Litcius/Paper detail

Deep OFDM Channel Estimation: Capturing Frequency Recurrence

Abu Shafin Mohammad Mahdee Jameel, Akshay Malhotra, Aly El Gamal, Shahab Hamidi-Rad

2024IEEE Communications Letters13 citationsDOI

Abstract

In this letter, we propose a deep-learning-based channel estimation scheme in an orthogonal frequency division multiplexing (OFDM) system. Our proposed method, named Single Slot Recurrence Along Frequency Network (SisRafNet), is based on a novel study of recurrent models for exploiting sequential behavior of channels across frequencies. Utilizing the fact that wireless channels have a high degree of correlation across frequencies, we employ recurrent neural network techniques within a single OFDM slot, thus overcoming the latency and memory constraints typically associated with recurrence based methods. The proposed SisRafNet delivers superior estimation performance compared to existing deep-learning-based channel estimation techniques and the performance has been validated on a wide range of 3rd Generation Partnership Project (3GPP) compliant channel scenarios at multiple signal-to-noise ratios.

Topics & Concepts

Orthogonal frequency-division multiplexingComputer scienceChannel (broadcasting)Deep learningLatency (audio)Artificial neural networkWirelessAlgorithmRecurrent neural networkArtificial intelligenceTelecommunicationsAdvanced Wireless Communication TechniquesWireless Signal Modulation ClassificationSpeech and Audio Processing