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An analysis of four methodologies for estimating highway capacity from ITS data

An analysis of four methodologies for estimating highway capacity from ITS data
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摘要 With the recent advent of Intelligent Transporta- tion Systems (ITS), and their associated data collection and archiving capabilities, there is now a rich data source for transportation professionals to develop capacity values for their own jurisdictions. Unfortunately, there is no consensus on the best approach for estimating capacity from ITS data. The motivation of this paper is to compare and contrast four of the most popular capacity estimation techniques in terms of (1) data requirements, (2) modeling effort required, (3) esti- mated parameter values, (4) theoretical background, and (5) statistical differences across time and over geographically dispersed locations. Specifically, the first method is the maximum observed value, the second is a standard funda- mental diagram curve fitting approach using the popular Van Aerde model, the third method uses the breakdown identifi- cation approach, and the fourth method is the survival prob- ability based on product limit method. These four approaches were tested on two test beds: one is located in San Diego, California, U.S., and has data from 112 work days; the other is located in Shanghai, China, and consists of 81 work days. It was found that, irrespective of the estimation methodology and the definition of capacity, the estimated capacity can vary considerably over time. The second finding was that, as ex- pected, the different approaches yielded different capacity results. These estimated capacities varied by as much as 26 % at the San Diego test site and by 34 % at the Shanghai test site. It was also found that each of the methodologies has advantages and disadvantages, and the best method will be the function of the available data, the application, and the goals of the modeler. Consequently, it is critical for users of automatic capacity estimation techniques, which utilize ITS data, to understand the underlying assumptions of each of the different approaches. With the recent advent of Intelligent Transporta- tion Systems (ITS), and their associated data collection and archiving capabilities, there is now a rich data source for transportation professionals to develop capacity values for their own jurisdictions. Unfortunately, there is no consensus on the best approach for estimating capacity from ITS data. The motivation of this paper is to compare and contrast four of the most popular capacity estimation techniques in terms of (1) data requirements, (2) modeling effort required, (3) esti- mated parameter values, (4) theoretical background, and (5) statistical differences across time and over geographically dispersed locations. Specifically, the first method is the maximum observed value, the second is a standard funda- mental diagram curve fitting approach using the popular Van Aerde model, the third method uses the breakdown identifi- cation approach, and the fourth method is the survival prob- ability based on product limit method. These four approaches were tested on two test beds: one is located in San Diego, California, U.S., and has data from 112 work days; the other is located in Shanghai, China, and consists of 81 work days. It was found that, irrespective of the estimation methodology and the definition of capacity, the estimated capacity can vary considerably over time. The second finding was that, as ex- pected, the different approaches yielded different capacity results. These estimated capacities varied by as much as 26 % at the San Diego test site and by 34 % at the Shanghai test site. It was also found that each of the methodologies has advantages and disadvantages, and the best method will be the function of the available data, the application, and the goals of the modeler. Consequently, it is critical for users of automatic capacity estimation techniques, which utilize ITS data, to understand the underlying assumptions of each of the different approaches.
出处 《Journal of Modern Transportation》 2015年第2期107-118,共12页 现代交通学报(英文版)
关键词 Capacity estimation method Van Aerdemodel Breakdown identification PLM Capacity estimation method Van Aerdemodel Breakdown identification PLM
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参考文献30

  • 1Bureau of Public Roads (1950)Highway Capacity Manual. Practical Applications in Research.
  • 2rr Highway Research Board (1965) Highway Capacity Manual. Washington, DC.
  • 3Transportation Research Board (1985) Highway Capacity Man- ual. Washington, DC.
  • 4Transportation Research Board (2000) Highway Capacity Man- ual. Washington, DC.
  • 5Transportation Research Board (2010) Highway Capacity Man- ual. Washington, DC.
  • 6Btilon W, Geistefeldt J, Zurlinden H (2007) Implementing the concept of reliability for highway capacity analysis. Transp Res Rec 2027(1): 1-8.
  • 7Elefteriadou L, Roger PR, William RM (1995) Probabilistic na- ture of breakdown at freeway merge junctions transportation re- search record. Transp Res Rec 1484:80-89.
  • 8Persaud B, Yagar S, Brownlee R (1998) Exploration of the breakdown phenomenon in freeway traffic. Transp Res Rec 1634:64-69.
  • 9Wu X, Michalopoulos P, Liu XH (2010) Stochasticity of freeway operational capacity and chance-constrained ramp metering. Transp Res Part C 18:741-756.
  • 10Minderhoud MM, Botma H, Bovy PH (1997) Assessment of roadway capacity estimation methods. Transp Res Rec 1572(1):59-67.

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