
Towards reproducible agent-based simulations of the transportation system
Sebastian Hörl
27 May 2025
Habilitation à diriger des recherches


Habilitation à diriger les recherches
Title in French
Vers des simulations multi-agent reproductibles des systèmes de transport
Reporting jury members (rapporteurs)
- Cyril FONLUPT, HDR, Professur des universités, Université du Littoral - Côte d'Opale
- Chirine GHEDIRA, HDR, Professure des universités, IEA Lyon School of Management
- Francisco PEREIRA, Professor, Danish Technical University
Examining jury members (examinateurs)
- Flavien BALBO, HDR, Professeur des universités,ENS des Mines de Saint-Etienne
- Stéphane GALLAND, HDR, Professur des universités, Université de Technologie de Belfort Montbéliard
- Monica MENENDEZ, Professor, New York Université at Abu Dhabi
- Antonio SCIARETTA, HDR, IFP energies nouvelles
- Mahdi ZARGAYOUNA, HDR, Directeur de recherche, Université Gustave Eiffel
Date
27 May 2025



The street in 1900



http://www.loc.gov/pictures/item/2016800172/
The street today



https://commons.wikimedia.org/wiki/File:Atlanta_75.85.jpg
The street of tomorrow?



Julius Bär / Farner
Macroscopic transport modeling





Classic four-step models
- Travel demand generated in (large) zones
- Focus on large flows between these zones
- For the morning or evening commute
- For limited user groups
- Question: Where to add capacity?
Macroscopic transport modeling





Classic four-step models
- Travel demand generated in (large) zones
- Focus on large flows between these zones
- For the morning or evening commute
- For limited user groups
- Question: Where to add capacity?

Macroscopic transport modeling





Classic four-step models
- Travel demand generated in (large) zones
- Focus on large flows between these zones
- For the morning or evening commute
- For limited user groups
- Question: Where to add capacity?


Agent-based transport modeling



0:00 - 8:00
08:30 - 17:00
17:30 - 0:00
0:00 - 9:00
10:00 - 17:30
17:45 - 21:00
22:00 - 0:00
- Individual travellers with daily activities
- Moving from one activity to another
- Simulation of the entire day
- Highly detailed interaction between travellers and services
- Multitude of (design) questions can be answered
Agent-based transport modeling



How to set up agent-based transport simulations?
* with reproducible results
* in a replicable way
Short biography



Bachelor of Science
Systems theory and control (2010 - 2014)
Master of Science
Complex Adaptive Systems (2014 - 2016)
Doctor of Sciences (PhD)
Transport planning (2016 - 2020)
Senior researcher
IRT SystemX (since 2020)







Research stay (2014)
Research stay (2016)
Research stay (2019)
Smooth approximation of two-dimensional G-Code trajectories in time-optimal CNC machining
Implementation of an autonomous taxi service in a multi-modal traffic simulation using MATSim
Dynamic demand estimation for Automated Mobility on Demand
Technical and scientific lead for our activities on transport modeling

Invited researcher (since 2022)
Short biography: Production



Publications
- 18 articles in peer-reviewed international journals
Transportation Research: Part A, Transportation Research: Part C, ...
- 50 contributions to international peer-reviewed conferences
TRB, ABMTRANS, hEART, ...
Projets
- Participation in 25 industrial and public research projects since 2017, including five Horizon projects
- Various national and international industry collaborations (Volkswagen, SNCF, ...)
Short biography: Activities



Open source
- Active contributor to the open-source project MATSim (since 2016)
- Co-author of the (now defunct) open-source simulation platform AMoDeus (2018)
- Main contributor and maintainer of the eqasim framework (since 2019)
Community activities
- Board member of the MATSim Association (since 2023)
- Program committee ABMTRANS (since 2022)
- Scientific committee TRISTAN (since 2022)
- Review for various journals (Transportation Research PartA/C/D, Transportation, ...)
Evaluation activities
- Examinator in three PhD juries (ETH Zurich, UGE)
- Member of four PhD progress committees (CSI)
Teaching
- Annual course at Université Gustave Eiffel (ongoing)
- Courses on agent-based modeling at ETH Zurich (until 2020)
- Various individual contributions (UGE, ETH Zurich, ENPC, PSE, CentraleSupélec, ...)
Short biography: Supervision



