State space analysis for model plausibility validation in multi-agent system simulation of urban policies
Authored by M A Piera, R Buil, E Ginters
Date Published: 2016
DOI: 10.1057/jos.2014.42
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Abstract
Multi-agent system (MAS) models have been increasingly applied to the
simulation of complex phenomena in different areas, providing successful
and credible results. However, model validation is still an open
problem. The complexity of the stochastic interaction between agents, together with a large number of parameters, can make validation
procedures intractable. Particular validation difficulties appear in
social science using MAS models when agents are defined as spatial
objects to computationally represent the behaviour of individuals to
study emergent patterns arising from micro-level interactions. This
paper considers some of the difficulties in establishing the
verification and validation of agent-based models (ABMs) and proposes
the use of coloured Petri net (CPN) formalism to specify agent behaviour
to check whether the model looks and behaves logically. Model
plausibility is used to express the conformity of the model with a
priori knowledge about the process. A proof-of-concept is presented by
means of a case study to test the robustness of emergent patterns
through sensitivity analyses and can be used for model calibration. The
proposed methodology has been applied in the European Future Policy
Modelling project (www.fupol.eu) to create trust and increase the
credibility of the ABMs developed to foster e-participation in the
design of urban policies by means of simulation techniques.
Tags
Agent-based models
Management
Optimization
Verification
Methodology