Abstract

In order to improve the efficiency of transportation networks, it is critical to forecast traffic congestion. Large-scale traffic congestion data have become available and accessible, yet they need to be properly represented in order to avoid overfitting, reduce the requirements of computational resources, and be utilized effectively by various methodologies and models. Inspired by pooling operations in deep learning, we propose a representation framework for traffic congestion data in urban road traffic networks. This framework consists of grid-based partition of urban road traffic networks and a pooling operation to reduce multiple values into an aggregated one. We also propose using a pooling operation to calculate the maximum value in each grid (MAV). Raw snapshots of traffic congestion maps are transformed and represented as a series of matrices which are used as inputs to a spatiotemporal congestion prediction network (STCN) to evaluate the effectiveness of representation when predicting traffic congestion. STCN combines convolutional neural networks (CNNs) and long short-term memory neural network (LSTMs) for their spatiotemporal capability. CNNs can extract spatial features and dependencies of traffic congestion between roads, and LSTMs can learn their temporal evolution patterns and correlations. An empirical experiment on an urban road traffic network shows that when incorporated into our proposed representation framework, MAV outperforms other pooling operations in the effectiveness of the representation of traffic congestion data for traffic congestion prediction, and that the framework is cost-efficient in terms of computational resources.

Highlights

  • Cars have become the preferred means of transportation for more and more people due to the rapid development of urbanization and improvement of people’s living standards

  • We propose a pooling function which retrieves the maximum of all values (MAV) in a grid of Pt, which is rarely used when representing traffic congestion data

  • It can be inferred that when used as a pooling operation, maximum value in each grid (MAV) together with our proposed framework can properly and effectively represent traffic congestion data for short-term traffic congestion prediction

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Summary

Introduction

Cars have become the preferred means of transportation for more and more people due to the rapid development of urbanization and improvement of people’s living standards. The huge number of cars has become very challenging in terms of the efficient operation of urban road traffic networks and causes traffic congestion. Road traffic congestion in many cities around the world is very serious, especially in metropolitan cities [1]. There have been a lot of research on the prediction of urban road traffic congestion and traffic management [2,3,4,5]. Understanding the congestion patterns of an entire road network rather than a single road or several roads in an area is important.

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