Skip to main content

Siemens’ Stratos offers scalable solution

Developed using the latest cloud-based technology, Siemens says its Stratos system delivers scalable real-time traffic management, information and control, from basic monitoring to strategic control of complex urban traffic environments. Proven traffic management systems have been integrated to create Stratos and provide streamlined, seamless user interaction with access anywhere on smart mobile devices as well as traditional control rooms. Siemens says Stratos is the complete solution for car parking, VMS,
May 31, 2013 Read time: 2 mins
Developed using the latest cloud-based technology, 189 Siemens says its Stratos system delivers scalable real-time traffic management, information and control, from basic monitoring to strategic control of complex urban traffic environments.

Proven traffic management systems have been integrated to create Stratos and provide streamlined, seamless user interaction with access anywhere on smart mobile devices as well as traditional control rooms. Siemens says Stratos is the complete solution for car parking, 537 VMS, strategic management and, in the future, adaptive traffic control or traffic management as a service.

With a range of different application modules, including journey time information, strategic network management, car park management and driver information, Stratos brings the latest technology to traffic management infrastructure, with flexible deployment options to address individual customer requirements.

Stratos includes a new journey time application module which uses ANPR or Bluetooth data to calculate journey times and also includes a data fusion algorithm developed by Siemens in conjunction with the Transportation Research Group at the University of Southampton.  It also offers effective strategic management through a simple, easy to use strategy manager tool that builds directly on experience gained from existing customer deployments and feedback, as well as accurate and up to date travel information and parking information, displayed on variable message signs.

For more information on companies in this article

Related Content

  • Plug and play approach unifies workzone ITS
    July 18, 2012
    Caltrans District 7 is finalising a ConOps document which will detail a plug-and-play to work zone ITS operation. The organisation's Allen Z. Chen elaborates. Before August is out, on current planning, the California Department of Transportation (Caltrans) District 7 (which covers Los Angeles and Ventura Counties, with a combined population of close to 11 million people) intends to have finalised a Concept of Operations (ConOps) document dealing with Work Zone Transportation Management Systems (WZTMS). The
  • The benefits of Lidar
    March 21, 2022

    While Lidar is gaining ground in the ITS industry, it has not yet reached the level of mass adoption where it shows up frequently in requests for proposals (RFPs) from cities and DoTs.

  • Data goldmines offer rich pickings
    May 31, 2013
    Astronomical is not too grand a term to describe the current rate of growth in transportation-related data. Massive amounts of traffic related information, such as speed, volume, incidents and weather are being generated every second by road operators and users alike. Big data’ derives its name from the sheer amount and complexity of available raw data. Its potential value is starting to emerge among the intelligent transportation systems community. A gold rush is taking place to capture this value, with da
  • Cubic: predictive analytics is putting fortune tellers out of business
    November 23, 2018
    The rise of machine learning and artificial intelligence means that fortune tellers will soon be out of business. Ed Chavis takes a behind the scenes look at the world of predictive analytics ver since organisations started taking advantage of insights derived from Big Data, data scientists concentrated their efforts on the ability to make correct assumptions about the future. A few years later, with the help of automation, developments in machine learning (ML) and advancements in the application of a