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Best Response Model for Evacuees

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Title: Best Response Model for Evacuees


1
Best Response Model for Evacuees Exit Selection
  • Simo Heliövaara Harri Ehtamo
  • Systems Analysis laboratory, Helsinki University
    of Technology
  • simo.heliovaara_at_hut.fi
  • Timo Korhonen Simo Hostikka
  • VTT, Technical Research Centre of Finland

2
Our Research
  • NIST Fire Dynamics Simulator (FDS) ,
    state-of-the-art fire simulation
  • Helbing et al Physical model for crowd dynamics
  • Our research Agent-based models for evacuation
    behavior
  • Result FDSEvac -module

3
Exit Selection Background
  • The agents need to have intelligence to react
    to a changing environment (e.g., congestion on
    exit routes, fire, smoke)
  • Previous approaches
  • Heuristic adaptive algorithms (Gwynne et. al
    1999)
  • Centralized allocation of agents to exits (Lo et.
    al 2006)

4
The Exit Selection Game
  • The goal of each agent is to select the exit that
    minimizes its individual evacuation time
    consisting of walking time and queuing time.
  • Because the agents queuing times depend on the
    other agents strategies (target exits), this is
    a game model.

5
Best-Response and Nash Equilibrium
  • In Best-Response Dynamics agents choose the
    strategy that would give them the highest pay-off
    on the next round
  • The Nash equilibrium
    satisfies

6
Nash Equilibrium of the game
  • In the paper we prove that the exit selection
    game has a unique Nash equilibrium (NE) in pure
    strategies
  • The result is interesting. General existence
    theorems only imply equilibrium in mixed
    strategies

7
Decentralized Algorithms
  • We show that decentralized best-response
    algorithms converge to the NE fast
  • In the computation, the agents need not know each
    others payoff functions but only their current
    actions
  • Note the NE is not an equilibrium in the sense
    of dynamic optimization. Rather, it is
    equilibrium of myopic agents.

8
Comparing Algorithms
  • PUA (Parallel Update Algorithm) All agents
    update simultaneously
  • RRA (Round Robin Algorithm) Agents update in a
    fixed order
  • Theoretical upper bound for convergence is N
    iteration rounds with both algorithms

9
Computing the Nash Equilibrium - PUA
  • Example. The red exit is three times as wide as
    the blue
  • 300 agents
  • Random initial distribution
  • PUA algorithm is used

i 1
i 2
i 3
i 10 equilibrium
10
Computing the Nash equilibrium - RRA
  • The same situation with the RRA algorithm
  • The convergence is faster

i 5 equilibrium
i 1
i 2
i 3
11
Online Updating
  • As the evacuation proceeds the NE may change
  • Agents are set to update their best responses
    frequently

12
Further development of the model
  • Evacuation time is not the only factor affecting
    exit selection
  • Fire conditions (smokiness, temperature, etc.)
  • Familiarity of exit routes
  • Visibility of exits

13
Discussion
  • An exit selection game
  • A pure Nash equilibrium
  • Best response algorithms converge fast
  • Future research
  • Interaction between agents, e.g., herding,
    leader/follower agents, swarming, etc.
  • Spatial interaction and polymorphic population
    patterns
  • Evolutionary game theory

14
Literature
  • H. Ehtamo, S. Heliövaara, T. Korhonen, and S.
    Hostikka, Game Theoretic Best Response Dynamics
    for Evacuees' Exit Selection, Accepted for
    publication in Advances in Complex Systems
  • T. Korhonen, S. Hostikka, S. Heliövaara, H.
    Ehtamo, and K. Matikainen. Integration of an
    Agent Based Evacuation Simulation and the
    State-of-the-Art Fire Simulation. Proceedings of
    the 7th Asia-Oceania Symposium on Fire Science
    Technology. Hong Kong, 20 - 22 Sept. 2007.
  • K. McGrattan, B. Klein, S. Hostikka, and J.
    Floyd. Fire Dynamics Simulator (Version 5) User's
    Guide. National Institute of Standards and
    Technology, 2008.

http//www.sal.hut.fi/Publications http//www.vtt.
fi/proj/fdsevac/ simo.heliovaara_at_hut.fi
15
Thank You!
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