Towards Effective Modeling of the Traffic Dynamics Yang Bo (A*STAR, - - PowerPoint PPT Presentation

towards effective modeling of the traffic dynamics
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Towards Effective Modeling of the Traffic Dynamics Yang Bo (A*STAR, - - PowerPoint PPT Presentation

NTU Complexity Community Sharing Towards Effective Modeling of the Traffic Dynamics Yang Bo (A*STAR, IHPC) yangbo@ihpc.a-star.edu.sg www.a-star.edu.sg/ihpc Motivations Understanding Traffic is of huge practical significance USD


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Towards Effective Modeling of the Traffic Dynamics

Yang Bo (A*STAR, IHPC) yangbo@ihpc.a-star.edu.sg www.a-star.edu.sg/ihpc NTU Complexity Community Sharing

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Motivations

  • Understanding Traffic is of huge practical

significance

  • USD 100 Billion in USA, 1% of GDP in EU
  • Traffic dynamics is theoretically very

interesting
 


Boris Kerner, 2002, 2009 Dirk Helbing, 2009

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Traffic Theories

  • empirical observations


Kerner et.al. 2002

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Traffic Theories

  • empirical observations


Kerner et.al. 1998, 2002

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SLIDE 5

Traffic Theories

  • theoretical modeling (microscopic models)
  • no symmetry
  • non-identical components
  • stochasticity and time dependence
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Traffic Theories

  • theoretical modeling
  • two-phase models

∆vn = vn+1 − vn A One-Dimensional Driven System

n n+1 n-1

{ {

nearest neighbor, anisotropic non-linear interactions in a dissipative media

hn−1 hn

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SLIDE 7

Traffic Theories

  • theoretical modeling
  • two-phase models
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Traffic Theories

  • theoretical modeling
  • two-phase models

an = a0 (V (hn) − vn + g (∆vn))

g (∆vn) =    λΘ (∆vn) ∆vn λ∆vn λ1Θ (∆vn) ∆vn + λ2Θ (−∆vn) ∆vn

Bando et.al 1997 Helbing et.al 2000

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Traffic Theories

  • theoretical modeling
  • two-phase models

100 200 300 15 20 25

Car index Headway hn

100 200 300 10 20 30

Car index Headway hn

20 30

Headway hn

hmax

2 4

dhn dt

→ n0 ←

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Traffic Theories

  • theoretical modeling
  • Three-phase models

Kerner et.al 2001

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Traffic Theories

  • theoretical modeling
  • Three-phase models
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Traffic Theories

  • theoretical modeling
  • How do we properly characterize the differences

between two traffic models?

  • Is there a standard way of extending an existing

traffic model or construction of a new traffic model?

  • Is there a standard way in selecting the best

traffic model based on the experimental data?

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SLIDE 13

Traffic Theories

  • theoretical modeling
  • master model from empirical

data and renormalization

ensemble average identical drivers, time independent, homogeneous traffic lanes

simplest possible approximation of ¯

f

stochasticity, inhomogeneity, time dependence, vehicle/ driver diversity

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Traffic Theories

  • theoretical modeling
  • a universal mathematical structure

f0 (hn, 0, vn) = 0

the “ground state” of the traffic dynamics

an = f0 (hn, ∆vn, vn) f0 (hn, 0, Vop) = 0

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Traffic Theories

  • theoretical modeling
  • a universal mathematical structure

an = X

p,q

κp,q (hn) (vn − Vop (hn))p ∆vq

n

κp,q (hn) = ∂p+qf ∂pvn∂q∆vn

  • vn=Vop(hn)

∆vn=0

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Traffic Theories

  • theoretical modeling
  • a universal mathematical structure

an = a 1 − ✓vn v0 ◆δ − ✓h∗ (vn, ∆vn) hn ◆2!

20 40 60 80 100

  • 1.2
  • 1.0
  • 0.8
  • 0.6
  • 0.4
  • 0.2

0.0 Headway h (m) Model Parameters

λ10 λ20 λ30 λ40 λ01 λ02 λ11 λ12 λ21 λ22

an =

p=4,q=2

X

p=1,q=0

λp,q (vn − Vop (hn))p ∆vq

n

an = λ10 (hn) (vn − Vop) + λ01 (hn) ∆vn

Yang Bo et.al arXiv. 1504.02186

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Traffic Theories

  • theoretical modeling
  • a universal mathematical structure

aΔv=0,h

a) v

aΔv=0,h

b) v

aΔv=0,h

c) v

aΔv=0,h

d) v

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Traffic Theories

  • theoretical modeling
  • a universal mathematical structure
  • All microscopic traffic models are defined by the
  • ptimal velocity (OV) and a set of expansion

coefficients (EC).

  • the two-phase and three-phase traffic models can

be unified by a “common language”.

  • The simplification of OV and ECs can be

experimentally verified.

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Traffic Theories

  • theoretical modeling
  • Tuning of a simple model

The best model should be as simple as possible (but not simpler) an = X

p,q

κp,q (hn) (vn − Vop)p ∆vq

n

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Traffic Theories

  • theoretical modeling
  • Tuning of a simple model
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Traffic Theories

  • theoretical modeling
  • Tuning of a simple model

an = κ (Vop (hn) − vn) + g (∆vn)

g (∆vn) = λ1∆vn + λ2|∆vn|

hmax, hmin, n0

emergent quantities from non-linear interactions

Yang Bo et.al arXiv. 1504.01256

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Traffic Theories

  • theoretical modeling
  • Numerical simulations
  • 27.5

28.5 29.5 30.5 5 10 15 20 25 30 35 Average headway (m) ∆h (m)

  • Single perturbation

Random perturbation

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Traffic Theories

  • theoretical modeling
  • Numerical simulations

Yang Bo et.al arXiv. 1504.01256

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Traffic Theories

  • theoretical modeling
  • Numerical simulations
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Traffic Theories

  • theoretical modeling
  • Numerical simulations
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Traffic Theories

  • Practical applications
  • A good model for human drivers
  • An optimized model for driverless car
  • r adaptive cruise control
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Traffic Theories

  • Practical applications
  • short term
  • Understanding the conditions for the
  • nset of traffic congestions
  • recommendation of traffic routing,

designing of highway systems (speed limit, number of lanes, on-ramp/off- ramp)

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Traffic Theories

  • Practical applications
  • medium term
  • optimizing mixed traffics
  • ptimized

driving behavior normal (un-

  • ptimized)

driving behavior 10% 20%

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Traffic Theories

  • Practical applications
  • medium term
  • optimizing mixed traffics
  • ptimized

driving behavior normal (un-

  • ptimized)

driving behavior 10% 20%

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SLIDE 30

Traffic Theories

  • Practical applications
  • medium term
  • optimizing mixed traffics
  • ptimized

driving behavior normal (un-

  • ptimized)

driving behavior 10% 20%

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SLIDE 31

Traffic Theories

  • Practical applications
  • medium term
  • optimizing mixed traffics
  • ptimized

driving behavior normal (un-

  • ptimized)

driving behavior 10% 20%

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SLIDE 32

Traffic Theories

  • Practical applications
  • medium term
  • optimizing mixed traffics
  • ptimized

driving behavior normal (un-

  • ptimized)

driving behavior 10% 20%

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SLIDE 33

Traffic Theories

  • Practical applications
  • medium term
  • un-signalized intersection traffic control

deceleration zone synchronization zone caution zone

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Thank you very much for your attention

Collaborators: Yoon Jiwei, John Pang, Christopher Monterola (IHPC) Xihua Xu (NUS)