IRMA-International.org: Creator of Knowledge
Information Resources Management Association
Advancing the Concepts & Practices of Information Resources Management in Modern Organizations

Dynamic Travel Time Estimation Techniques for Urban Freight Transportation Networks Using Historical and Real-Time Data

Dynamic Travel Time Estimation Techniques for Urban Freight Transportation Networks Using Historical and Real-Time Data
View Sample PDF
Author(s): Vasileios Zeimpekis (University of the Aegean, Greece)
Copyright: 2011
Pages: 22
Source title: Supply Chain Optimization, Design, and Management: Advances and Intelligent Methods
Source Author(s)/Editor(s): Ioannis Minis (University of the Aegean, Greece), Vasileios Zeimpekis (University of the Aegean, Greece), Georgios Dounias (University of the Aegean, Greece)and Nicholas Ampazis (University of the Aegean, Greece)
DOI: 10.4018/978-1-61520-633-9.ch012

Purchase


Abstract

Effective travel time prediction is of great importance for efficient real-time management of freight deliveries, especially in urban networks. This is due to the need for dynamic handling of unexpected events, which is an important factor for successful completion of a delivery schedule in a predefined time period. This chapter discusses the prediction results generated by two travel time estimation methods that use historical and real-time data respectively. The first method follows the k-nn model, which relies on the non-parametric regression method, whereas the second one relies on an interpolation scheme which is employed during the transmission of real-time traffic data in fixed intervals. The study focuses on exploring the interaction of factors that affect prediction accuracy by modelling both prediction methods. The data employed are provided by real-life scenarios of a freight carrier and the experiments follow a 2-level full factorial design approach.

Related Content

Hamed Nozari. © 2024. 13 pages.
Maryam Rahmaty. © 2024. 13 pages.
Mahmonir Bayanati. © 2024. 13 pages.
Kamalendu Pal. © 2024. 33 pages.
Kamalendu Pal. © 2024. 35 pages.
Aminmasoud Bakhshi Movahed, Ali Bakhshi Movahed, Hamed Nozari. © 2024. 31 pages.
Esmael Najafi, Iman Atighi. © 2024. 11 pages.
Body Bottom