Unsuspected implications arising from assumptions in simulations: insights from recasting a forest growth model in system dynamics

Background Familiarity with a simulation platform can seduce modellers into accepting untested assumptions for convenience of implementation. These assumptions may have consequences greater than commonly suspected, and it is important that modellers remain mindful of assumptions and remain diligent...

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Main Author: Jerome K Vanclay
Format: Article
Language:English
Published: KeAi Communications Co., Ltd. 2014-02-01
Series:Forest Ecosystems
Online Access:http://www.forestecosyst.com/content/1/1/7
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author Jerome K Vanclay
author_facet Jerome K Vanclay
author_sort Jerome K Vanclay
collection DOAJ
description Background Familiarity with a simulation platform can seduce modellers into accepting untested assumptions for convenience of implementation. These assumptions may have consequences greater than commonly suspected, and it is important that modellers remain mindful of assumptions and remain diligent with sensitivity testing. Methods Familiarity with a technique can lead to complacency, and alternative approaches and software can reveal untested assumptions. Visual modelling environments based on system dynamics may help to make critical assumptions more evident by offering an accessible visual overview and empowering a focus on representational rather than computational efficiency. This capacity is illustrated using a cohort-based forest growth model developed for mixed species forest. Results The alternative model implementation revealed that untested assumptions in the original model could have substantial influence on simulated outcomes. Conclusions An important implication is that modellers should remain conscious of all assumptions, consider alternative implementations that reveal assumptions more clearly, and conduct sensitivity tests to inform decisions.
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spelling doaj.art-f278cc4b3ab64eac9e9d38e691f147902023-01-03T04:10:18ZengKeAi Communications Co., Ltd.Forest Ecosystems2095-63552197-56202014-02-01110.1186/2197-5620-1-7Unsuspected implications arising from assumptions in simulations: insights from recasting a forest growth model in system dynamicsJerome K Vanclay0Southern Cross University, PO Box 157, Lismore, NSW 2480, Australia Background Familiarity with a simulation platform can seduce modellers into accepting untested assumptions for convenience of implementation. These assumptions may have consequences greater than commonly suspected, and it is important that modellers remain mindful of assumptions and remain diligent with sensitivity testing. Methods Familiarity with a technique can lead to complacency, and alternative approaches and software can reveal untested assumptions. Visual modelling environments based on system dynamics may help to make critical assumptions more evident by offering an accessible visual overview and empowering a focus on representational rather than computational efficiency. This capacity is illustrated using a cohort-based forest growth model developed for mixed species forest. Results The alternative model implementation revealed that untested assumptions in the original model could have substantial influence on simulated outcomes. Conclusions An important implication is that modellers should remain conscious of all assumptions, consider alternative implementations that reveal assumptions more clearly, and conduct sensitivity tests to inform decisions.http://www.forestecosyst.com/content/1/1/7
spellingShingle Jerome K Vanclay
Unsuspected implications arising from assumptions in simulations: insights from recasting a forest growth model in system dynamics
Forest Ecosystems
title Unsuspected implications arising from assumptions in simulations: insights from recasting a forest growth model in system dynamics
title_full Unsuspected implications arising from assumptions in simulations: insights from recasting a forest growth model in system dynamics
title_fullStr Unsuspected implications arising from assumptions in simulations: insights from recasting a forest growth model in system dynamics
title_full_unstemmed Unsuspected implications arising from assumptions in simulations: insights from recasting a forest growth model in system dynamics
title_short Unsuspected implications arising from assumptions in simulations: insights from recasting a forest growth model in system dynamics
title_sort unsuspected implications arising from assumptions in simulations insights from recasting a forest growth model in system dynamics
url http://www.forestecosyst.com/content/1/1/7
work_keys_str_mv AT jeromekvanclay unsuspectedimplicationsarisingfromassumptionsinsimulationsinsightsfromrecastingaforestgrowthmodelinsystemdynamics