• Stars
    star
    144
  • Rank 255,590 (Top 6 %)
  • Language
    MATLAB
  • Created over 5 years ago
  • Updated almost 5 years ago

Reviews

There are no reviews yet. Be the first to send feedback to the community and the maintainers!

Repository Details

The Matlab Simulation codes for Hybrid Beamforming for Millimeter Wave Systems Using the MMSE Criterion.

Hybrid-Beamforming-for-Millimeter-Wave-Systems-Using-the-MMSE-Criterion

Introduction

The Matlab Simulation codes for Hybrid Beamforming for Millimeter Wave Systems Using the MMSE Criterion. This paper on published in IEEE transactions on communications in Jan 2019. If these codes is help for your work, you can choose to cite the paper, not necessary.

The pdf of this paper can be found in

IEEE link: https://ieeexplore.ieee.org/document/8616797

Arxiv link: https://arxiv.org/abs/1902.08343?context=cs.IT.

Also, I recommend my rencent work that using deep learning to solve the HBF design problem. This work can be referred to

IEEE link: https://ieeexplore.ieee.org/document/8847377/

Arxiv link: https://arxiv.org/abs/1904.03657

and all codes are openned at this repo.

I only update the codes for narrowband cases, but the extension to broadband is straightforward. which can be referred to my another repository named "August_mmwave", gateway. however, the later is written in a bad form so not easy to read. I don't have enough time now, so maybe it will be updated in the future.

How to use

This code is really is to use. First, you should totally add all packages to the path, so you can use these functions. Then, just run the main_vs_SNR.m file directly.

Content

This codes including several algorithms mentioned in my paper, all can easily cited by these convenient APIs.

End

I won't update it recently because of limitation of time. However, if you have any problems, you can directly contact me by e-mail: [email protected], I'm glad to help you.

Besides, the broadband codes can be referred to here.

More Repositories

1

BF-design-with-DL

Beamforming design with deep learning.
MATLAB
251
star
2

DNN_detection_via_keras

This is the simplest implementation of Power of Deep Learning for Channel Estimation and Signal Detection in OFDM Systems using keras.
Python
159
star
3

Communication_eBooks

上传一些关于通信的好书,以便不时之需。
84
star
4

Easiest-SRGAN-demo

最简单的基于SRGAN网络的实现, 附带已训练好的模型及GIF生成代码, 更适合作为Demo展示
Python
80
star
5

Awesome-Deep-Learning-For-Wireless-Communication

2018-2019年最新深度学习用于无线通信(物理层)的论文整理,附论文核心思想总结与代码分析。(中文)/ A collection of latest papers for wireless communication based on Deep Learning (intelligent communication), with some own understanding and codes analysis.
63
star
6

Easiest-realization-CRNN-for-Chinese

不能更简单的基于keras的CRNN汉字识别代码. 即Fast R-CNN 网络的keras实现。
Python
38
star
7

reproduction_of_BALS

MATLAB
37
star
8

Channe-Estimation-for-IRS-Assisted-Millimeter-Wave-MIMO-Systems-Sparsity-Inspired-Approaches

Simulation codes for Channe-Estimation-for-IRS-Assisted Millimeter-Wave-MIMO-Systems-Sparsity-Inspired-Approaches
MATLAB
26
star
9

ChannelEstimation_for_Zhongxing

2019中兴捧月算法大赛信道估计的一种思路
MATLAB
19
star
10

papers_of_Intelligent_Reflecting_Surface

16
star
11

learning-stock-by-python

股市亏空太多。。决定使用python,花里胡哨分析一通,看似炒股,实则学习嘿嘿。
Python
16
star
12

August_mmwave

new simulation codes
MATLAB
15
star
13

simplified_manifold_optimization

Manifold-based-algorithm to solve problems with constant modulus constraints.
MATLAB
13
star
14

mmWave_channelEst_CRLB

MATLAB
7
star
15

Zoreto_TWC

format IEEE citation
Python
4
star
16

papers_of_channel_estimation_for-hybrid-beamforming

2
star
17

HBFNet

Python
2
star
18

CSDN-increase-page-views

CSDN高效安全刷访问量,基于selenium的爬虫实现, 提升文章的SEO。仅供原始浏览量积累,不要刷的太过分。
Python
1
star