DEFORM: A Practical, Universal Deep Beamforming System

03/18/2022
by   Hai N. Nguyen, et al.
0

We introduce, design, and evaluate a set of universal receiver beamforming techniques. Our approach and system DEFORM, a Deep Learning (DL) based RX beamforming achieves significant gain for multi antenna RF receivers while being agnostic to the transmitted signal features (e.g., modulation or bandwidth). It is well known that combining coherent RF signals from multiple antennas results in a beamforming gain proportional to the number of receiving elements. However in practice, this approach heavily relies on explicit channel estimation techniques, which are link specific and require significant communication overhead to be transmitted to the receiver. DEFORM addresses this challenge by leveraging Convolutional Neural Network to estimate the channel characteristics in particular the relative phase to antenna elements. It is specifically designed to address the unique features of wireless signals complex samples, such as the ambiguous 2π phase discontinuity and the high sensitivity of the link Bit Error Rate. The channel prediction is subsequently used in the Maximum Ratio Combining algorithm to achieve an optimal combination of the received signals. While being trained on a fixed, basic RF settings, we show that DEFORM DL model is universal, achieving up to 3 dB of SNR gain for a two antenna receiver in extensive experiments demonstrating various settings of modulations, bandwidths, and channels. The universality of DEFORM is demonstrated through joint beamforming relaying of LoRa (Chirp Spread Spectrum modulation) and ZigBee signals, achieving significant improvements to Packet Loss/Delivery Rates relatively to conventional Amplify and Forward (LoRa PLR reduced by 23 times and ZigBee PDR increased by 8 times).

READ FULL TEXT
research
02/14/2018

Beamforming with Multiple One-Bit Wireless Transceivers

Classical beamforming techniques rely on highly linear transmitters and ...
research
03/18/2022

Towards an AI-Driven Universal Anti-Jamming Solution with Convolutional Interference Cancellation Network

Wireless links are increasingly used to deliver critical services, while...
research
05/13/2019

RFocus: Practical Beamforming for Small Devices

To reduce transmit power, increase throughput, and improve communication...
research
01/25/2019

Continuous Analog Channel Estimation Aided Beamforming for Massive MIMO Systems

Analog beamforming is an attractive solution to reduce the implementatio...
research
10/04/2018

Designing Anti-Jamming Receivers for NR-DCSK Systems Utilizing ICA, WPD, and VMD Methods

In this work, we consider an advanced noise reduction differential chaot...
research
03/08/2023

Splitting Receiver with Multiple Antennas

Recently proposed splitting receivers, utilizing both coherently and non...
research
01/12/2022

Implementation of FGPA based Channel Sounder for Large scale antenna systems using RFNoC on USRP Platform

This paper concentrates on building a multi-antenna FPGA based Channel S...

Please sign up or login with your details

Forgot password? Click here to reset