Skip to main content

Modelling could reduce traffic mayhem

A mathematical model that could significantly reduce traffic congestion by combining data from existing infrastructure, remote sensors, mobile devices and their communication systems has been developed by a research team from Australia’s Swinburne University of Technology. Swinburne‘s Congestion Breaker project utilises intelligent transport systems (ITS), a field of research that combines information and data from a range of sources for effective traffic control.
May 6, 2016 Read time: 2 mins

A mathematical model that could significantly reduce traffic congestion by combining data from existing infrastructure, remote sensors, mobile devices and their communication systems has been developed by a research team from Australia’s 5192 Swinburne University of Technology.

Swinburne‘s Congestion Breaker project utilises intelligent transport systems (ITS), a field of research that combines information and data from a range of sources for effective traffic control.

Led by Professor Hai L. Vu and developed in collaboration with 4728 VicRoads, the government body responsible for road management, through an Australian Research Council (ARC) Future Fellowships grant, the Congestion Breaker project has developed a mathematical approach that uses limited and incomplete data from existing operational traffic management systems to build a predictive control framework to minimise congestion.

The model optimises the traffic flows over a finite period, taking into account the short-term demand and traffic dynamic within links of the network. The resulting algorithm explicitly considers any spillback due to a queue built-up and travel time on the road between intersections and is capable of producing systems which would reduce congestion significantly.

Further innovative distributed control mechanism created in this project is inspired by research developed for packet scheduling in wireless networks. It can handle a large network containing thousands of sensors and actuators in real time.

The outcome is a comprehensive traffic management framework with computational flexibility accurate enough to reflect real urban traffic networks. It produces a scalable algorithm that can be integrated with current operating traffic management systems to reduce congestion and make better use of the existing road network infrastructure

“Our novelty is in developing an integrated traffic control scheme that combines linear model predictive control with route guidance to manage urban traffic flows, and making it scalable for large networks,” says Vu.

The researchers say the model has potential industry impact as a state-of-the-art, integrated, efficient traffic network management system. It’s a smart, scalable and easily integrated solution.

“Similar pilot projects can be developed for many other cities around the world,” says Vu. “And there are many possibilities for commercial applications in Australia and overseas in terms of smart mobility, sustainable cities for growing populations, and its concentration in big cities.”

For more information on companies in this article

Related Content

  • Getting more for less from traffic data
    August 15, 2012
    Collection of traffic and transit data has grown significantly, combining with advances in connectivity and computational modelling to good effect. Desire to do more with less – to make budgets go further – has helped create a boom in the collection and study of traffic and transport data. Studies are becoming longer, greater in number and further in-depth as more intelligence is sought, plus, transportation agencies are looking to make processes of data collection less costly, or more efficient.
  • Manchester seeks smart but not selective transport solutions
    January 25, 2018
    Smarter transport relies on better communications both with travellers and between transport providers. Andrew Williams reports. Inrix’s prediction that the cost of traffic congestion will rise by 63% to £21bn per year by 2030 clearly illustrates that, in addition to the ongoing inconvenience and inefficiency, ongoing gridlock is a significant drain on the economy. It is against this backdrop that a Cisco-led consortium has launched CitySpire, a smart transport programme that uses location-based services a
  • Traffic management turns to machine vision
    June 1, 2016
    Traffic engineers can use the latest advances in vision technology to streamline and enhance traffic management. The idea of using one camera to perform all functions at an intersection is attractive to authorities for many reasons and camera supplier Gridsmart says it can make this happen. Its Bell Camera offers a horizon to horizon view that includes the centre of the intersection where vehicles, bicycles and pedestrians cross paths and it can be used for traffic light actuation, traffic data collection a
  • Driverless-vehicle options now include scooters
    November 9, 2016
    Researchers have developed an autonomous mobility scooter which could, in principle, use a scooter to get down the hall and through the lobby of an apartment building, take a golf cart across the building’s parking lot, and pick up an autonomous car on the public roads.