Article ID Journal Published Year Pages File Type
1132001 Transportation Research Part B: Methodological 2014 19 Pages PDF
Abstract

•Derivation of a probabilistic speed–density relation from microscopic car-following.•An analytical verification of the physical behavior of the proposed model.•An empirical investigation of the model and comparison against real-world traffic data.

Probabilistic models describing macroscopic traffic flow have proven useful both in practice and in theory. In theoretical investigations of wide-scatter in flow–density data, the statistical features of flow density relations have played a central role. In real-time estimation and traffic forecasting applications, probabilistic extensions of macroscopic relations are widely used. However, how to obtain such relations, in a manner that results in physically reasonable behavior has not been addressed. This paper presents the derivation of probabilistic macroscopic traffic flow relations from Newell’s simplified car-following model. The probabilistic nature of the model allows for investigating the impact of driver heterogeneity on macroscopic relations of traffic flow. The physical features of the model are verified analytically and shown to produce behavior which is consistent with well-established traffic flow principles. An empirical investigation is carried out using trajectory data from the New Generation SIMulation (NGSIM) program and the model’s ability to reproduce real-world traffic data is validated.

Related Topics
Social Sciences and Humanities Decision Sciences Management Science and Operations Research
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