Abstract

Short-term traffic speed prediction is a promising research topic in intelligent transportation systems (ITSs), which also plays an important role in the real-time decision-making of traffic control and guidance systems. However, the urban traffic speed has strong temporal, spatial correlation and the characteristic of complex nonlinearity and randomness, which makes it challenging to accurately and efficiently forecast short-term traffic speeds. We investigate the relevant literature and found that although most methods can achieve good prediction performance with the complete sample data, when there is a certain missing rate in the database, it is difficult to maintain accuracy with these methods. Recent studies have shown that deep learning methods, especially long short-term memory (LSTM) models, have good results in short-term traffic flow prediction. Furthermore, the attention mechanism can properly assign weights to distinguish the importance of traffic time sequences, thereby further improving the computational efficiency of the prediction model. Therefore, we propose a framework for short-term traffic speed prediction, including data preprocessing module and short-term traffic prediction module. In the data preprocessing module, the missing traffic data are repaired to provide a complete dataset for subsequent prediction. In the prediction module, a combined deep learning method that is an attention-based LSTM (ATT-LSTM) model for predicting short-term traffic speed on urban roads is proposed. The proposed framework was applied to the urban road network in Nanshan District, Shenzhen, Guangdong Province, China, with a 30-day traffic speed dataset (floating car data) used as the experimental sample. Results show that the proposed method outperforms other deep learning algorithms (such as recurrent neural network (RNN) and convolutional neural network (CNN)) in terms of both calculating efficiency and prediction accuracy. The attention mechanism can significantly reduce the error of the LSTM model (up to 12.4%) and improves the prediction performance.

Highlights

  • Future short-term traffic speed information is critical for alleviating traffic congestion, predicting traffic incidents, organizing traffic travel, and controlling traffic [1, 2]

  • (3) To solve the problem that it is difficult to accurately predict the short-term traffic speed on the complex urban road network, we propose a speed prediction method which is especially suitable for traffic data characteristics, namely, the ATT-long short-term memory (LSTM) model

  • From the distribution of attention weights, it can be seen that larger weights are distributed around this moment. e model has developed a strong focus on the key parts of the study; that is, it verifies the successful introduction and adaptation of the attention mechanism

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Summary

Introduction

Future short-term traffic speed information is critical for alleviating traffic congestion, predicting traffic incidents, organizing traffic travel, and controlling traffic [1, 2]. It can promote intelligent transportation systems (ITSs) to make smarter decisions, effectively reduce traffic risks, and make the transportation system more intelligent and efficient. Parameter-based methods mainly include the time series method and the Kalman filter (KF) method [3, 4]. Prediction methods based on time series mainly focus on the automatic regression moving average (ARIMA) model and the improved variations in this model. Nonparametric methods mainly include the K-nearest neighbor (KNN) method, support vector regression (SVR) method, artificial

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