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TRAFFIC DEMAND ESTIMATION BASED ON OFFLINE TRAINED ARTIFICIAL NEURAL NETWORK

Abstract

The current paper focuses on traffic demand estimation problem. Artificial Neural Network (ANN) proposed as a prediction model. The given problem formulated as a supervised learning classification task. The dataset for model training and validation consists of synthetic data that was generated by using simulator. The results of experiments show training accuracy = 82.2 %. The evaluation of the test set gives 80.03 % accuracy. Finally, well-trained estimator of traffic flow is obtained.

About the Authors

G. Tolebi
Kazakh-British technical university
Kazakhstan


D. Kurmankhojayev
Kazakh-British technical university
Kazakhstan


References

1. Du S., Li R., Gong X., Hong S., A Hybrid Method for Traffic Flow Forecasting Using Multimodal Deep learning. Machine Learning. Cornelle University, 2019. https://arxiv.org/pdf/1803.02099.pdf

2. Bernico M., Deep Learning Quick Reference. Packt Publishing, 2018.

3. SUMO - Simulation of Urban Mobility. Institute of Transportation Systems. Available at: http://sumo.dlr.de/wiki/SUMO

4. Kurmankhojayev D., Tolebi G., Analysis of the traffic flow modeling systems. Herald of the Kazakh-British technical university, № 4 (47), 2018. pp. 31-36.

5. Kurmankhojayev D., Suleymenov N., Tolebi G., Online model-free adaptive traffic signal controller for an isolated intersection. 2017 International M ulti-Conference on Engineering, Computer and Information Sciences (SIBIRCON), 2017. pp. 109-112


Review

For citations:


Tolebi G., Kurmankhojayev D. TRAFFIC DEMAND ESTIMATION BASED ON OFFLINE TRAINED ARTIFICIAL NEURAL NETWORK. Herald of the Kazakh-British Technical University. 2019;16(2):170-174.

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ISSN 1998-6688 (Print)
ISSN 2959-8109 (Online)