DocumentCode
3735987
Title
LTE Connectivity and Vehicular Traffic Prediction Based on Machine Learning Approaches
Author
Christoph Ide;Fabian Hadiji;Lars Habel;Alejandro Molina;Thomas Zaksek;Michael Schreckenberg;Kristian Kersting;Christian Wietfeld
Author_Institution
Commun. Networks Inst., Tech. Univ. Dortmund Univ., Dortmund, Germany
fYear
2015
Firstpage
1
Lastpage
5
Abstract
The prediction of both, vehicular traffic and communication connectivity are important research topics. In this paper, we propose the usage of innovative machine learning approaches for these objectives. For this purpose, Poisson Dependency Networks (PDNs) are introduced to enhance the prediction quality of vehicular traffic flows. The machine learning model is fitted based on empirical vehicular traffic data. The results show that PDNs enable a significantly better short-term prediction in comparison to a prediction based on the physics of traffic. To combine vehicular traffic with cellular communication networks, a correlation between connectivity indicators and vehicular traffic flow is shown based on measurement results. This relationship is leveraged by means of Poisson regression trees in both directions, and hence, enabling the prediction of both types of network utilization.
Keywords
"Data models","Roads","Predictive models","Detectors","Communication systems","Correlation","Physics"
Publisher
ieee
Conference_Titel
Vehicular Technology Conference (VTC Fall), 2015 IEEE 82nd
Type
conf
DOI
10.1109/VTCFall.2015.7391019
Filename
7391019
Link To Document