【通院大讲堂】英国拉夫堡大学郑淦教授专题报告

发布时间:2024-04-08浏览次数:12

报告题目:A Deep Learning Approach to Robust Downlink Beamforming Optimization

报告人:郑淦 教授

时 间:2024年4月10日上午10:00-12:00

地 点:科研楼208会议室



报告摘要:

 Probabilistic robust downlink beamforming is importantto ensure mobile users’ quality of service when the transmitter (a base stationof access point) only has estimated channel state information and estimationerror statistics. This problem is challenging and until now only conservativesolutions exist. In this talk I will introduce a deep learning approach to dealwith the robust beamforming design by using model-based learning, dataaugmentation and graph neural networks. Simulation results show that ourproposed approach outperforms state of the art in both performance andcomplexity.


报告人简介:

 Professor Gan Zheng is a Fellow of IEEE and IET.His research interests focus on 6G and beyond wireless networks, with currentemphasis on machine learning and quantum computing for wireless communications,reconfigurable intelligent surfaces, and integrated satellite and terrestrialcommunications. He has published over 200 papers in international journals andconferences, which have received more than 12,000 citations. He received sixinternational best paper awards. He currently serves as an Associate Editor forIEEE Wireless Communications Letters and IEEE Transactions on Communications.