Abstract

Modern urban-transport planning requires evidence-based insights into current transport flows to better understand the needs and impacts of policymaking. Urban transport includes passenger and freight vehicles, which have different behavior, and the need for such a separation is often ignored in research and practice [1]. New digital data sources provide an opportunity to better understand urban transport and identify where policy interventions are required. We review the literature on digital counting techniques to monitor transport flows, including loops, Automatic-Number Plate Recognition (ANPR) cameras and floating car data. We further investigate the potential of ANPR cameras, which are widely deployed, and which can be augmented with vehicle category information. This article presents the methodology that we follow for transforming raw augmented ANPR camera data into practical knowledge for city planners. Our is aim is to provide a better understanding of passenger and freight vehicle movements and stops, identifying similarities and differences between vehicle categories. We demonstrate our methodology on a case study for the Mechelen-Willebroek district in Belgium, encompassing augmented data from 122 ANPR cameras for a period of two weeks. Additionally, we also look at the car-reduced zone and how time restrictions affect the different vehicle categories’ actions. The findings are validated with GPS data from heavy-good vehicles in the same period. The potential of augmented ANPR camera data and promising themes and applications of this data source are illustrated through the case study.

Highlights

  • Information and communication technologies (ICTs) have been transforming traditional methods of urban management and infrastructure planning for the past two decades [2]

  • We provide a comprehensive view on potentials of Automatic-Number Plate Recognition (ANPR) camera data in providing insights on movements of vehicles in a region, while most research concentrate on one aspect of transport

  • The objective of the present paper is to demonstrate how ANPR camera data can contribute to a better contextual understanding of urban transport, by investigating movement of passenger vehicles and freight vehicles

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Summary

Introduction

Information and communication technologies (ICTs) have been transforming traditional methods of urban management and infrastructure planning for the past two decades [2]. In order to manage daily operations, urbanpolicy makers are increasingly using real-time analytics [2], for example, analyzing movement of vehicles in cities in order to monitor traffic and adjust traffic lights and speed limits [3]. Hadavi et al European Transport Research Review (2020) 12:37 data source to compare different vehicle categories movement. We provide a comprehensive view on potentials of ANPR camera data in providing insights on movements of vehicles in a region, while most research concentrate on one aspect of transport. We provide visualizations on locations where vehicles have visited more frequently, and their frequent trajectories. We focus on detecting stops (often called staypoint [8]) using ANPR cameras data, and we identify the location of the stops as well

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