University of Idaho Department of Fish and Wildlife, Moscow, Idaho, United States of America.
PLoS One. 2011;6(12):e28635. doi: 10.1371/journal.pone.0028635. Epub 2011 Dec 6.
Monitoring programs that evaluate restoration and inform adaptive management are important for addressing environmental degradation. These efforts may be well served by spatially explicit hierarchical approaches to modeling because of unavoidable spatial structure inherited from past land use patterns and other factors. We developed bayesian hierarchical models to estimate trends from annual density counts observed in a spatially structured wetland forb (Camassia quamash [camas]) population following the cessation of grazing and mowing on the study area, and in a separate reference population of camas. The restoration site was bisected by roads and drainage ditches, resulting in distinct subpopulations ("zones") with different land use histories. We modeled this spatial structure by fitting zone-specific intercepts and slopes. We allowed spatial covariance parameters in the model to vary by zone, as in stratified kriging, accommodating anisotropy and improving computation and biological interpretation. Trend estimates provided evidence of a positive effect of passive restoration, and the strength of evidence was influenced by the amount of spatial structure in the model. Allowing trends to vary among zones and accounting for topographic heterogeneity increased precision of trend estimates. Accounting for spatial autocorrelation shifted parameter coefficients in ways that varied among zones depending on strength of statistical shrinkage, autocorrelation and topographic heterogeneity--a phenomenon not widely described. Spatially explicit estimates of trend from hierarchical models will generally be more useful to land managers than pooled regional estimates and provide more realistic assessments of uncertainty. The ability to grapple with historical contingency is an appealing benefit of this approach.
监测项目旨在评估恢复情况并为适应性管理提供信息,对于解决环境退化问题非常重要。由于不可避免地受到过去土地利用模式和其他因素的空间结构的影响,这些努力可能会受益于空间显式层次方法建模。我们开发了贝叶斯层次模型,以根据在停止放牧和割草后,在研究区域内进行的空间结构化湿地草本植物(Camassia quamash [羽扇豆])种群的年度密度计数以及在单独的羽扇豆参考种群中观察到的趋势进行估计。恢复地点被道路和排水渠一分为二,导致具有不同土地利用历史的不同亚种群(“区”)。我们通过拟合特定区域的截距和斜率来模拟这种空间结构。我们允许模型中的空间协方差参数因区域而异,就像分层克里金一样,以适应各向异性并提高计算和生物学解释能力。趋势估计为被动恢复的积极效果提供了证据,证据的强度受模型中空间结构的影响。允许趋势在区域之间变化,并考虑地形异质性,可提高趋势估计的精度。考虑空间自相关会以依赖于统计收缩、自相关和地形异质性的方式改变参数系数——这一现象尚未得到广泛描述。从层次模型中得出的空间显式趋势估计通常比区域汇总估计对土地管理者更有用,并提供更现实的不确定性评估。应对历史偶然性的能力是这种方法的一个吸引人的好处。