Abstract

Travel time is one of the most critical parameters in proactive traffic management and the deployment of advanced traveler information systems. This paper proposes a hybrid model named LSTM-CNN for predicting the travel time of highways by integrating the long short-term memory (LSTM) and the convolutional neural networks (CNNs) with the attention mechanism and the residual network. The highway is divided into multiple segments by considering the traffic diversion and the relative location of automatic number plate recognition (ANPR). There are four steps in this hybrid approach. First, the average travel time of each segment in each interval is calculated from ANPR and fed into LSTM in the form of a multidimensional array. Second, the attention mechanism is adopted to combine the hidden layer of LSTM with dynamic temporal weights. Third, the residual network is introduced to increase the network depth and overcome the vanishing gradient problem, which consists of three pairs of one-dimensional convolutional layers (Conv1D) and batch normalization (BatchNorm) with the rectified linear unit (ReLU) as the activation function. Finally, a series of Conv1D layers is connected to extract features further and reduce dimensionality. The proposed LSTM-CNN approach is tested on the three-month ANPR data of a real-world 39.25 km highway with four pairs of ANPR detectors of the uplink and downlink, Zhejiang, China. The experimental results indicate that LSTM-CNN learns spatial, temporal, and depth information better than the state-of-the-art traffic forecasting models, so LSTM-CNN can predict more accurate travel time. Moreover, LSTM-CNN outperforms the state-of-the-art methods in nonrecurrent prediction, multistep-ahead prediction, and long-term prediction. LSTM-CNN is a promising model with scalability and portability for highway traffic prediction and can be further extended to improve the performance of the advanced traffic management system (ATMS) and advanced traffic information system (ATIS).

Highlights

  • With the increase of the cooperative vehicle infrastructure system (CVIS), the informationization of highways tends to be significant for the construction of smart highways

  • By combining these technologies and mechanisms, this study will explore the potential of travel time features of automatic number plate recognition (ANPR) data with consideration of traffic diversion and other relevant information, which contributes to the management of the smart city

  • The residual network layers (ResNet) are proposed to dig out deep features of spatiotemporal highway segments, which consist of three pairs of 1D convolutional layers and the BatchNorm, followed by a rectified linear unit (ReLU) activation layer

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Summary

Introduction

With the increase of the cooperative vehicle infrastructure system (CVIS), the informationization of highways tends to be significant for the construction of smart highways. In the trend of traffic prediction methods, more and more people have adopted CNNs and LSTM modules They often neglect the characteristics of different segments and the effective use of models. Attention mechanism [7, 8] is applied to assign different levels of attention features based on prediction target to discover potential dependencies of highway data. By combining these technologies and mechanisms, this study will explore the potential of travel time features of automatic number plate recognition (ANPR) data with consideration of traffic diversion and other relevant information, which contributes to the management of the smart city.

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