For English reader,please refer to English Version.
随着深度学习的发展,使用深度学习解决相关通信领域问题的研究也越来越多。作为一名通信专业的研究生,如果实验室没有相关方向的代码积累,入门并深入一个新的方向会十分艰难。同时,大部分通信领域的论文不会提供开源代码,reproducible research比较困难。
基于深度学习的通信论文这几年飞速增加,明显能感觉这些论文的作者更具开源精神。本项目专注于整理在通信中应用深度学习,并公开了相关源代码的论文。
个人关注的领域和精力有限,这个列表不会那么完整。如果你知道一些相关的开源论文,但不在此列表中,非常欢迎添加在issue当中,为community贡献一份力量。欢迎交流^_^
温馨提示:watch相较于star更容易得到更新通知 。
TODO
- 按不同小方向分类
- 论文添加下载链接
- 增加更多相关论文代码
- 在daily_arxiv这个repo下会以daily为尺度更新
eess.SP
和cs.IT
分类下开源的代码论文 - 该Repo通过爬虫+Github Action实现每日自动更新
- 在daily_arxiv这个repo下会以daily为尺度更新
- 传统通信论文代码列表
- “通信+DL”论文列表(引用较高,可以没有代码)
- Topics
- Machine/deep learning for physical layer optimization
- Resource, power and network optimization using machine learning techniques
- Distributed learning algorithms over communication networks
- Multiple access scheduling and routing using machine learning techniques
- Machine learning for network slicing, network virtualization, and software-defined networking
- Machine learning for emerging communication systems and applications (e.g., IoT, edge computing, caching, smart cities, vehicular networks, and localization)
- Secure machine learning over communication networks
说明:论文主要来源于arxiv中Signal Processing和Information Theory
- Robust Data Detection for MIMO Systems with One-Bit ADCs: A Reinforcement Learning Approach
- Distributed Power Control for Large Energy Harvesting Networks: A Multi-Agent Deep Reinforcement Learning Approach
- Machine Learning for Wireless Communication Channel Modeling: An Overview
- Sum Spectral Efficiency Maximization in Massive MIMO Systems: Benefits from Deep Learning
- thymio-radio-map: OpenCSI: An Open-Source Dataset for Indoor Localization Using CSI-Based Fingerprinting
- The DeepMIMO Dataset and the corresponding paper DeepMIMO: A Generic Deep Learning Dataset for Millimeter Wave and Massive MIMO Applications
- RAYMOBTIME:Raymobtime is a methodology for collecting realistic datasets for simulating wireless communications. It uses ray-tracing and 3D scenarios with mobility and time evolution, for obtaining consistency over time, frequency and space.
- MASSIVE MIMO CSI MEASUREMENTS
- SM-CsiNet+ and PM-CsiNet+:来自论文Convolutional Neural Network based Multiple-Rate Compressive Sensing for Massive MIMO CSI Feedback: Design, Simulation, and Analysis
- An open online real modulated dataset:来自论文Deep Learning for Signal Demodulation in Physical Layer Wireless Communications: Prototype Platform, Open Dataset, and Analytics。
To the best of our knowledge,this is the first open dataset of real modulated signals for wireless communication systems.
- RF DATASETS FOR MACHINE LEARNING
- open datase:来自论文Signal Demodulation With Machine Learning Methods for Physical Layer Visible Light Communications: Prototype Platform, Open Dataset, and Algorithms
The dataset is collected in real physical environment, and the channel suffers from many factors such as limited LED bandwidth, multi-reflection,spurious or continuous jamming, etc.
- Dr. Zhen Gao ( 高 镇 ):
- Wireless Communications
- Channel Estimation of mmWave/THz Hybrid Massive MIMO
- Sparse Signal Processing
- Deep Learning based Solutions in Wireless Systems
- Ahmed Alkhateeb:Research Interests
- Millimeter Wave and Massive MIMO Communication
- Vehicular and Drone Communication Systems
- Applications of Machine Learning in Wireless Communication
- Building Mobile Communication Systems that Work in Reality!
- Emil Björnson: He performs research on multi-antenna communications, Massive MIMO, radio resource allocation, energy-efficient communications, and network design.
- Leo-Chu:His research interests are in the theoretical and algorithmic studies in random matrix theory, nonconvex optimization, deep learning, as well as their applications in wireless communications, bioengineering, and smart grid.
- Graph-based Deep Learning for Communication Networks: A Survey: GNN-Communication-Networks
- 机器学习和通信结合论文列表/Research Library
- Best Readings in Machine Learning in Communications
- Communication Systems, Linköping University, LIU
- Codes for Intelligent reflecting surface (IRS)
- awesome-ml4co:a list of papers that utilize machine learning technologies to solve combinatorial optimization problems.
- Simulation Code from comsoc
贡献者/Contributors:
- WxZhu:
- Github
- Email:wenxingzhu@shu.edu.cn
- LinTian
- HongtaiChen
- yihanjiang
- wu huaming:
- Email:whming@tju.edu.cn
版本更新/Version Update:
- 第一版完成/First Version:2019-02-21
- 分类整理及链接补全/First Version: 2021-04-14 via Yokoxue