Skip to main content

Improving traffic flow with the SignalGuru app

Researchers at the Massachusetts Institute of Technology have developed SignalGuru, an app that uses dashboard-mounted smartphones to help drivers avoid red lights and reduce fuel consumption. Researchers say that SignalGuru predicts when a traffic signal is about to change, and the speed that should be driven when approaching an intersection in order to cruise through without stopping.
September 19, 2012 Read time: 2 mins
Researchers at the 2024 Massachusetts Institute of Technology have developed SignalGuru, an app that uses dashboard-mounted smartphones to help drivers avoid red lights and reduce fuel consumption.

Researchers say that SignalGuru predicts when a traffic signal is about to change, and the speed that should be driven when approaching an intersection in order to cruise through without stopping.

"The stop-and-go pattern that traffic signals create increases fuel consumption significantly," said Emmanouil Koukoumidis, the scientist behind the app. "We wondered how we could help drivers cruise through signal light intersections without stopping, and how much we could save on gas and improve the flow of vehicles," he added.

When approaching an intersection, the camera on a driver's dashboard-mounted smart phone is activated, which detects when a signal transitions from red to green and vice versa.  Using this information, the app determines the speed that should be driven to avoid stopping at a red light on the cusp of turning green, or a green light just shy of turning red.

"It tells the drivers that 'if you drive at 30 miles per hour then you'll be able to cruise through without stopping,'" explained Koukoumidis, adding that the speed recommended is always within legal speed limits.

Information on the traffic signals, such as when they change, is sourced by other users of the app and then sent back to SignalGuru to improve the accuracy of its predictions.

Koukoumidis said that while testing their prototype in Cambridge, Massachusetts they saw a 20 percent decrease in fuel consumption, which could have a significant monetary and environmental impact.  "In the US we're spending one-third of the annual energy consumption for transportation and a big part of that is vehicles," he explained.

The system was also tested in Singapore, where the traffic lights vary depending on the volume of traffic.  "It was less accurate compared to Cambridge where signals were pre-timed and had fixed settings but it would still work reasonably well with predictions accurate within two seconds," Koukoumidis said.

Currently the group is looking for industrial partners to commercialise the software. They also plan to implement other safety features, such as thresholds on deceleration, before making it accessible to the public.

Related Content

  • August 29, 2024
    Hayden AI & Snapper Services keep their eyes on the road
    Snapper Services CEO Miki Szikszai and Chris Carson, CEO of Hayden AI, tell Adam Hill about synergy and partnership – and how to make use of data once you’ve gathered it
  • September 8, 2023
    A more equitable approach to road charging: is the technology there yet?
    Thinking around road user charging, distance-based payments, and even mileage rationing is ever-widening with new concepts and suggestions being aired and brought forward every other week. Yet, as Jorgen Petersen of Systra explains, there are already many solutions in place throughout the world which promote modal shift, reduce traffic and improve air quality…
  • March 8, 2023
    Acusensus highlights magnitude of seatbelt problem
    If you don’t wear a seatbelt, you’re disproportionately likely to be killed in road collisions. Geoff Collins of Acusensus talks to Adam Hill about how AI will allow police to monitor and prevent this risky behaviour
  • April 1, 2015
    MIT study combines traffic data for smarter signal timings
    Researchers at Massachusetts Institute of Technology (MIT) have found a method of combining vehicle-level data with less precise, but more comprehensive, city-level data on traffic patterns to produce better information than current systems provide. They claim this reduce delays, improve efficiency, and reduce emissions. The new findings are reported in a pair of papers by assistant professor of civil and environmental engineering Carolina Osorio and alumna Kanchana Nanduri, published in the journals Tra