Institute for Wildlife Studies, 55 Ericson Court, Suite 1, Arcata, California 95518, USA.
Ecol Appl. 2012 Jul;22(5):1701-10. doi: 10.1890/11-1048.1.
Persistence of species in fragmented landscapes depends on dispersal among suitable breeding sites, and dispersal is often influenced by the "matrix" habitats that lie between breeding sites. However, measuring effects of different matrix habitats on movement and incorporating those differences into spatially explicit models to predict dispersal is costly in terms of time and financial resources. Hence a key question for conservation managers is: Do more costly, complex movement models yield more accurate dispersal predictions? We compared the abilities of a range of movement models, from simple to complex, to predict the dispersal of an endangered butterfly, the Saint Francis' satyr (Neonympha mitchellii francisci). The value of more complex models differed depending on how value was assessed. Although the most complex model, based on detailed movement behaviors, best predicted observed dispersal rates, it was only slightly better than the simplest model, which was based solely on distance between sites. Consequently, a parsimony approach using information criteria favors the simplest model we examined. However, when we applied the models to a larger landscape that included proposed habitat restoration sites, in which the composition of the matrix was different than the matrix surrounding extant breeding sites, the simplest model failed to identify a potentially important dispersal barrier, open habitat that butterflies rarely enter, which may completely isolate some of the proposed restoration sites from other breeding sites. Finally, we found that, although the gain in predicting dispersal with increasing model complexity was small, so was the increase in financial cost. Furthermore, a greater fit continued to accrue with greater financial cost, and more complex models made substantially different predictions than simple models when applied to a novel landscape in which butterflies are to be reintroduced to bolster their populations. This suggests that more complex models might be justifiable on financial grounds. Our results caution against a pure parsimony approach to deciding how complex movement models need to be to accurately predict dispersal through the matrix, especially if the models are to be applied to novel or modified landscapes.
物种在破碎化景观中的存续取决于在适宜繁殖地之间的扩散,而扩散通常受到位于繁殖地之间的“基质”栖息地的影响。然而,测量不同基质栖息地对运动的影响,并将这些差异纳入空间明确的模型中以预测扩散,在时间和财务资源方面代价高昂。因此,保护管理者的一个关键问题是:更昂贵、更复杂的运动模型是否能产生更准确的扩散预测?我们比较了一系列从简单到复杂的运动模型预测濒危蝴蝶,圣弗朗西斯的 satyr(Neonympha mitchellii francisci)扩散的能力。更复杂模型的价值取决于如何评估价值。虽然基于详细运动行为的最复杂模型最能预测观察到的扩散率,但它仅略优于仅基于站点之间距离的最简单模型。因此,使用信息准则的简约方法有利于我们研究的最简单模型。然而,当我们将模型应用于包括拟议栖息地恢复地点的更大景观时,其中基质的组成与现有的繁殖地周围的基质不同,最简单的模型未能识别出一个潜在的重要扩散障碍,蝴蝶很少进入的开阔栖息地,这可能使一些拟议的恢复地点与其他繁殖地完全隔离。最后,我们发现,尽管随着模型复杂性的增加,预测扩散的能力略有提高,但财务成本也略有增加。此外,随着财务成本的增加,拟合度继续增加,并且当将更复杂的模型应用于要引入蝴蝶以增强其种群的新景观时,它们与简单模型做出了截然不同的预测。这表明,从财务角度来看,更复杂的模型可能是合理的。我们的研究结果告诫人们,在决定运动模型需要多复杂才能准确预测通过基质的扩散时,不要纯粹采用简约方法,特别是如果要将模型应用于新的或修改后的景观。