Abstract
Predicting the current backlog, or traffic load, in framed-ALOHA networks enables the optimization of resource allocation, e.g., of the frame size. However, this prediction is made difficult by the lack of information about the cardinality of collisions and by possibly complex packet generation statistics. Assuming no prior information about the traffic model, apart from a bound on its temporal memory, this letter develops an online learning-based adaptive traffic load prediction method that is based on recurrent neural networks (RNN) and specifically on the long short-Term memory (LSTM) architecture. In order to enable online training in the absence of feedback on the exact cardinality of collisions, the proposed strategy leverages a novel approximate labeling technique that is inspired by the method of moments (MOM) estimators. Numerical results show that the proposed online predictor considerably outperforms conventional methods and is able to adapt changing traffic statistics.
Original language | English |
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Article number | 8779707 |
Pages (from-to) | 1778-1782 |
Number of pages | 5 |
Journal | IEEE COMMUNICATIONS LETTERS |
Volume | 23 |
Issue number | 10 |
Early online date | 29 Jul 2019 |
DOIs | |
Publication status | Published - Oct 2019 |
Keywords
- Method of moments
- Supervised learning
- Recurrent neural networks
- Maximum likelihood estimation
- Prediction methods
- Memory architecture
- Training
- Traffic load prediction
- framed-ALOHA
- online supervised learning
- recurrent neural network