Sven Maerivoet
Katholieke Universiteit Leuven
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Featured researches published by Sven Maerivoet.
Physics Reports | 2005
Sven Maerivoet; Bart De Moor
Abstract In this paper, we give an elaborate and understandable review of traffic cellular automata (TCA) models, which are a class of computationally efficient microscopic traffic flow models. TCA models arise from the physics discipline of statistical mechanics, having the goal of reproducing the correct macroscopic behaviour based on a minimal description of microscopic interactions. After giving an overview of cellular automata (CA) models, their background and physical setup, we introduce the mathematical notations, show how to perform measurements on a TCA models lattice of cells, as well as how to convert these quantities into real-world units and vice versa. The majority of this paper then relays an extensive account of the behavioural aspects of several TCA models encountered in literature. Already, several reviews of TCA models exist, but none of them consider all the models exclusively from the behavioural point of view. In this respect, our overview fills this void, as it focusses on the behaviour of the TCA models, by means of time–space and phase-space diagrams, and histograms showing the distributions of vehicles’ speeds, space, and time gaps. In the report, we subsequently give a concise overview of TCA models that are employed in a multi-lane setting, and some of the TCA models used to describe city traffic as a two-dimensional grid of cells, or as a road network with explicitly modelled intersections. The final part of the paper illustrates some of the more common analytical approximations to single-cell TCA models.
European Physical Journal B | 2004
Sven Maerivoet; B. De Moor
Abstract.Within the class of stochastic cellular automata models of traffic flows, we look at the velocity dependent randomization variant (VDR-TCA) whose parameters take on a specific set of extreme values. These initial conditions lead us to the discovery of the emergence of four distinct phases. Studying the transitions between these phases, allows us to establish a rigorous classification based on their tempo-spatial behavioral characteristics. As a result from the system’s complex dynamics, its flow-density relation exhibits a non-concave region in which forward propagating density waves are encountered. All four phases furthermore share the common property that moving vehicles can never increase their speed once the system has settled into an equilibrium.
arXiv: Statistical Mechanics | 2005
Sven Maerivoet; S Logghe; B. De Moor; B. Immers
In this paper we describe a relation between a microscopic stochastic traffic cellular automaton model (i.e., the STCA) and the macroscopic first-order continuum model (i.e., the LWR model). The innovative aspect is that we explicitly incorporate the STCAs stochasticity in the construction of the fundamental diagram used by the LWR model. We apply our methodology to a small case study, giving a comparison of both models, based on simulations, numerical, and analytical calculations of their tempo-spatial behavior.
Archive | 2007
Sven Maerivoet; S Logghe
arXiv: Physics and Society | 2005
Sven Maerivoet; Bart De Moor
arXiv: Physics and Society | 2008
Sven Maerivoet; Bart De Moor
arXiv: Cellular Automata and Lattice Gases | 2008
Sven Maerivoet; Bart De Moor
Proc. of the 10th World Congress and Exhibition of Intelligent Transport Systems and Services (ITSS03) | 2003
Sven Maerivoet; Bart De Moor
Archive | 2006
Departement Elektrotechniek; Sven Maerivoet; Bart De Moor
Reflets et perspectives de la vie économique | 2017
Eef Delhaye; Griet De Ceuster; Filip Vanhove; Sven Maerivoet