Scalable system for smart urban transport management

    Research output: Contribution to journalArticlepeer-review

    1 Downloads (Pure)

    Abstract

    Efficient management of smart transport systems requires the integration of various sensing technologies, as well as fast processing of a high volume of heterogeneous data, in order to perform smart analytics of urban networks in real time. However, dynamic response that relies on intelligent demand-side transport management is particularly challenging due to the increasing flow of transmitted sensor data. In this work, a novel smart service-driven, adaptable middleware architecture is proposed to acquire, store, manipulate, and integrate information from heterogeneous data sources in order to deliver smart analytics aimed at supporting strategic decision-making. The architecture offers adaptive and scalable data integration services for acquiring and processing dynamic data, delivering fast response time, and offering data mining and machine learning models for real-time prediction, combined with advanced visualisation techniques. The proposed solution has been implemented and validated, demonstrating its ability to provide real-time performance on the existing, operational, and large-scale bus network of a European capital city.
    Original languageEnglish
    Article number8896705
    JournalJournal of Advanced Transportation
    Volume2020
    Early online date16 Sept 2020
    Publication statusPublished - 16 Sept 2020

    Bibliographical note

    Note: This work was supported by Kingston University.

    Keywords

    • Computer science and informatics
    • automotive engineering
    • computer science Applications
    • economics and econometrics
    • mechanical engineering
    • strategy and management

    Fingerprint

    Dive into the research topics of 'Scalable system for smart urban transport management'. Together they form a unique fingerprint.
    • Energy and Resource Management

      Nebel, J.-C. (CoI), Ofetotse, E. L. (PI), Pilz, M. (Researcher), Pfluegel, E. (CoI), Al-Fagih, L. (PI), Brujic-Okretic, V. (CoI) & Khaddaj, S. (CoI)

      21/10/187/07/23

      Project: Research & KE

    Cite this