Abstract

To provide reliable traffic information and more convenient visual feedback to traffic managers and travelers, we proposed a prediction model that combines a neural network and a Macroscopic Fundamental Diagram (MFD) for predicting the traffic state of regional road networks over long periods. The method is broadly divided into the following steps. To obtain the current traffic state of the road network, the traffic state efficiency index formula proposed in this paper is used to derive it, and the MFD of the current state is drawn by using the classification of the design speed and free flow speed of the classified road. Then, based on the collected data from the monitoring stations and the weighting formula of the grade roads, the problem of insufficient measured data is solved. Meanwhile, the prediction performance of NARX, LSTM, and GRU is experimentally compared with traffic prediction, and it is found that NARX NN can predict long-term flow and the prediction performance is slightly better than both LSTM and GRU models. Afterward, the predicted data from the four stations were integrated based on the classified road weighting formula. Finally, according to the traffic state classification interval, the traffic state of the road network for the next day is obtained from the current MFD, the predicted traffic flow, and the corresponding speed. The results indicate that the combination of the NARX NN with the MFD is an effective attempt to predict and describe the long-term traffic state at the macroscopic level.

Highlights

  • Transportation is a key link to social development

  • As there are a large number of primary roads in the network and the monitoring stations are mainly located at the intersection of the two grades of roads, the classification intervals will be based on the primary roads

  • We developed a state prediction model for regional road networks (NARX-Macroscopic Fundamental Diagram (MFD)) and proposed a traffic state efficiency index formula. e traffic state of the regional road network is classified into four categories by using and analyzing the free flow speed and the design speed of the classified road in the traffic flow parameter curves. is will be used as the evaluation classification of the predicted state

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Summary

Introduction

Transportation is a key link to social development. According to the latest statistics from the Traffic Management Bureau of the Ministry of Public Security, the number of motor vehicles in China reached 384 million until June 2021, and this figure is still growing. It is difficult to meet the increasing demand for comfort in traveling, and the negative effects of congestion on various routes within the road network in urban areas are even more serious. In this context, accurate and reliable traffic information is very important for intelligent transportation systems (ITS), advanced traffic management systems (ATMS), and advanced traveler information systems (ATIS) [1]. Others have proposed short-term prediction of various traffic state parameters and have designed various prediction models [7, 8].

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