Abstract

Traffic prediction is based on modeling the complex non-linear spatiotemporal traffic dynamics in road network. In recent years, Long Short-Term Memory has been applied to traffic prediction, achieving better performance. The existing Long Short-Term Memory methods for traffic prediction have two drawbacks: they do not use the departure time through the links for traffic prediction, and the way of modeling long-term dependence in time series is not direct in terms of traffic prediction. Attention mechanism is implemented by constructing a neural network according to its task and has recently demonstrated success in a wide range of tasks. In this paper, we propose an Long Short-Term Memory-based method with attention mechanism for travel time prediction. We present the proposed model in a tree structure. The proposed model substitutes a tree structure with attention mechanism for the unfold way of standard Long Short-Term Memory to construct the depth of Long Short-Term Memory and modeling long-term dependence. The attention mechanism is over the output layer of each Long Short-Term Memory unit. The departure time is used as the aspect of the attention mechanism and the attention mechanism integrates departure time into the proposed model. We use AdaGrad method for training the proposed model. Based on the datasets provided by Highways England, the experimental results show that the proposed model can achieve better accuracy than the Long Short-Term Memory and other baseline methods. The case study suggests that the departure time is effectively employed by using attention mechanism.

Highlights

  • Traffic efficiency is important to travellers and is a key indicator of the level of traffic services, especially with the sharp increase in vehicles and the congestion in transfer in road networks.Traffic prediction can help travellers reasonably arrange in road network and improve traffic efficiency.traffic prediction is still a hot research topic of intelligent transportation systems (ITS)

  • The departure time is used as the aspect of the attention mechanism and the attention mechanism integrates departure time into the proposed model

  • We propose an LSTM-based method with attention mechanism for travel time prediction

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Summary

Introduction

Traffic efficiency is important to travellers and is a key indicator of the level of traffic services, especially with the sharp increase in vehicles and the congestion in transfer in road networks. Long Short-Term Memory(LSM NN)-based methods have been successfully applied to traffic prediction and have achieved better performance in recent years [5,6] because they have a better ability to model the traffic dynamics in road network as they can model long-term dependence in time series and extract features from traffic data with recurrent feedback. We propose a LSTM NN with attention mechanism for travel time prediction (LSAM). Based on the datasets provided by Highways England, the experimental results show that the proposed model can achieve better accuracy than the LSTM NN and other baseline methods. We propose an LSTM-based method with attention mechanism for travel time prediction.

Data-Driven Models for Traffic Prediction
Attention Mechanism
LSTM NN for Travel Time Prediction
LSTM-Based Method with Attention Mechanism
Models Training
Experiment
Dataset
Task Definition
Parameters Setting for the Proposed Method
Parameters Setting for the Baseline Methods
Similarity between the Prediction Value and the Observation Value
Accuracy Comparison Based on a Short Length Link
Accuracy Comparison Based on a Medium Length Link
A Further Evaluation on Link AL1167
Result Analysis
4.10. Case Study
Conclusions
Full Text
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