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Accounting for imperfect detection of groups and individuals when estimating abundance

机译:在估计丰度时考虑对群体和个人的不完善检测

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Abstract If animals are independently detected during surveys, many methods exist for estimating animal abundance despite detection probabilities <1. Common estimators include double-observer models, distance sampling models and combined double-observer and distance sampling models (known as mark-recapture-distance-sampling models; MRDS). When animals reside in groups, however, the assumption of independent detection is violated. In this case, the standard approach is to account for imperfect detection of groups, while assuming that individuals within groups are detected perfectly. However, this assumption is often unsupported. We introduce an abundance estimator for grouped animals when detection of groups is imperfect and group size may be under-counted, but not over-counted. The estimator combines an MRDS model with an N-mixture model to account for imperfect detection of individuals. The new MRDS-Nmix model requires the same data as an MRDS model (independent detection histories, an estimate of distance to transect, and an estimate of group size), plus a second estimate of group size provided by the second observer. We extend the model to situations in which detection of individuals within groups declines with distance. We simulated 12 data sets and used Bayesian methods to compare the performance of the new MRDS-Nmix model to an MRDS model. Abundance estimates generated by the MRDS-Nmix model exhibited minimal bias and nominal coverage levels. In contrast, MRDS abundance estimates were biased low and exhibited poor coverage. Many species of conservation interest reside in groups and could benefit from an estimator that better accounts for imperfect detection. Furthermore, the ability to relax the assumption of perfect detection of individuals within detected groups may allow surveyors to re-allocate resources toward detection of new groups instead of extensive surveys of known groups. We believe the proposed estimator is feasible because the only additional field data required are a second estimate of group size.
机译:摘要如果在调查过程中对动物进行独立检测,尽管检测概率小于1,仍然存在许多估算动物丰度的方法。常见的估算器包括双观测器模型,距离采样模型以及组合的双观测器和距离采样模型(称为标记重捕获距离采样模型; MRDS)。但是,当动物成群居住时,就违反了独立检测的假设。在这种情况下,标准方法是考虑对组的检测不完善,同时假定可以完美地检测到组内的个体。但是,这种假设通常不受支持。当组的检测不完善并且组的大小可能被低估但未被高估时,我们为分组的动物引入了一个丰度估计器。估计器将MRDS模型与N混合模型结合起来,以解决对个人的检测不完善的问题。新的MRDS-Nmix模型需要与MRDS模型相同的数据(独立的检测历史,对横断面的距离估计以及组大小的估计),以及第二个观察者提供的组大小的第二个估计。我们将模型扩展到组中个体的检测随距离下降而下降的情况。我们模拟了12个数据集,并使用贝叶斯方法将新MRDS-Nmix模型与MRDS模型的性能进行比较。 MRDS-Nmix模型生成的丰度估计值显示出最小的偏差和标称覆盖范围。相比之下,MRDS丰度估计值偏低并且覆盖范围较差。许多具有保护意义的物种都生活在不同的群体中,并且可以受益于估算器,该估算器可以更好地说明不完善的检测。此外,放宽对被检测组内个体的完美检测的假设的能力可以允许测量员将资源重新分配用于检测新组,而不是对已知组进行广泛的调查。我们认为拟议的估算器是可行的,因为所需的唯一附加字段数据是组大小的第二个估算器。

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