Reference
A. Jamshidnejad and B. De Schutter, "An algorithm for estimating the
generalized fundamental traffic variables from point measurements using initial
conditions,"
Transportmetrica B: Transport Dynamics,
vol. 6, no. 4, pp. 251-285, 2018.
Abstract
Fundamental macroscopic traffic variables (flow, density, and average speed)
have been defined and formulated in two different ways: the classical
definitions (defined as either temporal or spatial averages) and the
generalized definitions (defined as temporal-spatial averages). The available
literature has considered estimation of the classical variables, while
estimation of the generalized variables is still missing. This paper proposes a
new efficient sequential algorithm for estimating the generalized traffic
variables using point measurements. The algorithm takes into account those
vehicles that stay between two consecutive measurement points for more than one
sampling cycle and that are thus not detected during these sampling cycles. The
algorithm is introduced for single-lane roads first, and then is extended to
multi-lane roads. For evaluation of the proposed approach, NGSIM data, which
provides detailed information on trajectories of the vehicles on a segment of
the interstate freeway I-80 in San Francisco, California is used. The
simulation results illustrate the excellent performance of the sequential
procedure for estimating the generalized traffic variables compared with other
approaches.
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BibTeX
@article{JamDeS:17-001,
author = {Jamshidnejad, Anahita and De Schutter, Bart},
title = {An Algorithm for Estimating the Generalized Fundamental Traffic
Variables from Point Measurements Using Initial Conditions},
journal = {Transportmetrica B: Transport Dynamics},
volume = {6},
number = {4},
pages = {251--285},
year = {2018}
}