Tarek CHOUAKI
Co-supervision of doctoral students
Simulation of on-demand services using reinforcement learning
2020 - 2023
CentraleSupélec / IRT SystemX, with Jakob PUCHINGER
6 conférence contribution
Benoît Matet
Use of mobility traces from phone data in population synthesis
2022 - 2024
Univeristé Gustave Eiffel, with Latifa OUKHELLOU & Etienne CÔME
one conférence contribution, one journal article
Jean-Giono ZEHOUNKPE
Benchmarking of population synthesis approaches
since 2024
Université Gustave Eiffel, with Latifa OUKHELLOU
one conférence contribution
Ali NAMAAN
Simulation an design of novel regional mobility services
since 2025
Université Gustave Eiffel, with Negin ALISOLTANI & Mahdi ZARGAYOUNA
one conférence contribution
Master-level supervision
- Ten supervised Master theses
of which two with articles in peer-reviewed journals, one conference contribution
- Five supervised Master internship projects
of which two with international conference contributions
Transport modeling chain



Raw data
Synthetic population
Agent-based transport simulation
Use cases
Results
Transport modeling chain



Raw data
Synthetic population
Agent-based transport simulation
Use cases
Results
Synthetic populations: Introduction



Definition
- Representation digital version of the real population of a territory
- Persons (single-level) or households with persons (two-level) population
- Households and persons with individual attributes
- Persons with individual activity chains
0:00 - 8:00
08:30 - 17:00
0:00 - 9:00
10:00 - 17:30
17:45 - 21:00
22:00 - 0:00
17:30 - 0:00



Synthetic populations: Pipeline
Pipeline
- Households and persons
- Primary activity locations
- Activity chains
- Secondary activity locations
RP
BAN
BD-TOPO
MOBPRO
MOBETUD
SIRENE
BPE
ENTD
Data
Goals
- Generate individual households and persons
- Choose a distinct place of residence

French population census
Household ID | Person ID | Zone | Age | Sex | ... | Weight |
---|---|---|---|---|---|---|
512 | 1 | 75013 | 35 | f | ... | 3.2 |
512 | 2 | 75013 | 32 | m | ... | 3.2 |
516 | 1 | 75019 | 42 | m | ... | 4.1 |
... | ... | ... | ... | ... | ... |
Upsampling of persons using Truncate-Replicate-Sample (TRS)



Synthetic populations: Pipeline
Pipeline
- Households and persons
- Primary activity locations
- Activity chains
- Secondary activity locations
RP
BAN
BD-TOPO
MOBPRO
MOBETUD
SIRENE
BPE
ENTD
Data
Goals
- Generate individual households and persons
- Choose a distinct place of residence


Sampling by number of housing units per building
French bulding database
French address database



Synthetic populations: Pipeline
Pipeline
- Households and persons
- Primary activity locations
- Activity chains
- Secondary activity locations
Data
Goal
- Choose work places and education locations
RP
BAN
BD-TOPO
MOBPRO
MOBETUD
SIRENE
BPE
ENTD

French work
commuting matrix



Synthetic populations: Pipeline
Pipeline
- Households and persons
- Primary activity locations
- Activity chains
- Secondary activity locations
Data
Goal
- Choose work places and education locations
RP
BAN
BD-TOPO
MOBPRO
MOBETUD
SIRENE
BPE
ENTD

French work
commuting matrix
National enterprise
database
with facilities by number of employees



Synthetic populations: Pipeline
Pipeline
- Households and persons
- Primary activity locations
- Activity chains
- Secondary activity locations
Data
Goal
- Choose work places and education locations
RP
BAN
BD-TOPO
MOBPRO
MOBETUD
SIRENE
BPE
ENTD
French education
commuting matrix
Permanent facility
database
with education facilities and attendants




