Ecole d'ingénieur et centre de recherche en Sciences du numérique

Channel stability prediction to optimize signaling overhead in 5G networks using machine learning

Bakri, Sihem; Bouaziz, Maha; Frangoudisz, Pantelis A; Ksentini, Adlen

ICC 2020, IEEE International Conference on Communications, 7-11 June 2020, Dublin, Ireland

Channel quality feedback is crucial for the operation of 4G and 5G radio networks, as it allows to control User Equipment (UE) connectivity, transmission scheduling, and the modulation and rate of the data transmitted over the wireless link. However, when such feedback is frequent and the number of UEs in a cell is large, the channel may be overloaded by signaling messages, resulting in lower throughput and data loss. Optimizing this signaling process thus represents a key challenge. In this paper, we focus on Channel Quality Indicator (CQI) reports that are periodically sent from a UE to the base station, and propose mechanisms to optimize the reporting process with the aim of reducing signaling overhead and avoiding the associated channel overloads, particularly when channel conditions are stable. To this end, we apply machine learning mechanisms to predict channel stability, which can be used to decide if the CQI of a UE is necessary to be reported, and in turn to control the reporting frequency. We study two machine learning models for this purpose, namely Support Vector Machines (SVM) and Neural Networks (NN). Simulation results show that both provide a high prediction accuracy, with NN consistently outperforming SVM in our settings, especially as CQI reporting frequency reduces.

Document Bibtex

Titre:Channel stability prediction to optimize signaling overhead in 5G networks using machine learning
Mots Clés:5G, signaling overhead, CQI optimization, machine learning, SVM, NN
Département:Systèmes de Communication
Eurecom ref:6184
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Bibtex: @inproceedings{EURECOM+6184, year = {2020}, title = {{C}hannel stability prediction to optimize signaling overhead in 5{G} networks using machine learning}, author = {{B}akri, {S}ihem and {B}ouaziz, {M}aha and {F}rangoudisz, {P}antelis {A} and {K}sentini, {A}dlen}, booktitle = {{ICC} 2020, {IEEE} {I}nternational {C}onference on {C}ommunications, 7-11 {J}une 2020, {D}ublin, {I}reland}, address = {{D}ublin, {IRLANDE}}, month = {06}, url = {} }
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