Exploring accelerated evolutionary parameter search for iterative large-scale transport simulations in a new calibration testbed
Sebastian Hörl
3 June 2022
hEART 2022
Challenge
Reproducibility: Are simulation results replicable by other researchers?
Relevancy: Are the results corresponding well to reality?
Reuse: Can we easily adapt and advance the modeling system?
Modeling pipeline
Synthetic population
Population census (RP)
Income data (FiLoSoFi)
Commuting data (RP-MOB)
Household travel survey (EDGT)
Enterprise census (SIRENE)
OpenStreetMap
GTFS (SYTRAL / SNCF)
Address database (BD-TOPO)
Synthetic population
Open
Data
Open
Software
+
=
Reproducible research
Population census (RP)
Income data (FiLoSoFi)
Commuting data (RP-MOB)
Enterprise census (SIRENE)
OpenStreetMap
GTFS (SYTRAL / SNCF)
Address database (BD-TOPO)
National HTS (ENTD)
EDGT
Synthetic population
Open
Data
Open
Software
+
=
Reproducible research
Population census (RP)
Income data (FiLoSoFi)
Commuting data (RP-MOB)
Enterprise census (SIRENE)
OpenStreetMap
GTFS (SYTRAL / SNCF)
Address database (BD-TOPO)
National HTS (ENTD)
EDGT
Community
Modeling pipeline
Modeling pipeline
Simulation
Synthetic demand
Simulation
Mobility simulation
Synthetic demand
Simulation
Decision-making
10:00 - 17:30
17:45 - 21:00
22:00 - 0:00
Mobility simulation
Synthetic demand
Simulation
Decision-making
Mobility simulation
Synthetic demand
Simulation
Decision-making
Mobility simulation
Synthetic demand
Simulation
Decision-making
Mobility simulation
Synthetic demand
Simulation
Decision-making
Mobility simulation
Synthetic demand
Simulation
Decision-making
Mobility simulation
Analysis
Synthetic demand
Calibration problem
Calibration loop
Calibration loop
Stopping criterion
Example
Example
Framework
Framework
Gradient approximation
Evolutionary search
Accelleration
Others
Coming up
Framework
Gradient approximation
Evolutionary search
Accelleration
Others
Coming up
Testing opdyts
Flötteröd, G. (2017) A search acceleration method for optimization problems with
transport simulation constraints, Transportation Research Part B: Methodological, 98, 239-260
Sample N
candidates
Testing opdyts
Flötteröd, G. (2017) A search acceleration method for optimization problems with
transport simulation constraints, Transportation Research Part B: Methodological, 98, 239-260
Sample N
candidates
Run for T
iterations
Testing opdyts
Flötteröd, G. (2017) A search acceleration method for optimization problems with
transport simulation constraints, Transportation Research Part B: Methodological, 98, 239-260
Sample N
candidates
Run for T
iterations
Advance for T
iterations based on transient performance
Testing opdyts
Flötteröd, G. (2017) A search acceleration method for optimization problems with
transport simulation constraints, Transportation Research Part B: Methodological, 98, 239-260
Sample N
candidates
Run for T
iterations
Advance for T
iterations based on transient performance
Until one candidate has converged
Testing opdyts
Flötteröd, G. (2017) A search acceleration method for optimization problems with
transport simulation constraints, Transportation Research Part B: Methodological, 98, 239-260
Sample N
candidates
Run for T
iterations
Advance for T
iterations based on transient performance
Until one candidate has converged
Testing opdyts
CMA-(1,1)-ES
Opdyts
Candidates
Kriging
Neighborhood
Testing opdyts
Outlook: Testing objectives
Outlook: Testing combinations
Objectives
Algorithms
Metrics
x
x
Outlook: Simulations
Outlook: Simulations
Outlook: Simulations
Questions?