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A Big Data Demand Estimation Model for Urban Congested Networks Cover

A Big Data Demand Estimation Model for Urban Congested Networks

Open Access
|Nov 2020

Abstract

The origin-destination (OD) demand estimation problem is a classical problem in transport planning and management. Traditionally, this problem has been solved using traffic counts, speeds or travel times extracted from location-based sensor data. With the advent of new sensing technologies located on vehicles (GPS) and nomadic devices (mobile and smartphones), new opportunities have emerged to improve the estimation accuracy and reliability, and more importantly to better capture the dynamics of the daily mobility patterns. In this paper we frame this new data in a comprehensive framework which estimates origin-destination flows in two steps: the first step estimates the total generated demand for each traffic zone, while the second step adjusts the spatial and temporal distribution on the different OD pairs. We show how mobile data can be used to obtain OD matrices that reflect the aggregated movements of individuals in complex and large-scale instances, while speed information from floating car data can be used in the second step. We showcase the added value of big data on a realistic network comprising Luxembourg’s capital city and its surrounding. We simulate traffic by means of a commercial simulation software, PTV-Visum, and leverage real mobile phone data from the largest telco operator in the country and real speed data from a floating car data service provider. Results show how OD estimation improves both in solution reliability and in convergence speed.

DOI: https://doi.org/10.2478/ttj-2020-0019 | Journal eISSN: 1407-6179 | Journal ISSN: 1407-6160
Language: English
Page range: 245 - 254
Published on: Nov 26, 2020
In partnership with: Paradigm Publishing Services
Publication frequency: 4 issues per year

© 2020 Guido Cantelmo, Francesco Viti, published by Transport and Telecommunication Institute
This work is licensed under the Creative Commons Attribution-NonCommercial-NoDerivatives 3.0 License.