Synthetic populations: Pipeline
Pipeline
- Households and persons
- Primary activity locations
- Activity chains
- Secondary activity locations
Data
Goal
- Generate activity sequences (type, start and end time) for each person

RP
BAN
BD-TOPO
MOBPRO
MOBETUD
SIRENE
BPE
ENTD
Statistical Matching

National Household Travel Survey 2008
(Local Household Travel Surveys)



Synthetic populations: Pipeline
Pipeline
- Households and persons
- Primary activity locations
- Activity chains
- Secondary activity locations
Data
Goals
- Choose locations of secondary (shopping, leisure, ...) activities

RP
BAN
BD-TOPO
MOBPRO
MOBETUD
SIRENE
BPE
ENTD
Hörl, S., Axhausen, K.W., 2021. Relaxation–discretization algorithm for spatially constrained secondary location assignment. Transportmetrica A: Transport Science 1–20.



Synthetic populations: Pipeline
Pipeline
- Households and persons
- Primary activity locations
- Activity chains
- Secondary activity locations
Data
Output
- Three main tables: households, persons, activities
- Supplementary tables: commutes, trips, ...
RP
BAN
BD-TOPO
MOBPRO
MOBETUD
SIRENE
BPE
ENTD
household_id | income | number_of_cars | ... |
---|---|---|---|
1024 | 85,000 | 2 | ... |
household_id | person_id | age | sex | employed | ... |
---|---|---|---|---|---|
1024 | 1 | 34 | f | true | ... |
1024 | 2 | 36 | m | true | ... |
household_id | person_id | activity_id | start_time | end_time | type | location | ... |
---|---|---|---|---|---|---|---|
1024 | 1 | 1 | 00:00 | 08:00 | home | (x, y) | ... |
1024 | 1 | 2 | 09:00 | 18:00 | work | (x, y) | ... |
1024 | 1 | 3 | 19:00 | 24:00 | home | (x, y) | ... |



Synthetic populations: Pipeline
Pipeline
- Households and persons
- Primary activity locations
- Activity chains
- Secondary activity locations
Data
Output
- Three main tables: households, persons, activities
- Supplementary tables: commutes, trips, ...
RP
BAN
BD-TOPO
MOBPRO
MOBETUD
SIRENE
BPE
ENTD



Place of residence
Commuting trips
Hourly work activities




Synthetic populations: Pipeline
Pipeline
- Households and persons
- Primary activity locations
- Activity chains
- Secondary activity locations
Data
RP
BAN
BD-TOPO
MOBPRO
MOBETUD
SIRENE
BPE
ENTD
Validation
- Comparison with census data, HTS data, ...




Synthetic populations: Pipeline
Pipeline
- Households and persons
- Primary activity locations
- Activity chains
- Secondary activity locations
Data
Validation
- Comparison with census data, HTS data, ...
RP
BAN
BD-TOPO
MOBPRO
MOBETUD
SIRENE
BPE
ENTD



Synthetic populations: Pipeline
RP
BAN
BD-TOPO
MOBPRO
MOBETUD
SIRENE
BPE
ENTD
Open data
Open source

+
=
Replicable research in agent-based transport simulation
eqasim-org/ile-de-france




Synthetic populations: Pipeline
RP
BAN
BD-TOPO
MOBPRO
MOBETUD
SIRENE
BPE
ENTD
Open data
Open source

+
=














Lille
Paris
Strasbourg
Lyon
Toulouse
Bordeaux
Nantes
Rennes

Contributors
Users
Synthetic populations: Community
Synthetic populations: Adaptations



Screenshot Sao Paolo
Copy & paste of the code base
Difficulty of maintenance
São Paulo
Almost same open data available as in France
California
Substantial modifiations required
Switzerland
Not based on open data
(for now)

Paper published in
Regional Studies, Regional Science (2020)

Paper presented at the Annual Meeting of the Transportation Research Board (2021)
Work in progress at ETH Zurich
Synthetic populations: Adaptations



Cairo: Extreme case, very few data available and not in the right format
Idea: Use data to generate "fake" input to the French pipeline and reuse the code!

