Risk assessment models for invasive species: uncertainty in rankings from multi-criteria analysis

被引:0
作者
Kurt K. Benke
Jackie L. Steel
John E. Weiss
机构
[1] Department of Primary Industries (Victoria),
[2] Department of Primary Industries (Victoria),undefined
来源
Biological Invasions | 2011年 / 13卷
关键词
Invasive species; Monte Carlo simulation; Multi-criteria decision analysis; Uncertainty analysis; Weed risk assessment;
D O I
暂无
中图分类号
学科分类号
摘要
Uncertainty analysis is described in the context of risk assessment for invasive plant species, where assessment criteria can be weighted using a weight-assignment methodology based on multi-criteria decision analysis (MCDA). A description is given of the essential elements of the Victorian Weed Risk Assessment (VWRA) model that ranks weed species according to scores determined from the synthesis of expert opinion and published literature. The VWRA model uses MCDA to produce a priority ranking of risk for pest plant species by compiling complex data into components with similar themes, arranging these components into the appropriate hierarchical order and then assigning criterion weights to each component. The aim of the study was to investigate the uncertainty and statistical significance in the ranking of the invasive species produced by the model. The methodology used for the uncertainty analysis is described and employed in the evaluation of the two categories of interest, represented by the statistical factors of impact and invasiveness. The criteria contributing to the uncertainty in the predicted ranking were found to be mainly in the impact category, rather than the invasiveness category, and related to agricultural factors such as vector status, reductions in yield quantity and increasing harvest cost.
引用
收藏
页码:239 / 253
页数:14
相关论文
共 100 条
  • [1] Arbel A(1989)Approximate articulation of preference and priority derivation Eur J Oper Res 43 317-326
  • [2] Benke KK(2008)Quantitative microbial risk assessment: uncertainty and measures of central tendency for skewed distributions Stoch Environ Res Risk Assess 22 533-539
  • [3] Hamilton AJ(2007)Uncertainty analysis and risk assessment in the management of environmental resources Australas J Environ Manag 14 16-22
  • [4] Benke KK(2008)Parameter uncertainty, sensitivity analysis and prediction error in a water-balance hydrological model Math Comput Model 47 1134-1149
  • [5] Hamilton AJ(2009)Predicting establishment success for alien reptiles and amphibians: a role for climate matching Biol Invasions 11 713-724
  • [6] Lowell KE(1997)Simulation techniques for the sensitivity analysis of multi-criteria decision models Eur J Oper Res 103 531-546
  • [7] Benke KK(2006)Application and evaluation of classification trees for screening unwanted plants Austral Ecol 31 647-655
  • [8] Lowell KE(2006)Quantifying uncertainty in predictions of invasiveness Biol Invasions 8 277-286
  • [9] Hamilton AJ(2010)Predicting plant invaders in the Mediterranean through a weed risk assessment system Biol Invasions 12 463-476
  • [10] Bomford M(2008)Consistent accuracy of the Australian weed risk assessment system across varied geographies Divers Distrib 14 234-242