Investigating optimal aggregation interval sizes of loop detector data for freeway travel-time estimation and prediction

Dongjoo Park, Soyoung You, Jeonghyun Rho, Hanseon Cho, Kangdae Lee

Research output: Contribution to journalArticlepeer-review

4 Scopus citations

Abstract

With recent increases in the deployment of intelligent, transportation system (ITS) technologies, traffic management centers have the ability to obtain and archive large amounts of data regarding the traffic system. These data can then be employed in estimations of current conditions and the prediction of future conditions on the roadway network. In this paper, we propose a general solution methodology for the identification of the optimal aggregation interval sizes of loop detector data for four scenarios (i) link travel-time estimation, (ii) corridor / route travel-time estimation, (iii) link travel-time forecasting, and (iv) corridor / route travel-time forecasting. This study applied cross validated mean square error (CVMSE) model for the link and route travel-time estimations, and a forecasting mean square error (FMSE) model for the link and corridor / route travel-time forecasting. These models were applied to loop detector data obtained from the Kyeongbu expressway in Korea. It was found that the optimal aggregation, sizes for the travel-time estimation and forecasting were 3 to 5 min and 10 to 20 min, respectively.

Original languageEnglish
Pages (from-to)580-591
Number of pages12
JournalCanadian Journal of Civil Engineering
Volume36
Issue number4
DOIs
StatePublished - Apr 2009

Keywords

  • Aggregation interval
  • Data archiving
  • Loop data
  • Size
  • Travel time

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