A Big Data Application for Low Emission Heavy Duty Vehicles

Author:

Dimokas Nikos1,Margaritis Dimitris2,Gaetani Manuel3,Koprubasi Kerem4,Bekiaris Evangelos2

Affiliation:

1. Department of Informatics , University of Western Macedonia Kastoria , Greece , Fourka Area, 52100

2. Centre for Research and Technology Hellas/Hellenic Institute of Transport Thessaloniki , Greece , 6th km Charilaou – Thermi, 57001

3. LINKS Foundation , Torino , Italy , via Pier Carlo Boggio 6, 10138

4. FORD OTOSAN, Sancaktepe – İstanbul , Türkiye, Akpinar Mah, Hasan Basri Caddesi, No:2, 34885

Abstract

Abstract Recent advances in green and smart mobility aim to reduce congestion and foster greener, cheaper and with less delay transportation. The reduction of fuel consumption and CO2 emissions have worked on light-duty vehicles. However, the reduction of emissions and consumables without sacrificing on emission standards is an important challenge for heavy-duty vehicles. The paper introduces a big data system architecture that provides an on-demand route optimization service reducing NOx emissions of heavy-duty vehicles. The system utilizes the information provided by the navigation systems, big data analytics such as predictive traffic and weather conditions, road topography and road network and information about vehicle payload, vehicle configuration and transport mission to develop a strategy for the best route and the best velocity profile. The system was proven efficient during the performance evaluation phase, since the cumulative engine-out NOx has been decreased more than 10%.

Publisher

Walter de Gruyter GmbH

Subject

Computer Science Applications,General Engineering

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