RUS  ENG
Full version
JOURNALS // Computer Research and Modeling // Archive

Computer Research and Modeling, 2021 Volume 13, Issue 2, Pages 395–404 (Mi crm890)

This article is cited in 1 paper

SPECIAL ISSUE
MODELING OF TRAFFIC IN INTELLIGENT TRANSPORTATION SYSTEMS

Modeling of the effective environment in the Republic of Tatarstan using transport data

R. N. Minnikhanovab, I. V. Anikinb, M. V. Dagaevaab, E. M. Faizrakhmanova, T. E. Bolshakova

a “Road Safety” State Company, 5 Orenburgskij trakt, Kazan, 420059, Russia
b Kazan National Research Technical University named after A. N. Tupolev

Abstract: Automated urban traffic monitoring systems are widely used to solve various tasks in intelligent transport systems of different regions. They include video enforcement, video surveillance, traffic management system, etc. Effective traffic management and rapid response to traffic incidents require continuous monitoring and analysis of information from these complexes, as well as time series forecasting for further anomaly detection in traffic flow. To increase the forecasting quality, data fusion from different sources is needed. It will reduce the forecasting error, related to possible incorrect values and data gaps. We implemented the approach for short-term and middle-term forecasting of traffic flow (5, 10, 15 min) based on data fusion from video enforcement and video surveillance systems. We made forecasting using different recurrent neural network architectures: LSTM, GRU, and bidirectional LSTM with one and two layers. We investigated the forecasting quality of bidirectional LSTM with 64 and 128 neurons in hidden layers. The input window size (1, 4, 12, 24, 48) was investigated. The RMSE value was used as a forecasting error. We got minimum RMSE = 0.032405 for basic LSTM with 64 neurons in the hidden layer and window size = 24.

Keywords: transport modeling, video enforcement, traffic flow forecasting.

UDC: 004.6

Received: 14.09.2020
Revised: 17.12.2020
Accepted: 20.12.2020

Language: English

DOI: 10.20537/2076-7633-2021-13-2-395-404



© Steklov Math. Inst. of RAS, 2024