Seguir
Hoang Duy Trinh
Hoang Duy Trinh
Exein
E-mail confirmado em exein.io - Página inicial
Título
Citado por
Citado por
Ano
Mobile traffic prediction from raw data using LSTM networks
HD Trinh, L Giupponi, P Dini
2018 IEEE 29th annual international symposium on personal, indoor and mobile …, 2018
1712018
Detecting Mobile Traffic Anomalies through Physical Control Channel Fingerprinting: a Deep Semi-supervised Approach
HD Trinh, E Zeydan, L Giupponi, P Dini
IEEE Access 7 (1), 152187-152201, 2019
602019
Analysis and modeling of mobile traffic using real traces
HD Trinh, N Bui, J Widmer, L Giupponi, P Dini
2017 IEEE 28th annual international symposium on personal, indoor, and …, 2017
472017
Urban Anomaly Detection by processing Mobile Traffic Traces with LSTM Neural Networks
HD Trinh, L Giupponi, P Dini
2019 IEEE International Conference on Sensing, Communication and Networking …, 2019
362019
Mobile Traffic Classification through Physical Control Channel Fingerprinting: a Deep Learning Approach
HD Trinh, AF Gambin, L Giupponi, M Rossi, P Dini
IEEE Transactions on Network and Service Management, 2020
262020
Wake-up scheduling for energy-efficient mobile devices
S Rostami, HD Trinh, S Lagen, M Costa, M Valkama, P Dini
IEEE Transactions on Wireless Communications 19 (9), 6020-6036, 2020
132020
Mobile Traffic Classification through Physical Control Channel Fingerprinting: a Deep Learning Approach
HD Trinh, AG Fernandez, L Giupponi, M Rossi, P Dini
arXiv, arXiv: 1910.11617, 2019
10*2019
Unveiling Radio Resource Utilization Dynamics of Mobile Traffic through Unsupervised Learning
A Rago, G Piro, HD Trinh, G Boggia, P Dini
TMA 2 (4), 2019
62019
Proactive wake-up scheduler based on recurrent neural networks
S Rostami, HD Trinh, S Lagen, M Costa, M Valkama, P Dini
ICC 2020-2020 IEEE International Conference on Communications (ICC), 1-6, 2020
52020
Data analytics for mobile traffic in 5G networks using machine learning techniques
HD Trinh
Universitat Politècnica de Catalunya, 2020
32020
Engin Zeydan, L. Giupponi, and Paolo Dini.«Detecting Mobile Traffic Anomalies through Physical Control Channel Fingerprinting: a Deep Semi-supervised Approach»
HD Trinh
IEEE Access, 1-1, 0
2
O sistema não pode executar a operação agora. Tente novamente mais tarde.
Artigos 1–11