Gall, T., Vallet, F., Reyes Madrigal, L.M., Hörl, S., Abdin, A., Chouaki, T., Puchinger, J., 2023. Sustainable Urban Mobility Futures, Sustainable Urban Futures. Springer Nature Switzerland, Cham.
Synthetic populations: Adaptations



Cairo: Extreme case, very few data available and not in the right format
Idea: Use data to generate "fake" input to the French pipeline and reuse the code!
Munich: Set up a robust and replicable pipeline with data replacement

Hörl, S., Burianne, A., Natterer, E., Engelhardt, R., Müller, J. (2025) Towards a replicable synthetic population and agent-based transport model for Bavaria, paper to be presented at the 23rd International Conference on Practical applications of Agents and Multi-Agent Systems (PAAMS 2025), June 2025, Lille, France.
Synthetic populations: Adaptations



Cairo: Extreme case, very few data available and not in the right format
Idea: Use data to generate "fake" input to the French pipeline and reuse the code!
Munich: Set up a robust and replicable pipeline with data replacement


Hörl, S., Burianne, A., Natterer, E., Engelhardt, R., Müller, J. (2025) Towards a replicable synthetic population and agent-based transport model for Bavaria, paper to be presented at the 23rd International Conference on Practical applications of Agents and Multi-Agent Systems (PAAMS 2025), June 2025, Lille, France.
Synthetic populations: Further topics



Logistics: Using statistics on parcel deliveries by socio-demographic attributes to generate a synthetic parcel demand data set

Hörl, S., Puchinger, J., 2023. From synthetic population to parcel demand: A modeling pipeline and case study for last-mile deliveries in Lyon. Transportation Research Procedia, TRA Lisbon 2022 Conference Proceedings Transport Research Arena (TRA Lisbon 2022),14th-17th November 2022, Lisboa, Portugal 72, 1707–1714.

Synthetic populations: Further topics



Personas: Linking synthetic populations with concepts from design science to generate future population scenarios

Gall, T., Hörl, S., Vallet, F., Yannou, B., 2023. Integrating future trends and uncertainties in urban mobility design via data-driven personas and scenarios. European Transport Research Review 15, 45.
Synthetic populations: Further topics



Charging: Deriving the electric charging demand based on person characteristics


TERRITORIA price 2024
with Paris Saclay
Synthetic populations: Visualization





TERRITORIA price 2024
with Paris Saclay

Synthetic populations: Outlook



Improvements of models along the synthesis chain
- In each step, models can be improved by more intelligent approaches from machine learning, deep learning, ...
- How can we benchmark them against each other?
Uncertainty analysis
- What impact does the replacement of one model have on the final output?
- Which steps cause the highest degree of uncertainty? Which ones should be updated with priority?
Context-sensitive population synthesis
- How can we make algorithms along the chain context-sensitive (infrastructure, access to work places, nature, ...)
Primary locations
Activity chains
Secondary locations
Persons
Transport modeling chain



Raw data
Synthetic population
Agent-based transport simulation
Use cases
Results
Transport modeling chain



Raw data
Synthetic population
Agent-based transport simulation
Use cases
Results
Agent-based simulation: Introduction



GTFS
OpenStreetMap
Synthetic demand
+
Driving car
Metro / Train
Work activity starts
Agent-based simulation: Introduction



Synthetic demand
Agent-based simulation: Introduction



Mobility simulation
Synthetic demand
Daily mobility plans
Agent-based simulation: Introduction



Decision-making
Mobility simulation
Synthetic demand
Experienced travel times, crowding, ...
Daily mobility plans
Agent-based simulation: Introduction



Decision-making
Mobility simulation
Synthetic demand
Experienced travel times, crowding, ...
Daily mobility plans
Agent-based simulation: Introduction



Decision-making
Mobility simulation
Synthetic demand
Experienced travel times, crowding, ...
Daily mobility plans
Update

Agent-based simulation: Introduction



Decision-making
Mobility simulation
Synthetic demand

- Maintained by TU Berlin, ETH Zurich, (IRT SystemX)
- 50+ research users world-wide, SBB, Volkswagen, ...
- Contributor since ~2016
Mode shares
Traffic patterns
Emissions
Noise
Agent-based simulation:




