Skip to main content

Live Traffic Data unveils new SigPat feature

Live Traffic Data (LTD), conceived to solve infrastructure deficiencies and to foster the rise of smart mobility, is here at ITS America Detroit with a new feature for its proprietary traffic optimisation software, SigPat (SIGnal Performance Analysis Toolbox) platform. LTD provides infrastructure optimisation at little cost to cities and without interference with existing traffic operations. In the US, LTD has over 5,000 signalised intersections integrated into its SigPat platform and around 30,000 more a
June 7, 2018 Read time: 2 mins
Bryan Ferguson of Live Traffic Data
8800 Live Traffic Data (LTD), conceived to solve infrastructure deficiencies and to foster the rise of smart mobility, is here at ITS America Detroit with a new feature for its proprietary traffic optimisation software, SigPat (SIGnal Performance Analysis Toolbox) platform.


LTD provides infrastructure optimisation at little cost to cities and without interference with existing traffic operations. In the US, LTD has over 5,000 signalised intersections integrated into its SigPat platform and around 30,000 more are set to go live in 2019.

The platform promotes vehicle-to-infrastructure (V2I) communication and provides predictive and real-time data which includes traffic volume, arrivals on green, delays, queue lengths, travel times, vehicle trajectories and space-time diagrams. This data is collected and analysed on LTD’s cloud-based platform and is used by traffic engineers to optimise vehicular transportation, leading to decreased congestion, optimised traffic flow and reduced carbon emissions.

LTD is releasing a new feature as a first step towards using ARID (Anonymous Re-Identification Data). The company now offers travel-time and origin-destination estimation using Wi-Fi/Bluetooth sensor re-identification in intersections not equipped with vehicle detectors. This new feature allows engineers to quantify travel times at signalised corridors with both SPaT (Signal Phase and Timing) and detector data. Visitors are invited to explore LTD’s platform and experience what SigPat has to offer. LTD’s goal is to help traffic engineers and consultants envision how its platform can revolutionise city planning around the world.

Booth 707

For more information on companies in this article

Related Content

  • Parsons looking to the future – and helping to build it with iNET
    May 24, 2018
    Parsons will use the ITS America Annual Meeting Detroit to show how iNET is shaping the future of smart cities. The company will invite visitors to imagine what their morning commute might be like in the future. An autonomous vehicle picks you up, syncs with your mobile devices to determine where you need to be and when, calculates the best route, and places your order at the local coffee shop moments before stopping to pick it up along the way. This is the future of mobility, and Parsons will show how it
  • Transit signal priority improves travel times in Memphis
    August 13, 2014
    The installation of Global Traffic Technologies’ (GTT) Opticom GPS transit signal priority (TSP) along the two busiest transit corridors in Memphis is helping many of the tens of thousands of the city’s transit users reach their destination in less time.
  • Iteris & Otonomo 'unlock mobility infrastructure'
    January 25, 2023
    Connected vehicle data will be shared by companies to improve traffic intelligence
  • City of Atlanta, Georgia Tech expand research partnership for smart city initiatives
    August 29, 2017
    The City of Atlanta, in the US, has expanded its research partnership with the Georgia Institute of Technology, which has partnered with the City since 2015 to design, implement and study smart city initiatives. Through the partnership, Georgia Tech will act as the official research partner for the North Avenue Smart Corridor Project, which is funded by the Renew Atlanta Infrastructure Bond program. The project involves multiple smart city technology components designed to: facilitate and promote safety fo