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

  • Rio’s TMC rises to Olympic challenge
    October 27, 2016
    Timothy Compston lifts the lid on Rio de Janeiro’s preparations for keeping its transport systems moving during the Olympics – and the outcome. Hosting the Olympics poses major traffic management challenges for any city and Rio was no exception – especially as it is already one of the world’s most congested cities. Beyond its normal 6.5 million inhabitants wanting to carry on their daily lives, in August Rio was also home to 11,300 athletes from 206 countries. Athletes who, without fail, had to reach their
  • Singapore aims to set MaaS benchmark
    September 26, 2019
    Delegates at this year’s ITS World Congress in Singapore will be able to experience Mobility as a Service for themselves in the form of MobilityX’s Zipster app
  • Øresund bridges the front line for border crossing traffic
    September 15, 2016
    Timothy Compston considers the challenges faced by the operators of the Øresund Bridge between Denmark and Sweden, the largest structure of its kind across Europe. In light of the concerns about the ongoing security threat and the unprecedented flow of migrants, many of the countries that make up the Schengen Area in Europe have re-introduced border controls. For its part, Sweden has rolled out ID checks for train, bus and ferry passengers from Denmark placing the landmark Øresund Bridge very much on the fr
  • Crossing the line: managing traffic across jurisdictions
    June 18, 2024
    The US will eventually have a fully-digitised transportation network, with traffic management devices talking to each other across massive distances. It’s really a question of pain points on the road to full deployment, explains Mark Talbot of Q-Free