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Estimating site occupancy rates for aquatic plants using spatial sub-sampling designs when detection probabilities are less than one

机译:当检测概率小于1时,使用空间子采样设计估算水生植物的位点占用率

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Estimation of site occupancy rates when detection probabilities are < 1 is well established in wildlife science. Data from multiple visits to a sample of sites are used to estimate detection probabilities and the proportion of sites occupied by focal species. In this article we describe how site occupancy methods can be applied to estimate occupancy rates of plants and other sessile organisms. We illustrate this approach and the pitfalls of ignoring incomplete detection using spatial data for 2 aquatic vascular plants collected under the Upper Mississippi River's Long Term Resource Monitoring Program (LTRMP). Site occupancy models considered include: a naive model that ignores incomplete detection, a simple site occupancy model assuming a constant occupancy rate and a constant probability of detection across sites, several models that allow site occupancy rates and probabilities of detection to vary with habitat characteristics, and mixture models that allow for unexplained variation in detection probabilities. We used information theoretic methods to rank competing models and bootstrapping to evaluate the goodness-of-fit of the final models. Results of our analysis confirm that ignoring incomplete detection can result in biased estimates of occupancy rates. Estimates of site occupancy rates for 2 aquatic plant species were 19-36% higher compared to naive estimates that ignored probabilities of detection <1. Simulations indicate that final models have little bias when 50 or more sites are sampled, and little gains in precision could be expected for sample sizes > 300. We recommend applying site occupancy methods for monitoring presence of aquatic species
机译:在野生动物科学中,当检测概率小于1时,可以估计站点的占用率。多次访问站点样本的数据用于估计检测概率和焦点物种所占站点的比例。在本文中,我们描述了如何使用场所占用方法来估计植物和其他无柄生物的占用率。我们举例说明了这种方法以及忽略使用密西西比河上游的长期资源监测计划(LTRMP)上收集的2种水生维管植物的空间数据进行不完整检测的陷阱。所考虑的站点占用模型包括:忽略未完成检测的朴素模型,假定站点之间的恒定占用率和恒定检测概率的简单站点占用模型,允许站点占用率和检测概率随生境特征而变化的几种模型,和混合模型,这些模型允许无法解释的检测概率变化。我们使用信息理论方法对竞争模型进行排序,并进行自举以评估最终模型的拟合优度。我们的分析结果证实,忽略不完整的检测会导致占用率的估计偏差。与忽略忽略检测概率<1的朴素估计相比,两种水生植物物种的场地占用率估计高19-36%。仿真表明,当对50个以上的站点进行采样时,最终模型几乎没有偏差,并且对于样本大小> 300的情况,精度的预期提高很小。我们建议使用站点占用方法来监视水生生物的存在

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