Sergiy Zhuk, Andrey Polyakov, et al.
IEEE TACON
In this paper, we develop a data-assimilation algorithm for a macroscopic model of traffic flow. The algorithm is based on the Discontinuous Galerkin Method and Minimax Estimation, and is applied to a macroscopic model based on a scalar conservation law. We present numerical results which demonstrate the shock-capturing capability of the algorithm under high uncertainty in the initial traffic condition, using only sparse measurements, and under time-dependent boundary conditions. The latter makes it possible for estimation to be performed on merge/diverge sections, allowing the possibility of the deployment of the algorithm to road networks.
Sergiy Zhuk, Andrey Polyakov, et al.
IEEE TACON
Emanuele Ragnoli, Sergiy Zhuk, et al.
CDC 2015
Jonathan P. Epperlein, Sergiy Zhuk, et al.
Automatica
Roman Overko, Rodrigo Ordonez-Hurtado, et al.
IEEE T-ITS