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A Classified Queue from the ADR6000


The ADR6000TM is the only traffic data counter/classifier which collects vehicle volume and class data with greater than 95% accuracy in all weather and traffic conditions.

Traffic has significantly increased in the past ten years, and the number of cars on the road is projected to continue increasing by as much as 50% in the next decade. As vehicle traffic volumes grow, it has become increasingly difficult to collect traffic data accurately on congested routes using traditional sensors such as piezos, road tube or standard inductive loops.

Quixote Traffic is one company who continue to develop and improve their comprehensive portfolio of data collection and classification solutions. They have combined their expertise in data collection and inductive loop knowledge with Idris to develop the state-of-the-art ADR6000TM counter/classifier. 

 The ADR6000TM counter/classifier is a modular single or multi-lane data collection system which offers accurate vehicle count and axle based classification in traffic conditions ranging from free flow to stop and go congestion. The ADR6000TM, enhanced by the Idris algorithms, utilises sophisticated signal processing techniques to extract minute changes in inductance from standard loops. This enables intelligent profile and axle classification with wide area tracking of vehicles. The unit is capable of determining tailgating versus towing vehicles and also identifies vehicles straddling lanes and places them into the correct lane. The classification scheme is based on features extracted by the ADR6000TM, including length, speed, number and spacing of axles.   ADR600TM Automatic Data recorder

 Published in Idris Summer 2008

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