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Explore modeling approaches in traffic flow and related transport problems using cellular automata and nonequilibrium physics. Learn about applications in highway traffic, traffic on ant trails, pedestrian dynamics, and intracellular transport. Study how asymmetric simple exclusion processes and car-following models simulate traffic behavior. Discover the impact of boundary conditions on traffic flow and the emergence of jam formations. Delve into cellular automata models and their discrete dynamics in traffic simulations, providing insights into vehicle interactions and traffic patterns.
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Modelling of Traffic Flow and Related Transport Problems Andreas Schadschneider Institute for Theoretical Physics University of Cologne Germany www.thp.uni-koeln.de/~as www.thp.uni-koeln.de/ant-traffic
Overview General topic: Application of nonequilibrium physics to various transport processes/phenomena • Highway traffic • Traffic on ant trails • Pedestrian dynamics • Intracellular transport Topics: • basic phenomena • modelling approaches • theoretical analysis • physics Aspects:
Introduction • Traffic = macroscopic system of interacting particles • Nonequilibrium physics: • Driven systems far from equilibrium • Various approaches: • hydrodynamic • gas-kinetic • car-following • cellular automata
Cellular Automata Cellular automata (CA) are discrete in space time state variable (e.g. occupancy, velocity) Advantage: very efficient implementation for large-scale computer simulations often: stochastic dynamics
Asymmetric Simple Exclusion Process q q • Asymmetric Simple Exclusion Process (ASEP): • directed motion • exclusion (1 particle per site) • stochastic dynamics Caricature of traffic: “Mother of all traffic models” For applications: different modifications necessary
Update scheme In which order are the sites or particles updated ? • random-sequential: site or particles are picked randomly at each step (= standard update for ASEP; continuous time dynamics) • parallel (synchronous): allparticles or sites are updated at the same time • ordered-sequential: update in a fixed order (e.g. from left to right) • shuffled: at each timestep all particles are updated in random order
ASEP ASEP = “Ising” model of nonequilibrium physics • simple • exactly solvable • many applications • Applications: • Protein synthesis • Surface growth • Traffic • Boundary induced phase transitions
Periodic boundary conditions fundamental diagram • no or short-range correlations
Influence of Boundary Conditions • open boundaries: density not conserved! exactly solvable for all parameter values! Derrida, Evans, Hakim, Pasquier 1993 Schütz, Domany 1993
Phase Diagram Maximal current phase J=J(p) Low-density phase J=J(p,) 2.order transitions 1.order transition High-density phase J=J(p,)
Highway Traffic
Spontaneous Jam Formation space time jam velocity: -15 km/h (universal!) Phantom jams, start-stop-waves interesting collective phenomena
Fundamental Diagram Relation: current (flow) $ density free flow congested flow (jams) more detailed features?
Cellular Automata Models • Discrete in • Space • Time • State variables (velocity) velocity dynamics: Nagel – Schreckenberg (1992)
Update Rules • Rules (Nagel, Schreckenberg 1992) • Acceleration: vj! min (vj + 1, vmax) • Braking: vj! min ( vj , dj) • Randomization: vj ! vj – 1 (with probability p) • Motion: xj! xj + vj (dj = # empty cells in front of car j)
Example Configuration at time t: Acceleration (vmax = 2): Braking: Randomization (p = 1/3): Motion (state at time t+1):
Interpretation of the Rules • Acceleration: Drivers want to move as fast as possible (or allowed) • Braking: no accidents • Randomization: • a) overreactions at braking • b) delayed acceleration • c) psychological effects (fluctuations in driving) • d) road conditions • 4) Driving: Motion of cars
Realistic Parameter Values • Standard choice: vmax=5, p=0.5 • Free velocity: 120 km/h 4.5 cells/timestep • Space discretization: 1 cell 7.5 m • 1 timestep 1 sec • Reasonable: order of reaction time (smallest relevant timescale)
Discrete vs. Continuum Models • Simulation of continuum models: • Discretisation (x, t) of space and time necessary • Accurate results: x, t ! 0 • Cellular automata: discreteness already taken into account in definition of model
Simulation of NaSch Model Simulation • Reproduces structure of traffic on highways • - Fundamental diagram • - Spontaneous jam formation • Minimal model: all 4 rules are needed • Order of rules important • Simple as traffic model, but rather complex as stochastic model
Analytical Methods 1 1 2 2 3 3 4 4 d1=1 d2=0 d3=2 2 3 1 4 • Mean-field: P(1,…,L)¼ P(1) P(L) • Cluster approximation: • P(1,…,L)¼ P(1,2) P(2,3) P(L) • Car-oriented mean-field (COMF): • P(d1,…,dL)¼ P(d1) P(dL) with dj = headway of car j (gap to car ahead)
Fundamental Diagram (vmax=1) vmax=1: NaSch = ASEP with parallel dynamics • Particle-hole symmetry • Mean-field theory underestimates flow: particle-hole attraction
Paradisical States (AS/Schreckenberg 1998) • ASEP with random-sequential update: no correlations (mean-field exact!) • ASEP with parallel update: correlations, mean-field not exact, but 2-cluster approximation and COMF • Origin of correlations? (can not be reached by dynamics!) Garden of Eden state (GoE) in reduced configuration space without GoE states: Mean-field exact! => correlations in parallel update due to GoE states not true forvmax>1 !!!
