Skip to main content

Madrid City Council chooses Kapsch on intelligent mobility solution

Madrid City Council has chosen Kapsch in €1.9 million investment to install an intelligent mobility system, EcoTrafiX, to identify real traffic situations in the city for pedestrians, bicycles, motorcycles and cars. Madrid City Council has chosen Kapsch in €1.9 million investment to install an intelligent mobility system, EcoTrafiX, to identify real traffic situations in the city for pedestrians, bicycles, motorcycles and cars.
October 12, 2017 Read time: 1 min

Madrid City Council has chosen 81 Kapsch in €1.9 million investment to install an intelligent mobility system, EcoTrafix to identify real traffic situations in the city for pedestrians, bicycles, motorcycles and cars.

Kapsch will install a network of 120 permanent traffic counting stations that have artificial vision sensors to count traffic, as well as 40 stations for pedestrians and cyclists, to continuously monitor mobility in the city’s streets.

The EcoTrafiX will integrate data obtained from the stations with various specific measurements such as traffic intensities, instant speeds, directional traffic count and characterisation, as well as any others considered necessary by the General Subdirectorate for Mobility Implementation and Transportation. This process will assist Madrid City Council in identifying the causes of congestion and help propose solutions for mitigation. The system will consolidate floating car data on car parks (location, usage), public street parking (SER), police reports, public transportation to provide real time information on traffic.

For more information on companies in this article

Related Content

  • Bridging the highway travel information gap
    March 14, 2012
    A new traffic management solution is attempting to bridge the gap in information available on freeways and arterial roadways. Andrew Bardin Williams reports. Agencies responsible for national networks of roads around the world have the ability to measure, analyse and disseminate accurate travel information to drivers. Millions of dollars go into data collection infrastructure to collect traffic congestion and travel time information on major freeways or highways. For example, a driver on the I-210 in the Lo
  • Transportation applications move to machine vision’s mainstream
    June 11, 2015
    The adaptation of machine vision to transport applications continues apace. That the machine vision industry is taking traffic installations seriously is evident by the amount of hardware and software products tailor-made for ITS applications that are now available on the market. A good example comes from US-based Gridsmart Technologies which has developed a single wire fisheye camera that provides a horizon to horizon view for use at intersections. Not only does the single camera replace four or more in a
  • Abu Dhabi seeks safe and efficient multi-modal ITS solutions
    December 17, 2014
    Abu Dhabi’s Department of Transport is planning to roll out its second phase ITS Strategy and Action Plan through to 2019 which will deploy a host of innovative multimodal ITS solutions. The United Arab Emirates (UAE) is continuing to experience rapid growth in both its economy and population and none more so than its capital, Abu Dhabi. To cope with the current expansion, and in anticipation of future growth, the Abu Dhabi Surface Transport Master Plan has been devised by its Department of Transport and th
  • Reducing congestion with Tomtom's historical traffic data
    December 5, 2012
    Historical traffic data provided by TomTom is being used by the local government in Spain’s Basque region to reduce road congestion at less cost. Old habits die hard. Photos from as far back as the 1930s show people counting cars by the roadside in order to provide congestion data to those running road networks. Today, such techniques are still used, albeit augmented by a range of automation technologies such as inductive loops, infra-red sensors and number plate recognition. Even with these advances, howe