Skip to main content

Microsoft research aims to predict traffic jams

Microsoft Research is working with Federal University of Minas Gerais in Brazil to tackle the problem of traffic jams. The immediate objective of this research is to predict traffic conditions over the next 15 minutes to an hour, so that drivers can be forewarned of likely traffic snarls. The Traffic Prediction Project plans to combine all available traffic data, including both historic and current information gleaned from transportation departments, Bing traffic maps, road cameras and sensors and the so
April 9, 2015 Read time: 2 mins
Microsoft Research is working with Federal University of Minas Gerais in Brazil to tackle the problem of traffic jams. The immediate objective of this research is to predict traffic conditions over the next 15 minutes to an hour, so that drivers can be forewarned of likely traffic snarls.

The Traffic Prediction Project plans to combine all available traffic data, including both historic and current information gleaned from transportation departments, Bing traffic maps, road cameras and sensors and the social networks of the drivers themselves, to create a solution that gets motorists from point A to point B with minimal stop-and-go. The use of historic data and information from social networks are both unique aspects of the project.

By using algorithms to process all these data, the project team intends to predict traffic jams accurately so that drivers can make smart, real-time choices, like taking an alternative route, using public transit, or maybe even just postponing a trip. The predictions should also be invaluable to traffic planners, especially when they are working to accommodate traffic from special events and when planning for future transportation needs.

To date, the researchers have tested their prediction model in some of the world’s most traffic-challenged cities: New York, Los Angeles, London and Chicago. The model achieved a prediction accuracy of 80 percent, and that was based on using only traffic-flow data. The researchers expect the accuracy to increase to 90 per cent when traffic incidents and data from social networks are folded in.

Related Content

  • Germany's approach to adaptive traffic control
    February 3, 2012
    Jürgen Mück, Siemens AG, describes the three-level approach taken in Germany to adaptive network control
  • Belfast and Bristol ‘most congested cities in UK’
    April 5, 2013
    According to the 2012 Congestion Index from satellite navigation specialists TomTom, motorists in Bristol and Belfast now face the slowest moving traffic in Britain. Even London’s infamous rush hour is less congested than peak-time jams in cities like Manchester and Nottingham, the annual global traffic figures found. The index shows that the average journey for drivers in Belfast takes 32.1 per cent longer than it would do if traffic moved freely, while in Bristol, journeys take 31 per cent longer. Londo
  • Why keeping count is so important for traffic management
    November 21, 2023
    Traffic engineers need to have multiple solutions in their toolbox to complete the most accurate and safe data collection programmes possible, explains Wes Guckert of The Traffic Group
  • Canadian city pilots technology to improve traffic flow, safety
    August 21, 2015
    The City of Edmonton, Canada is piloting new traffic technology to help drivers get where they need to faster, easier and more safely, with the help of the University of Alberta's Centre for Smart Transportation. The city is testing an Advisory Driving Speed system on one of the city’s major freeway where the legal speed limit is 80 km/h and which experiences congestion issues during peak periods. Signage informs drivers of the recommended speed they should travel to avoid traffic jams and sudden stops,