Data on the daily activity of private cars form the basis of many studies in the field of transportation engineering. In the past, in order to obtain such data, a large number of collection techniques based on travel diaries and driver interviews were used. Telematics applied to vehicles and to a broad range of economic activities has opened up new opportunities for transportation engineers, allowing a significant increase in the volume and detail level of data collected. One of the options for obtaining information on the daily activity of private cars now consists of processing data from automated vehicle monitoring (AVM). Therefore, in this context, and in order to explore the opportunity offered by telematics, this paper presents a methodology for obtaining origin–destination flows through basic info extracted from AVM/floating car data (FCD). Then, the benefits of such a procedure are evaluated through its implementation in a real test case, i.e., the Veneto region in northern Italy where full-day AVM/FCD data were available with about 30,000 vehicles surveyed and more than 388,000 trips identified. Then, the goodness of the proposed methodology for O-D flow estimation is validated through assignment to the road network and comparison with traffic count data. Taking into account aspects of vehicle-sampling observations, this paper also points out issues related to sample representativeness, both in terms of daily activities and spatial coverage. A preliminary descriptive analysis of the O-D flows was carried out, and the analysis of the revealed trip patterns is presented.

Comi, A., Rossolov, A., Polimeni, A., Nuzzolo, A. (2021). Private car O-D flow estimation based on automated vehicle monitoring data: theoretical issues and empirical evidence. INFORMATION, 12(12) [10.3390/info12120493].

Private car O-D flow estimation based on automated vehicle monitoring data: theoretical issues and empirical evidence

Comi A.
;
Polimeni A.;Nuzzolo A.
2021-01-01

Abstract

Data on the daily activity of private cars form the basis of many studies in the field of transportation engineering. In the past, in order to obtain such data, a large number of collection techniques based on travel diaries and driver interviews were used. Telematics applied to vehicles and to a broad range of economic activities has opened up new opportunities for transportation engineers, allowing a significant increase in the volume and detail level of data collected. One of the options for obtaining information on the daily activity of private cars now consists of processing data from automated vehicle monitoring (AVM). Therefore, in this context, and in order to explore the opportunity offered by telematics, this paper presents a methodology for obtaining origin–destination flows through basic info extracted from AVM/floating car data (FCD). Then, the benefits of such a procedure are evaluated through its implementation in a real test case, i.e., the Veneto region in northern Italy where full-day AVM/FCD data were available with about 30,000 vehicles surveyed and more than 388,000 trips identified. Then, the goodness of the proposed methodology for O-D flow estimation is validated through assignment to the road network and comparison with traffic count data. Taking into account aspects of vehicle-sampling observations, this paper also points out issues related to sample representativeness, both in terms of daily activities and spatial coverage. A preliminary descriptive analysis of the O-D flows was carried out, and the analysis of the revealed trip patterns is presented.
2021
Pubblicato
Rilevanza internazionale
Articolo
Esperti anonimi
Settore ICAR/05 - TRASPORTI
English
Con Impact Factor ISI
GPS data; O-D flows; sample size; car trips; automated vehicle monitoring (AVM); floating car data(FCD); demand forecasting; telematics
https://www.mdpi.com/2078-2489/12/12/493
Comi, A., Rossolov, A., Polimeni, A., Nuzzolo, A. (2021). Private car O-D flow estimation based on automated vehicle monitoring data: theoretical issues and empirical evidence. INFORMATION, 12(12) [10.3390/info12120493].
Comi, A; Rossolov, A; Polimeni, A; Nuzzolo, A
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Utilizza questo identificativo per citare o creare un link a questo documento: https://hdl.handle.net/2108/282643
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