Foundation technology for developing an autonomous Complex Dwell-time Diagnostics (CDD) Tool

As the demand for rail services grows, intense pressure is placed on stations at the centre of rail networks where large crowds of rail passengers alight and board trains during peak periods. The time it takes for this to occur - the dwell-time - can become extended when high numbers of people congest and cross paths. This paper details our work towards developing an autonomous Complex Dwell-time Diagnostics (CDD) Tool - a low cost technology, capable of providing information on multiple dwell events in real time. At present, rail operators are not able to access reliable and detailed enough data on train dwell operations and passenger behaviour. This is because much of the necessary data has to be collected manually. The lack of rich data means train crews and platform staff are not empowered to do all they could to potentially stabilise and reduce dwell-times. By better supporting service providers with high quality data analysis, the number of viable train paths can be increased, potentially delaying the need to invest in high cost hard infrastructures such as additional tracks. The foundation technology needed to create CDD discussed in this paper comprises a 3D image data based autonomous system capable of detecting dwell events during operations and then create business information that can be accessed by service providers in real time during rail operations. Initial tests of the technology have been carried out at Brisbane Central rail station. A discussion of the results to date is provided and their implications for next steps.

Language

  • English

Media Info

  • Pagination: 13p
  • Monograph Title: Informing transport's future through practical research: 37th Australasian Transport Research Forum, 30 September to 2 October 2015, Sydney, New South Wales

Subject/Index Terms

Filing Info

  • Accession Number: 01587015
  • Record Type: Publication
  • Source Agency: ARRB
  • Files: ITRD, ATRI
  • Created Date: Jan 14 2016 11:49AM