LIVES: a new habitat modelling technique for predicting the distribution of species’ occurrences using presence-only data based on limiting factor theory

被引:0
作者
Jin Li
David W. Hilbert
机构
[1] Tropical Forest Research Centre,CSIRO Sustainable Ecosystems & CRC for Tropical Rainforest Ecology & Management
[2] Marine & Coastal Environment,undefined
[3] PMD,undefined
[4] Geoscience Australia,undefined
来源
Biodiversity and Conservation | 2008年 / 17卷
关键词
Climate change; Habitat suitability; Predictive model; Spatial distribution; Species distribution;
D O I
暂无
中图分类号
学科分类号
摘要
Predictive modelling techniques using presence-only data have attracted increasing attention because they can provide information on species distributions and their potential habitat for conservation and ecosystem management. However, the existing predictive modelling techniques have several limitations. Here, we propose a novel predictive modelling technique, Limiting Variable and Environmental Suitability (LIVES), for predicting the distributions and potential habitats of species using presence-only data. It is based on limiting factor theory, which postulates that the occurrence of a species is only determined by the factor that most limits its distribution. LIVES predicts the suitability of a candidate grid cell for a species in terms of limiting environmental factor. It also predicts the most limiting factor or the potential limiting factor at the grid cell. The environmental factors can be climatic, geological, biological and any other relevant environmental factors, whether quantitative or qualitative. The predicted habitats consist of the current distribution of the species and the potentially suitable areas for the species where there is currently no record of occurrence. We also compare several properties of LIVES and other predictive modelling techniques. On the basis of 1,000 simulations, the average predictions of LIVES are more accurate than the two other commonly used modelling techniques (BIOCLIM and DOMAIN) for presence-only data.
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页码:3079 / 3095
页数:16
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