Duarte Adam, Peterson James T
Pacific Northwest Research Station U.S.D.A. Forest Service Olympia Washington USA.
Department of Fisheries, Wildlife, and Conservation Sciences Oregon State University Corvallis Oregon USA.
Ecol Evol. 2021 Nov 16;11(23):16727-16744. doi: 10.1002/ece3.8292. eCollection 2021 Dec.
Occupancy models are often used to analyze long-term monitoring data to better understand how and why species redistribute across dynamic landscapes while accounting for incomplete capture. However, this approach requires replicate detection/non-detection data at a sample unit and many long-term monitoring programs lack temporal replicate surveys. In such cases, it has been suggested that surveying subunits within a larger sample unit may be an efficient substitution (i.e., space-for-time substitution). Still, the efficacy of fitting occupancy models using a space-for-time substitution has not been fully explored and is likely context dependent. Herein, we fit occupancy models to Delta Smelt () and Longfin Smelt () catch data collected by two different monitoring programs that use the same sampling gear in the San Francisco Bay-Delta, USA. We demonstrate how our inferences concerning the distribution of these species changes when using a space-for-time substitution. Specifically, we found the probability that a sample unit was occupied was much greater when using a space-for-time substitution, presumably due to the change in the spatial scale of our inferences. Furthermore, we observed that as the spatial scale of our inferences increased, our ability to detect environmental effects on system dynamics was obscured, which we suspect is related to the tradeoffs associated with spatial grain and extent. Overall, our findings highlight the importance of considering how the unique characteristics of monitoring programs influences inferences, which has broad implications for how to appropriately leverage existing long-term monitoring data to understand the distribution of species.
占用模型常用于分析长期监测数据,以便在考虑不完全捕获情况的同时,更好地理解物种如何以及为何在动态景观中重新分布。然而,这种方法需要在样本单元上有重复的检测/未检测数据,而许多长期监测项目缺乏时间上的重复调查。在这种情况下,有人建议在较大的样本单元内对亚单元进行调查可能是一种有效的替代方法(即空间换时间替代)。尽管如此,使用空间换时间替代来拟合占用模型的有效性尚未得到充分探索,并且可能取决于具体情况。在此,我们将占用模型应用于美国旧金山湾-三角洲地区由两个不同监测项目收集的三角洲胡瓜鱼()和长鳍胡瓜鱼()捕获数据,这两个项目使用相同的采样设备。我们展示了在使用空间换时间替代时,我们对这些物种分布的推断是如何变化的。具体而言,我们发现使用空间换时间替代时,样本单元被占用的概率要大得多,这可能是由于我们推断的空间尺度发生了变化。此外,我们观察到,随着我们推断的空间尺度增加,我们检测环境对系统动态影响的能力变得模糊,我们怀疑这与空间粒度和范围相关的权衡有关。总体而言,我们的研究结果强调了考虑监测项目的独特特征如何影响推断的重要性,这对于如何恰当地利用现有的长期监测数据来理解物种分布具有广泛的意义。