- Simulation code for Paper:
Lyutianyang Zhang1 , Hao Yin1, Zhanke Zhou, Sumit Roy, Yaping Sun, Enhancing WiFi Multiple Access Performance with Federated Deep Reinforcement Learning, VTC2020-Fall.
1 Both authors contribute equally to this work. - Cite our work:
@INPROCEEDINGS{FrmaVTC2020,
author={L. {Zhang} and H. {Yin} and Z. {Zhou} and S. {Roy} and Y. {Sun}},
booktitle={IEEE 92nd Vehicular Technology Conference (VTC2020-Fall)},
title={Enhancing {WiFi} Multiple Access Performance with Federated Deep Reinforcement Learning}
}
Contributors: Hao Yin, Zhanke Zhou
The paper can be found https://ieeexplore.ieee.org/document/9348485
-
Please check
config.py
for model loading and saving setups.-
self.saveModel = False self.loadModel = True
-
-
Run
python3 test_CSMA_DQN_withModelAllocation.py
to proceed training. -
Throughput
is about5.2
-5.4
Number of Station | Max Avg Throughput | Total training epoch |
---|---|---|
5 | 5.45 | 10w |
10 | 5.46 | 13w |
20 | 5.28 | 22w |