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Using global sensitivity analysis of demographic models for ecological impact assessment

Research output: Contribution to journalArticlepeer-review

15 Scopus citations

Abstract

Population viability analysis (PVA) is widely used to assess population-level impacts of environmental changes on species. When combined with sensitivity analysis, PVA yields insights into the effects of parameter and model structure uncertainty. This helps researchers prioritize efforts for further data collection so that model improvements are efficient and helps managers prioritize conservation and management actions. Usually, sensitivity is analyzed by varying one input parameter at a time and observing the influence that variation has over model outcomes. This approach does not account for interactions among parameters. Global sensitivity analysis (GSA) overcomes this limitation by varying several model inputs simultaneously. Then, regression techniques allow measuring the importance of input-parameter uncertainties. In many conservation applications, the goal of demographic modeling is to assess how different scenarios of impact or management cause changes in a population. This is challenging because the uncertainty of input-parameter values can be confounded with the effect of impacts and management actions. We developed a GSA method that separates model outcome uncertainty resulting from parameter uncertainty from that resulting from projected ecological impacts or simulated management actions, effectively separating the 2 main questions that sensitivity analysis asks. We applied this method to assess the effects of predicted sea-level rise on Snowy Plover (Charadrius nivosus). A relatively small number of replicate models (approximately 100) resulted in consistent measures of variable importance when not trying to separate the effects of ecological impacts from parameter uncertainty. However, many more replicate models (approximately 500) were required to separate these effects. These differences are important to consider when using demographic models to estimate ecological impacts of management actions.

Original languageEnglish
Pages (from-to)116-125
Number of pages10
JournalConservation Biology
Volume31
Issue number1
DOIs
StatePublished - Feb 1 2017

Keywords

  • AVP
  • PVA
  • Snowy Plover
  • análisis de sensibilidad global
  • chorlitejo blanco
  • demographic model
  • global sensitivity analysis
  • impact assessment
  • modelo de población estructurado en escenarios
  • modelo demográfico
  • stage-structured population model
  • valoración del impacto

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