학술논문

High-speed Machine Learning-enhanced Receiver for Millimeter-Wave Systems
Document Type
Conference
Source
IEEE INFOCOM 2023 - IEEE Conference on Computer Communications Computer Communications, IEEE INFOCOM 2023 - IEEE Conference on. :1-10 May, 2023
Subject
Communication, Networking and Broadcast Technologies
Phased arrays
Wireless communication
Maximum likelihood estimation
Pipelines
Channel estimation
Receiving antennas
Throughput
Machine Learning
Millimeter Wave
Channel Estimation
Physical Layer
Equalization
Language
ISSN
2641-9874
Abstract
Machine Learning (ML) is a promising tool to design wireless physical layer (PHY) components. It is particularly interesting for millimeter-wave (mm-wave) frequencies and above, due to the more challenging hardware design and channel environment at these frequencies. Rather than building individual ML-components, in this paper, we design an entire ML-enhanced mm-wave receiver for frequency selective channels. Our ML-receiver jointly optimizes the channel estimation, equalization, phase correction and demapper using Convolutional Neural Networks. We also show that for mm-wave systems, the channel varies significantly even over short timescales, requiring frequent channel measurements, and this situation is exacerbated in mobile scenarios. To tackle this, we propose a new ML-channel estimation approach that refreshes the channel state information using the guard intervals (not intended for channel measurements) that are available for every block of symbols in communication packets. To the best of our knowledge, our ML-receiver is the first work to outperform conventional receivers in general scenarios, with simulation results showing up to 7 dB gains. We also provide an experimental validation of the ML-enhanced receiver with a 60 GHz FPGA-based testbed with phased antenna arrays, which shows a throughput increase by a factor of up to 6 over baseline schemes in mobile scenarios.