Vehicular Traffic analysis and prediction
About the Paper
Vehicular Traffic analysis and prediction using Machine learning algorithms
With day to day commuting becoming difficult. Lot of time and energy is lost in traversing through vehicular traffic. In this paper we propose a solution to predict vehicular traffic using machine learning techniques. US traffic 2015 dataset contains daily volumes of traffic, since this is an actual data and not a simulated one, patterns found in this research can be benefited and made valuable with differing datasets over time. Data driven solutions are proven to breakthrough tough problem statements. Thus in this paper we propose stage by stage machine learning processes to build an efficient model capable of predicting traffic volume based on features which brings out hidden insights in vehicular movements. Inspired by existing research exploration over traffic, in this paper we share our contribution of making traffic predictable thus saving time and energy in day to day life.
Full paper : Vehicular Traffic Analysis and Prediction PDF
Presented at
International Conference on Emerging Trends in Information Technology and Engineering(ic-ETITE-2020), is Technically Co-sponsored by IEEE Madras Section Computer Society Chapter & IEEE Madras Section Communications Society Chapter and supported by ACM-Chennai Professional Chapter.
Held at Vellore Institute of Technology, Vellore during 24-25 February 2020.