104 research outputs found
From traffic and pedestrian follow-the-leader models with reaction time to first order convection-diffusion flow models
In this work, we derive first order continuum traffic flow models from a
microscopic delayed follow-the-leader model. Those are applicable in the
context of vehicular traffic flow as well as pedestrian traffic flow. The
microscopic model is based on an optimal velocity function and a reaction time
parameter. The corresponding macroscopic formulations in Eulerian or Lagrangian
coordinates result in first order convection-diffusion equations. More
precisely, the convection is described by the optimal velocity while the
diffusion term depends on the reaction time. A linear stability analysis for
homogeneous solutions of both continuous and discrete models are provided. The
conditions match the ones of the car-following model for specific values of the
space discretization. The behavior of the novel model is illustrated thanks to
numerical simulations. Transitions to collision-free self-sustained stop-and-go
dynamics are obtained if the reaction time is sufficiently large. The results
show that the dynamics of the microscopic model can be well captured by the
macroscopic equations. For non--zero reaction times we observe a scattered
fundamental diagram. The scattering width is compared to real pedestrian and
road traffic data
Influence of the number of predecessors in interaction within acceleration-based flow models
In this paper, the stability of the uniform solutions is analysed for
microscopic flow models in interaction with predecessors. We calculate
general conditions for the linear stability on the ring geometry and explore
the results with particular pedestrian and car-following models based on
relaxation processes. The uniform solutions are stable if the relaxation times
are sufficiently small. The analysis is focused on the relevance of the number
of predecessors in the dynamics. Unexpected non-monotonic relations between
and the stability are presented.Comment: 18 pages, 14 figure
Signalized and Unsignalized Road Traffic Intersection Models: A Comprehensive Benchmark Analysis
Road traffic flow models allow the development and testing of intelligent transportation solutions. Macroscopic intersection models are especially relevant for the simulation of large traffic networks. In this article, we study four first-order signalized and unsignalized intersection models. The two unsignalized approaches are the first-in-first-out (FIFO) model (roundabout-type intersection) and an optimal non-FIFO model (highway-type intersection). The optimal control operates upstream for the first signalized intersection model. It occurs downstream for the second signalized model. All four models satisfy the expected physical constraints of vehicle conservation, traffic demand, and assignment. The models are minimal and allow a comprehensible analysis of the results. We determine mathematical relationships between the intersection models and empirically analyze the performances using Monte Carlo simulations. The numerical simulations assume random demand, supply, and assignment. Besides average performances, the approach accounts for the flow ranges of variation. A benchmark analysis compares the intersection models. We observe that the optimal signalized intersection models overcome the performances of the FIFO model in congested states. They may even reach the performances of the idealistic non-FIFO model. Further applications for the four intersection models are discussed
Noise-Induced Stop-and-Go Dynamics in Pedestrian Single-file Motion
Stop-and-go waves are a common feature of vehicular traffic and have also been observed in pedestrian flows. Usually the occurrence of this self-organization phenomenon is related to an inertia mechanism. It requires fine-tuning of the parameters and is described by instability and phase transitions. Here, we present a novel explanation for stop-and-go waves in pedestrian dynamics based on stochastic effects. By introducing coloured noise in a stable microscopic inertia-free (i.e. first order) model, pedestrian stop-and-go behaviour can be described realistically without requirement of instability and phase transition. We compare simulation results to empirical pedestrian trajectories and discuss plausible values for the model’s parameters
Investigation of Voronoi diagram based Direction Choices Using Uni- and Bi-directional Trajectory Data
In a crowd, individuals make different motion choices such as "moving to
destination", "following another pedestrian", and "making a detour". For the
sake of convenience, the three direction choices are respectively called
destination direction, following direction and detour direction in this paper.
Here, it is found that the featured direction choices could be inspired by the
shape characteristics of Voronoi diagram. To be specific, in the Voronoi cell
of a pedestrian, the direction to a Voronoi node is regarded as a potential
"detour" direction, and the direction perpendicular to a Voronoi link is
regarded as a potential "following" direction. A pedestrian generally owns
several alternative Voronoi nodes and Voronoi links in a Voronoi cell, and the
optimal detour and following direction are determined by considering related
factors such as deviation. Plus the destination direction which is directly
pointing to the destination, the three basic direction choices are defined in a
Voronoi cell. In order to evaluate the Voronoi diagram based basic directions,
the empirical trajectory data in both uni- and bi-directional flow experiments
are extracted. A time series method considering the step frequency is used to
reduce the original trajectories' swaying phenomena which might disturb the
recognition of actual forward direction. The deviations between the empirical
velocity direction and the basic directions are investigated, and each velocity
direction is classified into a basic direction or regarded as an inexplicable
direction according to the deviations. The analysis results show that each
basic direction could be a potential direction choice for a pedestrian. The
combination of the three basic directions could cover most empirical velocity
direction choices in both uni- and bi-directional flow experiments.Comment: 10pages, 12 figure
Stability analysis of a stochastic port-Hamiltonian car-following model
Port-Hamiltonian systems are pertinent representations of many non-linear
physical systems. In this article, we formulate and analyse a general class of
stochastic car-following models having a systematic port-Hamiltonian structure.
The model class is a generalisation of classical car-following approaches,
including the Optimal Velocity model by Bando et al. (1995), the Full Velocity
Difference model by Jiang et al. (2001), and recent stochastic following models
based on the Ornstein-Uhlenbeck process. In contrast to traditional models for
which the interaction is totally asymmetric (i.e., depending only on the speed
and distance to the predecessor), the port-Hamiltonian car-following model also
depends on the distance to the follower. We determine the exact stability
condition of the finite system with vehicles and periodic boundaries. The
stable system is ergodic with a unique Gaussian invariant measure. Other model
properties are studied using numerical simulation. It turns out that the
Hamiltonian component improves the flow stability, reducing the total energy in
the system. Furthermore, it prevents the problematic formation of stop-and-go
waves with periodic dynamics, even in the presence of stochastic perturbations.Comment: 23 pages, 4 figure
Convergence of a misanthrope process to the entropy solution of 1D problems
International audienceWe prove the convergence, in some strong sense, of a Markov process called "a misanthrope process" to the entropy weak solution of a one-dimensional scalar nonlinear hyperbolic equation. Such a process may be used for the simulation of traffic flows. The convergence proof relies on the uniqueness of entropy Young measure solutions to the nonlinear hyperbolic equation, which holds for both the bounded and the unbounded cases. In the unbounded case, we also prove an error estimate. Finally, numerical results show how this convergence result may be understood in practical cases
- …