The framework of using models for comparative assessment of traffic sensors

The intelligent transport systems (ITS) are now one of the most dynamic sector in terms of finding solutions for transport domain. These systems are applications of electronics, IT, computer science and other connected disciplines which are installed in terms of increasing the efficiency of the transport activities and decreasing the negative impact of them. ITS are mainly based on a sensor network which is able to collect data from transport processes. The paper is focused on elaboration of a common model for traffic sensor which is able to support comparative assessment of various traffic sensors (the example in the paper is based on inductive loops and virtual loops based on CCTV cameras). The framework and the models are created in LabVIEW and an example of using the model in comparative assessment is provided. The authors presented the methodology for the elaboration of the model as well as the recommendations for comparative assessment based on the proposed framework.

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