Technical Name |
Machine Learning-Driven Optimal Proactive Edge Caching in Wireless Small Cell Networks |
Project Operator |
National Chiao Tung University |
Project Host |
高榮鴻 |
Summary |
We propose a novel approach for proactive edge caching in wireless small cell networks. Specifically, we propose using a recurrent neural network for predicting the content popularity with low computational complexity. Based on the predicted content popularity, we formulate and solve a minimum cost flow problem in order to optimally place content files at edge caches. |
Scientific Breakthrough |
Since the computational complexity of the adopted recurrent neural network is relatively low and the minimum cost flow problem can be solved in polynomial time, the proposed approach is feasible in practice. Simulation results show that the proposed approach outperforms a greedy approach and can significantly reduce the bandwidth consumption of the backhaul network. |
Industrial Applicability |
We propose a novel approach for proactive edge caching in 5G/6G wireless networks. The proposed approach could accurately predict the content popularity and significantly reduce the bandwidth consumption of the backhaul network. |
Keyword |
AI/machine learning machine learning 5G wireless networks 6G wireless networks proactive edge caching artificial neural networks content file popularity prediction network optimization small cell wireless networks algorithms |