Towards the algorithmic detection of archetypal structures in system dynamics
Journal
System Dynamics Review
ISSN
0883-7066
ISSN-Digital
1099-1727
Type
journal article
Date Issued
2015-01-01
Author(s)
Abstract
Traditionally, model analysis follows qualitative, heuristic, and trial-and-error-driven approaches for testing dynamic hypotheses. Only recently have other methods like loop dominance Analysis or control theory been proposed for this purpose. We advocate complementing established qualitative heuristics with a quantitative method for model analysis. To that end, we propose two algorithms
to detect Wolstenholme's four generic problem archetypes within models. We tested these algorithms using the Maintenance and World Dynamics models. The approach presented in this paper is a first important step towards the identification of system archetypes in system Dynamics and contributes to improving model analysis and diagnosis. Furthermore, our Approach goes beyond diagnosis to eliciting solution archetypes, which foster the design and implementation of effective policies.
to detect Wolstenholme's four generic problem archetypes within models. We tested these algorithms using the Maintenance and World Dynamics models. The approach presented in this paper is a first important step towards the identification of system archetypes in system Dynamics and contributes to improving model analysis and diagnosis. Furthermore, our Approach goes beyond diagnosis to eliciting solution archetypes, which foster the design and implementation of effective policies.
Language
English
Keywords
Archetypes
Automatic Detection: System Dynamics
HSG Classification
not classified
Refereed
No
Publisher
Wiley
Publisher place
Chichester
Volume
31
Number
1-2
Start page
66
End page
85
Pages
20
Subject(s)
Division(s)
Eprints ID
244910
File(s)![Thumbnail Image]()
Loading...
Name
254_Algorithmic Detection Archetypes_Schoenenberger_et_al-2015-SDR.pdf
Size
1.69 MB
Format
Adobe PDF
Checksum (MD5)
4f5848f33eb091e85313db2e1e78d3b7