NILGJun 11, 2020

Recurrent Neural Networks for Handover Management in Next-Generation Self-Organized Networks

arXiv:2006.06526v1
Originality Incremental advance
AI Analysis

This work addresses handover decisions for mobile users in multi-cell networks, offering incremental improvements over traditional methods.

The paper tackles handover management in next-generation self-organized networks by proposing recurrent neural network models to improve user experience, resulting in an 18% increase in users finalizing downloads and reduced download times compared to a standard benchmark.

In this paper, we discuss a handover management scheme for Next Generation Self-Organized Networks. We propose to extract experience from full protocol stack data, to make smart handover decisions in a multi-cell scenario, where users move and are challenged by deep zones of an outage. Traditional handover schemes have the drawback of taking into account only the signal strength from the serving, and the target cell, before the handover. However, we believe that the expected Quality of Experience (QoE) resulting from the decision of target cell to handover to, should be the driving principle of the handover decision. In particular, we propose two models based on multi-layer many-to-one LSTM architecture, and a multi-layer LSTM AutoEncoder (AE) in conjunction with a MultiLayer Perceptron (MLP) neural network. We show that using experience extracted from data, we can improve the number of users finalizing the download by 18%, and we can reduce the time to download, with respect to a standard event-based handover benchmark scheme. Moreover, for the sake of generalization, we test the LSTM Autoencoder in a different scenario, where it maintains its performance improvements with a slight degradation, compared to the original scenario.

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