CNS Core: Medium: When Next Generation Wireless Networks Meet Machine Learning (CNS-1956276)

Overview

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This project aims to build a new paradigm of learning-based channel estimation and tracking, network resource allocation, and optimization schemes for millimeter wave (mmWave) networks operating in a highly dynamic and even non-stationary environment. The project consists of the following synergistic thrusts for the successful design and implementation of mmWave communication networks, followed by a comprehensive system-level validation. (1) Exploiting non-convex optimization to quickly sense the wireless channels and learn optimal beams. (2) Design online learning based access point (AP) scanning and association schemes for seamless mmWave connectivity. (3) Developing collaborative and distributed resource allocation algorithms, enabling dynamic data sharing with time-varying network topologies encountered in disruptive applications such as autonomous driving and industrial robotics/IoT. Finally, all of the proposed algorithms will be evaluated with exhaustive experiments across various environmental settings and topological conditions.

Participants

  • PI: Jing Yang

  • Co-PI: Mahanth Gowda, Mehrdad Mahdavi

  • Graduate Research Assistants: Suryoday Basak, Yuyang Deng, Ruiquan Huang, Donghao Li, Renpu Liu, Pouria Mahdavinia, Yilin Liu, Shijia Zhang

Selected Publications

Broader Impacts

PI Yang co-organized an EECS girls camp themed ‘‘design your own reality’’ in summer 2022. The summer camp is one-week long, and attracted about 20 middle school students, where the majority of the participants were female or from other under-represented groups. The summer camp greatly increased the interests of the participants in CS and EE.

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Acknowledgement

This project is supported in part by the U.S. NSF under grant CNS-1956276. Any opinions, findings, and conclusions or recommendations expressed in this material are those of the author(s) and do not necessarily reflect the views of the NSF.