic detector, including the functions of channel shortening, Maximum Likelihood (ML) sequence detection, and symbol or bit Log-Likelihood (LL) computation for the following soft input channel decoder. The RNN detector has a processing complexity that matches that of the corresponding classical receiver. In this paper we explore the effectiveness of its employment in static and time-selective scenarios.

The RNN BCJR Detector in Time-Varying Channels / Magnaldi, Martina; Montorsi, Guido. - (2025). (Intervento presentato al convegno 2025 IEEE Wireless Communications and Networking Conference (WCNC) tenutosi a Milan (Ita) nel 24-27 March, 2025).

The RNN BCJR Detector in Time-Varying Channels

Magnaldi, Martina;Montorsi, Guido
2025

Abstract

A Recurrent Neural Network (RNN) detector is obtained by interfacing the RNN BCJR, introduced by the authors, with the channel output through a convolutional linear layer that mimics the presence of a shortening filter. The RNN detector can be trained to implement a channel and modulationagnostic detector, including the functions of channel shortening, Maximum Likelihood (ML) sequence detection, and symbol or bit Log-Likelihood (LL) computation for the following soft input channel decoder. The RNN detector has a processing complexity that matches that of the corresponding classical receiver. In this paper we explore the effectiveness of its employment in static and time-selective scenarios.
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Utilizza questo identificativo per citare o creare un link a questo documento: https://hdl.handle.net/11583/2998668