scispace - formally typeset
Journal ArticleDOI

Likelihood Ascent Search Detection for Coded Massive MU-MIMO Systems to Mitigate IAI and MUI

TLDR
The proposed work presents joint SVD precoding and LAS MUD to mitigate both IAI and MUI and can achieve a near-optimal performance with smaller number of matrix computations.
Abstract
The main aim of massive multiuser multiple-input multiple-output (MU-MIMO) system is to improve the throughput and spectral efficiency in 5G wireless networks. The performance of MU-MIMO system is severely influenced by inter-antenna interference (IAI) and multiuser interference (MUI). The IAI occurs due to space limitations at each user terminal (UT) and the MUI is added when one UT is in the vicinity of another UT in the same cellular network. IAI can be mitigated through a precoding scheme such as singular value decomposition (SVD), and MUI is suppressed by an efficient multiuser detection (MUD) schemes. The maximum likelihood (ML) detector has optimal performance; however, it has a highly complex structure and involves the need of a large number of computations especially in massive structures. Thus, the neighborhood search-based algorithm such as likelihood ascent search (LAS) has been found to be a better alternative for mitigation of MUI as it results in near optimal performance with low complexity. Most of the recent papers are aimed at eliminating either MUI or IAI, whereas the proposed work presents joint SVD precoding and LAS MUD to mitigate both IAI and MUI. The proposed scheme can achieve a near-optimal performance with smaller number of matrix computations.

read more

Citations
More filters
Journal ArticleDOI

Design of Large Scale MU-MIMO System with Joint Precoding and Detection Schemes for Beyond 5G Wireless Networks

TL;DR: The lattice reduction (LR) precoding based user level local likelihood ascent search (ULAS) detection scheme is proposed in this paper for efficient signal detection in large scale MU-MIMO system.

Precoded Large Scale Multi‐User‐MIMO System Using Likelihood Ascent Search for Signal Detection

TL;DR: In this article , a joint pre-coding and MUD, Lenstra-Lovasz (LLL) based Lattice Reduction (LR) assisted likelihood accent search (LAS) was implemented to mitigate IAI and MUI simultaneously, and the LAS algorithm is a neighborhood search-based MUD that cancels BS MUI.
References
More filters
Book ChapterDOI

Large MIMO Systems

TL;DR: There is in-depth coverage of algorithms for large MIMO signal processing, based on meta-heuristics, belief propagation and Monte Carlo sampling techniques, and suited for large-scale signal detection, precoding and LDPC code designs.
Journal ArticleDOI

Massive MIMO: survey and future research topics

TL;DR: This paper presents an overview of the basic concepts of massive multiple-input multiple-output, with a focus on the challenges and opportunities, based on contemporary research.
Journal ArticleDOI

Multiple output selection-LAS algorithm in large MIMO systems

TL;DR: Computer simulations demonstrate that the proposed algorithm, Multiple Output Selection-LAS, which has the same complexity order as that of conventional LAS algorithms, is superior in bit error rate (BER) performance to LAS conventional algorithms.
Journal ArticleDOI

SVD-Assisted Multiuser Transmitter and Multiuser Detector Design for MIMO Systems

TL;DR: Based on the proposed scheme, the SVD-based transmission carried out in the context of a single user can readily be extended to the MU case for both the uplink (UL) and downlink (DL).
Journal ArticleDOI

Diversity of MIMO Linear Precoding

TL;DR: It is shown that regularized ZF (RZF) or matched filter (MF) suffers from error floors for all positive multiplexing gains, but in the fixed rate regime, RZF and MF precoding achieve full diversity for spectral efficiencies up to a certain threshold and zero diversity at rates above it.
Related Papers (5)