5G Traffic Prediction with Time Series Analysis
- URL: http://arxiv.org/abs/2110.03781v1
- Date: Thu, 7 Oct 2021 20:24:34 GMT
- Title: 5G Traffic Prediction with Time Series Analysis
- Authors: Nikhil Nayak, Rujula Singh R
- Abstract summary: We try to achieve three main objectives classification of the application generating the traffic.
The design of the prediction and classification system is done using Long Short Term Memory model.
- Score: 0.0
- License: http://creativecommons.org/licenses/by/4.0/
- Abstract: In todays day and age, a mobile phone has become a basic requirement needed
for anyone to thrive. With the cellular traffic demand increasing so
dramatically, it is now necessary to accurately predict the user traffic in
cellular networks, so as to improve the performance in terms of resource
allocation and utilisation. By leveraging the power of machine learning and
identifying its usefulness in the field of cellular networks we try to achieve
three main objectives classification of the application generating the traffic,
prediction of packet arrival intensity and burst occurrence. The design of the
prediction and classification system is done using Long Short Term Memory
model. The LSTM predictor developed in this experiment would return the number
of uplink packets and also estimate the probability of burst occurrence in the
specified future time interval. For the purpose of classification, the
regression layer in our LSTM prediction model is replaced by a softmax
classifier which is used to classify the application generating the cellular
traffic into one of the four applications including surfing, video calling,
voice calling, and video streaming.
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