Multi-modal approach
Mobility simulation

Queue-based network simulation
- Car drivers (and passengers)
- Public transport
- Bicycle
- Walking
Agent-based simulation:




Co-evolutionary algorithm
Decision-making
Scoring
Home
Home
Work
Home
Time
Score
Mobility simulation
Multi-modal approach

Queue-based network simulation
- Car drivers (and passengers)
- Public transport
- Bicycle
- Walking
Agent-based simulation:




Co-evolutionary algorithm
Decision-making
Scoring
Home
Home
Work
Home
Time
Score
-2
Mobility simulation
Multi-modal approach

Queue-based network simulation
- Car drivers (and passengers)
- Public transport
- Bicycle
- Walking
Agent-based simulation:




Co-evolutionary algorithm
Decision-making
Scoring
Home
Home
Work
Home
Time
Score
Mutation
-2
Mobility simulation
Multi-modal approach

Queue-based network simulation
- Car drivers (and passengers)
- Public transport
- Bicycle
- Walking
Agent-based simulation:




Co-evolutionary algorithm
Decision-making
Scoring
Home
Home
Work
Home
Time
Score
Mutation
-2
Mobility simulation
Multi-modal approach

Queue-based network simulation
- Car drivers (and passengers)
- Public transport
- Bicycle
- Walking
Agent-based simulation:




Co-evolutionary algorithm
Decision-making
Scoring
Home
Home
Work
Home
Time
Score
Mutation
-3
Mobility simulation
Multi-modal approach

Queue-based network simulation
- Car drivers (and passengers)
- Public transport
- Bicycle
- Walking
Agent-based simulation:




Co-evolutionary algorithm
Decision-making
Scoring
Home
Home
Work
Home
Time
Score
Mutation
-3
Selection
/
-2
?
?
Mobility simulation
Multi-modal approach

Queue-based network simulation
- Car drivers (and passengers)
- Public transport
- Bicycle
- Walking
Agent-based simulation:



Scoring-based decision-making
-
Very flexible (departure time, ...)
-
"Stupid" decisions necessary
- Tedious calibration of parameters
Mobility simulation
Mutation / Selection
Simulation stabilized?

Agent-based simulation: Discrete choice





Felix Becker, Institute for Transport Planning and Systems, ETH Zurich.
Agent-based simulation: Discrete choice integration



Mobility simulation
Mutation / Selection
Simulation stabilized?
Scoring-based decision-making
-
Very flexible (departure time, ...)
-
"Stupid" decisions necessary
- Tedious calibration of parameters
Agent-based simulation: Discrete choice integration



Discrete choice-based decision-making
- Estimation (computational effort; correctness)
-
Only mode choice in the current form
- Realistic decisions with high probability
- "Use the model as is" is advantage in calibration
Mobility simulation
Mutation / Selection
Mobility simulation
Mode choice
Estimation
Simulation stabilized?
Simulation stabilized?
Estimation correct?
Scoring-based decision-making
-
Very flexible (departure time, ...)
-
"Stupid" decisions necessary
- Tedious calibration of parameters
Agent-based simulation: eqasim-java




eqasim-java: A streamlined set-up of MATSim for our standardized synthetic populations making use of discrete choice models
Agent-based simulation: Calibration



Parameters
- Capacity factor by OSM category
- Speed factor by OSM category
- Specific factors for Paris
- Alterantive-specific choice constants
Objectives
- Global mode shares
- Mode shares by Euclidean distance
- Travel time distributions
- Point-to-point travel times

Work in progress



Goal: Publish a well-calibrated openly accessible simulation of Île-de-France
Agent-based simulation: Further topics



