• DocumentCode
    1762924
  • Title

    Spatiotemporal Analysis of Bluetooth Data: Application to a Large Urban Network

  • Author

    Laharotte, Pierre-Antoine ; Billot, Romain ; Come, Etienne ; Oukhellou, Latifa ; Nantes, Alfredo ; El Faouzi, Nour-Eddin

  • Author_Institution
    Transp. & Traffic Eng. Lab. (LICIT), Inst. Francais des Sci. et Technol. des Transp., Bron, France
  • Volume
    16
  • Issue
    3
  • fYear
    2015
  • fDate
    42156
  • Firstpage
    1439
  • Lastpage
    1448
  • Abstract
    The emergence of new technologies allows better monitoring of traffic conditions and understanding of urban network dynamics. Bluetooth technology is becoming widespread, as it represents a cost-effective means for capturing road traffic in both arterials and motorways. Although the extraction of travel time from Bluetooth data is fairly straightforward, data reliability and processing is still challenging with the issues of penetration rate, mode discrimination, and detection quality. This paper presents a methodological contribution to the use of Bluetooth data for the spatiotemporal analysis of a large urban network (Brisbane, Australia). It introduces the concept of the Bluetooth origin-destination (B-OD) matrix, which is built from a network of 79 Bluetooth detectors located within the Brisbane urban area. The B-OD matrix describes the dynamics of a subpopulation of vehicles, between pairs of detectors. The results show that the characteristics of urban networks can be effectively represented through B-OD matrices. A comparison with loop detector data enables an assessment of the results´ significance. Then, the spatiotemporal structure of the network is analyzed with two different clustering analyses, namely, latent Dirichlet allocation (LDA) and $K$-means. While LDA is used to detect a temporal pattern, the $K$-means algorithm highlights Bluetooth fundamental diagram (BFD) classes. The results show that Bluetooth data has the potential to be a reliable data source for traffic monitoring. By highlighting hidden structures of a large area, the algorithm outputs allow us to provide the road operators with a fine spatiotemporal analysis of their network, in terms of traffic conditions.
  • Keywords
    Bluetooth; pattern clustering; road traffic control; traffic engineering computing; Australia; B-OD matrix; BFD classes; Bluetooth data; Bluetooth detectors; Bluetooth fundamental diagram classes; Bluetooth origin-destination matrix; Brisbane urban area; K-means algorithm; LDA; arterial traffic; clustering analysis; data processing; data reliability; data source; detection quality; large-urban network; latent Dirichlet allocation; mode discrimination; motorway traffic; penetration rate; road operators; road traffic capturing; spatiotemporal analysis; spatiotemporal structure; temporal pattern detection; traffic condition monitoring; traffic conditions; traffic monitoring; travel time extraction; urban network characteristics; urban network dynamics; vehicle subpopulation; Bluetooth; Data processing; Detectors; Estimation; Spatiotemporal phenomena; Vehicles; $K$-means; Bluetooth; forecasting; latent Dirichlet allocation (LDA); spatiotemporal clustering; traffic typology; urban network;
  • fLanguage
    English
  • Journal_Title
    Intelligent Transportation Systems, IEEE Transactions on
  • Publisher
    ieee
  • ISSN
    1524-9050
  • Type

    jour

  • DOI
    10.1109/TITS.2014.2367165
  • Filename
    6990625