Towards the Right Ordering of the Sequence of Models for the Evolution of a Population Using Agent-Based Simulation
Authored by Morgane Dumont, Johan Barthelemy, Nam Huynh, Timoteo Carletti
Date Published: 2018
DOI: 10.18564/jasss.3790
Sponsors:
National Fund for Scientific Research of Belgium (F.R.S.-FNRS)
Platforms:
No platforms listed
Model Documentation:
Other Narrative
Model Code URLs:
Model code not found
Abstract
Agent based modelling is nowadays widely used in transport and the
social science. Forecasting population evolution and analysing the
impact of hypothetical policies are often the main goal of these
developments. Such models are based on sub-models defining the
interactions of agents either with other agents or with their
environment. Sometimes, several models represent phenomena arising at
the same time in the real life. Hence, the question of the order in
which these sub-models need to be applied is very relevant for
simulation outcomes. This paper aims to analyse and quantify the impact
of the change in the order of sub-models on an evolving population
modelled using TransMob. This software simulates the evolution of the
population of a metropolitan area in South East of Sydney (Australia).
It includes five principal models: ageing, death, birth, marriage and
divorce. Each possible order implies slightly different results mainly
driven by how agents' ageing is defined with respect to death.
Furthermore, we present a calendar-based approach for the ordering that
decreases the variability of final populations. Finally, guidelines are
provided proposing general advices and recommendations for researchers
designing discrete time agent-based models.
Tags
Agent-based modelling
Microsimulation
robustness
Ordering of models
Population
evolution