Resource constraints: Synchronization over limited resources like
- vehicles in a household / peer group
- parking spots
- charging stations
Acceleration of the simulations
- Simplification using volume-delay-functions
- Reduction by intelligently cutting the study area
Hörl, S., Sobieraj, J., Axer, S., Rewald, H., 2023. Resource-constrained replanning in MATSim applied to the simulation of peer-to-peer car sharing services. Procedia Computer Science, The 14th International Conference on Ambient Systems, Networks and Technologies Networks (ANT 2022) and The 6th International Conference on Emerging Data and Industry 4.0 (EDI40) 220, 698–703.
Chouaki, T., Hörl, S., 2025. A method for efficiently assessing the impact of local mobility services in large-scale agent-based simulations, in: The 104th Transportation Research Board Annual Meeting (TRB 2025). Transportation Research Board, Washington D.C, United States.
Agent-based simulation: Outlook



Surrogate modeling
- Wrapping heavy, computational expensive agent-based transport simulations with surrogate models
- Quick approximation of their outcomes to enable evaluation of large scenario analyses
Automatic calibration
- Further explore how to streamline automatic calibration procedures for our simulations
- Pursue the use of intermediate information across iterations in simulation
Modularity
- Software engineering challenge
- Accomodate combinations of simulation modules (bike-sharing, on-demand mobility, road-pricing, ...)
Natterer, E., Engelhardt, R., Hörl, S., Bogenberger, K., 2025. Machine Learning Surrogates for Optimizing Transportation Policies with Agent-Based Models, in: 12th Triennial Symposium on Transportation Analysis (TRISTAN XII). Okinawa, Japan.
Hörl, S., 2022. Exploring accelerated evolutionary parameter search for iterative large-scale transport simulations in a new calibration testbed, in: hEART 2022. Presented at the hEART 2022.
Transport modeling chain



Raw data
Synthetic population
Agent-based transport simulation
Use cases
Results
Transport modeling chain



Raw data
Synthetic population
Agent-based transport simulation
Use cases
Results



Automated taxi
Pickup
Dropoff
Use cases: On-demand mobility
- An operator centrally controls a fleet of vehicles
- Each vehicle is represented as an agent that receives instructions in each time step
-
Customer agents sent requests to be transported
- Objectives: maximize operator revenue, minimize empty distance, ...



Automated taxi
Pickup
Dropoff
Use cases: On-demand mobility
- An operator centrally controls a fleet of vehicles
- Each vehicle is represented as an agent that receives instructions in each time step
-
Customer agents sent requests to be transported
- Objectives: maximize operator revenue, minimize empty distance, ...

R1



Use cases: On-demand mobility
- Different dispatching strategies provide different outcomes in terms of empty distance, revenue, and wait times

amodeus-science/amodeus

AI Driving Olympics challenge at NeurIPS 2018



Use cases: On-demand mobility
Cost model
Discrete choice model
Mobility simulation
Estimation
Fare per trip and km
Wait time
Outcomes
Passenger distance, empty distance
- The problem becomes even more interesting when customer agents have the choice to use the service or not (dynamic demand)




Use cases: On-demand mobility

- Provides an understanding of a mobility service that doesn't exist today
- Shows pathways for policy and regulation




Use cases: On-demand mobility



On-demand mobility: Integration with public transport

- How to combine on-demand mobility systems with public transport?
- Interesting context: Grand Paris Express



On-demand mobility: Integration with public transport

- How to combine on-demand mobility systems with public transport?
- Interesting context: Grand Paris Express
- Trying to maximize the complementarity between mass transit and on-demand transit
Chouaki, T., Hörl, S., Puchinger, J., 2023. Towards Reproducible Simulations of the Grand Paris Express and On-Demand Feeder Services, in: 102nd Annual Meeting of the Transportation Research Board (TRB 2023). Washington D.C, United States.



