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Spatial sampling bias and model complexity in stream‐based species distribution models: A case study of Paddlefish (Polyodon spathula) in the Arkansas River basin USA

机译:基于河流的物种分布模型中的空间采样偏差和模型复杂性:以美国阿肯色河流域的dle鱼(Polyodon spathula)为例

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摘要

Leveraging existing presence records and geospatial datasets, species distribution modeling has been widely applied to informing species conservation and restoration efforts. Maxent is one of the most popular modeling algorithms, yet recent research has demonstrated Maxent models are vulnerable to prediction errors related to spatial sampling bias and model complexity. Despite elevated rates of biodiversity imperilment in stream ecosystems, the application of Maxent models to stream networks has lagged, as has the availability of tools to address potential sources of error and calculate model evaluation metrics when modeling in nonraster environments (such as stream networks). Herein, we use Maxent and customized R code to estimate the potential distribution of paddlefish ( ) at a stream‐segment level within the Arkansas River basin, USA, while accounting for potential spatial sampling bias and model complexity. Filtering the presence data appeared to adequately remove an eastward, large‐river sampling bias that was evident within the unfiltered presence dataset. In particular, our novel riverscape filter provided a repeatable means of obtaining a relatively even coverage of presence data among watersheds and streams of varying sizes. The greatest differences in estimated distributions were observed among models constructed with default versus AIC ‐selected parameterization. Although all models had similarly high performance and evaluation metrics, the AIC ‐selected models were more inclusive of westward‐situated and smaller, headwater streams. Overall, our results solidified the importance of accounting for model complexity and spatial sampling bias in SDMs constructed within stream networks and provided a roadmap for future paddlefish restoration efforts in the study area.
机译:利用现有的存在记录和地理空间数据集,物种分布模型已被广泛应用于告知物种保护和恢复工作。 Maxent是最受欢迎的建模算法之一,但最近的研究表明,Maxent模型易受与空间采样偏差和模型复杂性相关的预测误差的影响。尽管河流生态系统中生物多样性受侵害的比率上升,但是Maxent模型在河流网络中的应用仍然滞后,在非光栅环境(例如河流网络)中建模时,解决潜在错误源和计算模型评估指标的工具的可用性也有所下降。本文中,我们使用Maxent和定制的R代码来估计美国阿肯色河流域内河段水平上的pad鱼()的潜在分布,同时考虑了潜在的空间采样偏差和模型复杂性。过滤状态数据似乎可以充分消除在未经过滤的状态数据集中明显的东移,大河采样偏差。特别是,我们新颖的Riverscape过滤器提供了一种可重复的方法,可在流域和大小不同的流中获得相对均匀的状态数据覆盖。在使用默认设置与AIC选择的参数化构建的模型之间,观察到了估计分布的最大差异。尽管所有模型都具有类似的高性能和评估指标,但AIC选择的模型更多地包含了西点和较小的上游水流。总体而言,我们的结果巩固了在流网络内构建的SDM中考虑模型复杂性和空间采样偏差的重要性,并为研究区域未来的dle鱼恢复工作提供了路线图。

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