Skip to main content

New app aids travel behaviour research

Sense.DAT is a smart app that has been developed to fully support panel-based travel research. It can measure, analyse and store outdoor travel behaviour (travel diaries) and travel experience data. The sensors in a traveller’s iPhone detect where and when they travelled, by what mode and by which route. It offers a daily travel overview, including statistics that can be accessed through a calendar.
August 3, 2015 Read time: 1 min
Sense.DAT is a smart app that has been developed to fully support panel-based travel research. It can measure, analyse and store outdoor travel behaviour (travel diaries) and travel experience data. The sensors in a traveller’s iPhone detect where and when they travelled, by what mode and by which route. It offers a daily travel overview, including statistics that can be accessed through a calendar.

The system has Data security and privacy protection have been given particular attention so that the collected data will be used solely for research purposes.

Each trip can be viewed, approved and, if necessary, corrected by the user. 8188 DAT.Mobility claims that in this way highly accurate and complete travel diaries can be obtained with little effort. Sense.DAT includes self-learning algorithms to detect habitual patterns in behaviour. As a result, the app will automatically detect frequently used routes and frequently visited places.

Related Content

  • Reducing transport energy use with real time travel information
    January 23, 2012
    The In-Time project is looking at the effect that multi-modal real-time traveller information services can have of reducing transport's energy consumption levels. By Martin Böhm, AustriaTech GmbH. Around the world, significant research and development effort is currently directed towards reducing energy consumption by addressing those areas where the biggest savings can be expected. European studies have shown that the transport sector has the potential to reduce its energy consumption by up to 26 per cent
  • Navigating the data privacy landscape
    July 24, 2023
    If customer data is not protected then the journey towards better, less polluting public transport solutions is likely to be delayed, warns Alexis Suggett of Cubic Transportation Systems
  • Detection analysis technology successfully predicts traffic flows
    February 3, 2012
    David Crawford investigates new detection analysis technology from IBM. Locations on both the East and West Coasts of the US are scheduled for early deployments of IBM's new Traffic Prediction Tool (TPT) statistical analysis model for the fine-time resolution and near-term prediction of road flow conditions. Developed by IBM's Watson Research Laboratories, TPT is designed to analyse data from the the key detection indicators - average vehicle volumes and speeds passing a location in a given time interval -
  • Assessing driver behaviour in work zones
    May 31, 2013
    David Crawford looks at moves to increase throughput and safety in work zones.