Dealing with uncertainty in agent-based models for short-term predictions

Agent-based models (ABMs) are gaining traction as one of the most powerful modelling tools within the social sciences. They are particularly suited to simulating complex systems. Despite many methodological advances within ABM, one of the major drawbacks is their inability to incorporate real-time d...

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Main Authors: Le-Minh Kieu, Nicolas Malleson, Alison Heppenstall
Format: Article
Language:English
Published: The Royal Society 2020-01-01
Series:Royal Society Open Science
Subjects:
Online Access:https://royalsocietypublishing.org/doi/pdf/10.1098/rsos.191074
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spelling doaj-109b277b1aef41659b2b105e3f8972ad2020-11-25T03:52:37ZengThe Royal SocietyRoyal Society Open Science2054-57032020-01-017110.1098/rsos.191074191074Dealing with uncertainty in agent-based models for short-term predictionsLe-Minh KieuNicolas MallesonAlison HeppenstallAgent-based models (ABMs) are gaining traction as one of the most powerful modelling tools within the social sciences. They are particularly suited to simulating complex systems. Despite many methodological advances within ABM, one of the major drawbacks is their inability to incorporate real-time data to make accurate short-term predictions. This paper presents an approach that allows ABMs to be dynamically optimized. Through a combination of parameter calibration and data assimilation (DA), the accuracy of model-based predictions using ABM in real time is increased. We use the exemplar of a bus route system to explore these methods. The bus route ABMs developed in this research are examples of ABMs that can be dynamically optimized by a combination of parameter calibration and DA. The proposed model and framework is a novel and transferable approach that can be used in any passenger information system, or in an intelligent transport systems to provide forecasts of bus locations and arrival times.https://royalsocietypublishing.org/doi/pdf/10.1098/rsos.191074agent-based modellingdata assimilationmodel calibrationcomplex systems
collection DOAJ
language English
format Article
sources DOAJ
author Le-Minh Kieu
Nicolas Malleson
Alison Heppenstall
spellingShingle Le-Minh Kieu
Nicolas Malleson
Alison Heppenstall
Dealing with uncertainty in agent-based models for short-term predictions
Royal Society Open Science
agent-based modelling
data assimilation
model calibration
complex systems
author_facet Le-Minh Kieu
Nicolas Malleson
Alison Heppenstall
author_sort Le-Minh Kieu
title Dealing with uncertainty in agent-based models for short-term predictions
title_short Dealing with uncertainty in agent-based models for short-term predictions
title_full Dealing with uncertainty in agent-based models for short-term predictions
title_fullStr Dealing with uncertainty in agent-based models for short-term predictions
title_full_unstemmed Dealing with uncertainty in agent-based models for short-term predictions
title_sort dealing with uncertainty in agent-based models for short-term predictions
publisher The Royal Society
series Royal Society Open Science
issn 2054-5703
publishDate 2020-01-01
description Agent-based models (ABMs) are gaining traction as one of the most powerful modelling tools within the social sciences. They are particularly suited to simulating complex systems. Despite many methodological advances within ABM, one of the major drawbacks is their inability to incorporate real-time data to make accurate short-term predictions. This paper presents an approach that allows ABMs to be dynamically optimized. Through a combination of parameter calibration and data assimilation (DA), the accuracy of model-based predictions using ABM in real time is increased. We use the exemplar of a bus route system to explore these methods. The bus route ABMs developed in this research are examples of ABMs that can be dynamically optimized by a combination of parameter calibration and DA. The proposed model and framework is a novel and transferable approach that can be used in any passenger information system, or in an intelligent transport systems to provide forecasts of bus locations and arrival times.
topic agent-based modelling
data assimilation
model calibration
complex systems
url https://royalsocietypublishing.org/doi/pdf/10.1098/rsos.191074
work_keys_str_mv AT leminhkieu dealingwithuncertaintyinagentbasedmodelsforshorttermpredictions
AT nicolasmalleson dealingwithuncertaintyinagentbasedmodelsforshorttermpredictions
AT alisonheppenstall dealingwithuncertaintyinagentbasedmodelsforshorttermpredictions
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