Fundamental Diagram (vmax>1) • No particle-hole symmetry
Phase Transition? • Are free-flow and jammed branch in the NaSch model separated by a phase transition? No! Only crossover!! Exception: deterministic limit (p=0) 2nd order transition at
Modelling of Traffic Flow and Related Transport Problems Lecture II Andreas Schadschneider Institute for Theoretical Physics University of Cologne Germany www.thp.uni-koeln.de/~as www.thp.uni-koeln.de/ant-traffic
Nagel-Schreckenberg Model velocity • Acceleration • Braking • Randomization • Motion vmax=1: NaSch = ASEP with parallel dynamics vmax>1: realistic behaviour (spontaneous jams, fundamental diagram)
Fundamental Diagram II more detailed features? high-flow states free flow congested flow (jams)
Metastable States • Empirical results: Existence of • metastable high-flow states • hysteresis
VDR Model • Modified NaSch model: • VDR model (velocity-dependent randomization) • Step 0: determine randomization p=p(v(t)) • p0 if v = 0 • p(v) = with p0 > p • p if v > 0 • Slow-to-start rule Simulation
Jam Structure NaSch model VDR model VDR-model: phase separation Jam stabilized by Jout < Jmax
Fundamental Diagram III Even more detailed features? non-unique flow-density relation
Synchronized Flow • New phase of traffic flow (Kerner – Rehborn 1996) • States of • high density and relatively large flow • velocity smaller than in free flow • small variance of velocity (bunching) • similar velocities on different lanes (synchronization) • time series of flow looks „irregular“ • no functional relation between flow and density • typically observed close to ramps
3-Phase Theory free flow (wide) jams synchronized traffic 3 phases
Cross-Correlations Cross-correlation function: ccJ() /h (t) J(t+) i - h(t) ihJ(t+)i free flow,jam: synchronized traffic: free flow jam synchro Objective criterion for classification of traffic phases
Time Headway synchronized traffic • free flow density-dependent many short headways!!!
Brake-light model • Nagel-Schreckenberg model • acceleration (up to maximal velocity) • braking (avoidance of accidents) • randomization (“dawdle”) • motion • plus: • slow-to-start rule • velocity anticipation • brake lights • interaction horizon • smaller cells • … Brake-light model (Knospe-Santen-Schadschneider -Schreckenberg 2000) good agreement with single-vehicle data
Fundamental Diagram IV • Empirical results • Monte Carlo simulations
Highway Networks • Autobahn network • of North-Rhine-Westfalia • (18 million inhabitants) • length: 2500 km • 67 intersections (“nodes”) • 830 on-/off-ramps • (“sources/sinks”)
Data Collection • online-data from • 3500 inductive loops • only main highways are densely equipped with detectors • almost no data directly • from on-/off-ramps
Online Simulation • State of full network through simulation based on available data • “interpolation” based on online data: online simulation (available at www.autobahn.nrw.de) classification into 4 states
Traffic Forecasting forecast for 14:56 actual state at 14:54 state at 13:51
2-Lane Traffic • Rules for lane changes (symmetrical or asymmetrical) • Incentive Criterion: Situation on other lane is better • Safety Criterion: Avoid accidents due to lane changes
Defects Locally increased randomization: pdef > p shock Ramps have similar effect! Defect position
City Traffic • BML model: only crossings • Even timesteps: " move • Odd timesteps: ! move • Motion deterministic ! 2 phases: Low densities: hvi > 0 High densities: hvi = 0 Phase transition due to gridlocks
More realistic model • Combination of BML and NaSch models • Influence of signal periods, • Signal strategy (red wave etc), … Chowdhury, Schadschneider 1999
Summary • Cellular automata are able to reproduce many aspects of • highway traffic (despite their simplicity): • Spontaneous jam formation • Metastability, hysteresis • Existence of 3 phases (novel correlations) • Simulations of networks faster than real-time possible • Online simulation • Forecasting