Binary MIMO Detection via Homotopy Optimization and Its Deep Adaptation

04/27/2020
by   Mingjie Shao, et al.
0

In this paper we consider maximum-likelihood (ML) MIMO detection under one-bit quantized observations and binary symbol constellations. This problem is motivated by the recent interest in adopting coarse quantization in massive MIMO systems–as an effective way to scale down the hardware complexity and energy consumption. Classical MIMO detection techniques consider unquantized observations, and many of them are not applicable to the one-bit MIMO case. We develop a new non-convex optimization algorithm for the one-bit ML MIMO detection problem, using a strategy called homotopy optimization. The idea is to transform the ML problem into a sequence of approximate problems, from easy (convex) to hard (close to ML), and with each problem being a gradual modification of its previous. Then, our attempt is to iteratively trace the solution path of these approximate problems. This homotopy algorithm is well suited to the application of deep unfolding, a recently popular approach for turning certain model-based algorithms into data-driven, and performance enhanced, ones. While our initial focus is on one-bit MIMO detection, the proposed technique also applies naturally to the classical unquantized MIMO detection. We performed extensive simulations and show that the proposed homotopy algorithms, both non-deep and deep, have satisfactory bit-error probability performance compared to many state-of-the-art algorithms. Also, the deep homotopy algorithm has attractively low computational complexity.

READ FULL TEXT

page 1

page 2

page 3

page 4

research
06/27/2023

An Efficient Global Algorithm for One-Bit Maximum-Likelihood MIMO Detection

There has been growing interest in implementing massive MIMO systems by ...
research
06/08/2018

Low-Complexity Multiuser QAM Detection for Uplink 1-bit Massive MIMO

This work studies multiuser detection for one-bit massive multiple-input...
research
11/30/2018

Robust Learning-Based ML Detection for Massive MIMO Systems with One-Bit Quantized Signals

In this paper, we investigate learning-based maximum likelihood (ML) det...
research
07/11/2021

Quantum Approximate Optimization Algorithm Based Maximum Likelihood Detection

Recent advances in quantum technologies pave the way for noisy intermedi...
research
09/06/2021

Bit Density Based Signal and Jamming Detection in 1-Bit Quantized MIMO Systems

This paper studies the problem of deciding on the absence (i.e., null hy...
research
10/23/2020

Divide and Conquer: One-Bit MIMO-OFDM Detection by Inexact Expectation Maximization

Adopting one-bit analog-to-digital convertors (ADCs) for massive multipl...
research
11/23/2020

Rephased CLuP

In <cit.> we introduced CLuP, a Random Duality Theory (RDT) based algori...

Please sign up or login with your details

Forgot password? Click here to reset