2013
DOI: 10.1007/978-3-642-41647-7_4
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Directions and Benefits of Using Traffic Modelling Software in the Urban Public Transport

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Cited by 3 publications
(2 citation statements)
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“…Precise knowledge about the number of passengers using urban public transport on a given route during a specific time of day is indispensable for a public transport organiser, because each additional journey of a vehicle on the line means additional costs for the municipality equal to EUR a few dozen or a few hundred thousand annually. None of occupancy calculation methods used so far can provide this knowledge [14].…”
Section: Big Data Sources In Urban Public Transportmentioning
confidence: 99%
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“…Precise knowledge about the number of passengers using urban public transport on a given route during a specific time of day is indispensable for a public transport organiser, because each additional journey of a vehicle on the line means additional costs for the municipality equal to EUR a few dozen or a few hundred thousand annually. None of occupancy calculation methods used so far can provide this knowledge [14].…”
Section: Big Data Sources In Urban Public Transportmentioning
confidence: 99%
“…An equally important application of traffic models consists in long-term, frequently in a perspective of a dozen or so years or several decades, forecasting of changes in the city transport system operation and related changes of transport behaviour, which result from changes in the land development, including implementation of new investments in the city, e.g. new plants, education facilities, commercial and service centres, housing estates and recreation places as well as of other facilities being the traffic sources and destinations [14].…”
Section: Big Data Sources In Urban Public Transportmentioning
confidence: 99%