On-demand mobility: Extensions
- How to combine on-demand mobility systems with public transport?
- How to take into account rejection rates in discrete choice models?
- Various other publications ...
Chouaki, T., Hörl, S., Puchinger, J., 2023. Towards Reproducible Simulations of the Grand Paris Express and On-Demand Feeder Services, in: 102nd Annual Meeting of the Transportation Research Board (TRB 2023). Washington D.C, United States.
Chouaki, T., Hörl, S., Puchinger, J., 2023. Control-based integration of rejection rates into endogenous demand ride-pooling simulations, in: 8th International Conference on Models and Technologies for Intelligent Transportation Systems (MT-ITS 2023). IEEE, Nice, France, pp. 1–6.
On-demand mobility: Outlook



Algorithmic fairness
- Standard algorithms aim at minimizing wait times, travel times and maximizing revenue
- Do standard algorithms reject mobility-impaired person with longer interactions or larger groups more frequently than others?
-
Yes, they do!
- Can we mitigate the problem?
- Opens a whole new section of research in fleet management
Service design
- Iteratively optimizing fleet composition, operating area, ...
- Using Reinforcement Learning approaches
- Automatic generation of training scenarios across France (urban, rural, ...)
- Mapping out the potential (and optimal configuration) of on-demand mobility across France
- Evolution into decision-support tools
Chouaki, T., Hörl, S., 2024. Comparative assessment of fairness in on-demand fleet management algorithms, in: The 12th Symposium of the European Association for Research in Transportation (hEART). Espoo, Finland.
Raw data
Synthetic population
Agent-based transport simulation
Use cases
Results
Transport modeling chain



Raw data
Synthetic population
Agent-based transport simulation
Use cases
Results
Replicability?



Raw data
Synthetic population
Agent-based transport simulation
Use cases
Results
Replicability?



Yes, eqasim-synpop for France and a handful of other cases.
Working on generalizing the methodology.
Raw data
Synthetic population
Agent-based transport simulation
Use cases
Results
Replicability?



Yes, eqasim-synpop for France and a handful of other cases.
Working on generalizing the methodology.
Partly, eqasim-java is accessible. Goal to publish a calibrated fully replicable simulation for Île-de-France in the coming months.
Raw data
Synthetic population
Agent-based transport simulation
Use cases
Results
Replicability?



Yes, eqasim-synpop for France and a handful of other cases.
Working on generalizing the methodology.
Partly, eqasim-java is accessible. Goal to publish a calibrated fully replicable simulation for Île-de-France in the coming months.
Using the new baseline simulation, our goal is to publish upcoming studies in a fully replicable way.
Larger scientific context



Replicability and robustness
- Agent-based models required to assess modern technologies and policies
- Limited confidence due to the lack of standardized evaluation and validation mechanisms
- First step is to provide full transparency and replicability
Connecting agent-based models and surrogate approaches
- Not to replace agent-based models (ability to explore counter-factual cases)
- Allow exploration of larger variety of use cases and policy / service optimziation
- Increase practical planning relevance of agent-based models

Thank you!
sebastian.horl@irt-systemx.fr


Icons throughout the presentation: https://fontawesome.com
Tarek, Jakob, Tjark, Arthur, Yann and + at IRT SystemX
... my former colleagues at ETH Zurich (and especially Milos)
... our collaborators at Volkswagen
... and everybody who has contributed in one way or another!
... Latifa and Mahdi at Université Gustave Eiffel

Agent-based simulation: Calibration



Decision-making
Mobility simulation
Synthetic demand
Mode shares
Agent-based simulation: Calibration



Decision-making
Mobility simulation
Synthetic demand
Mode shares
Objective calculator
Reference data
Agent-based simulation: Calibration



Decision-making
Mobility simulation
Synthetic demand
Optimization algorithm
Behavioral
parameters
Mode shares
Objective calculator
Reference data
Agent-based simulation: Calibration



Decision-making
Mobility simulation
Synthetic demand
Optimization algorithm
Behavioral
parameters
Mode shares
Objective calculator
Reference data
SPSA, CMA-ES, ...
Agent-based simulation: Calibration



Decision-making
Mobility simulation
Synthetic demand
Optimization algorithm
Network
parameters
Travel times
Objective calculator
Reference data
SPSA, CMA-ES, ...
Agent-based simulation: Calibration



Decision-making
Mobility simulation
Synthetic demand
Optimization algorithm
Network
parameters
Behavioral
parameters
Objective calculator
Towards reproducible agent-based simulations of the transportation system
By Sebastian Hörl
Towards reproducible agent-based simulations of the transportation system
Habilitation à diriger des recherches, 27 May 2025
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