Western Ecosystems Technology, Inc., Cheyenne, Wyoming, 82001, USA.
McDonald Data Sciences, LLC, Laramie, Wyoming, 82070, USA.
Ecol Appl. 2021 Dec;31(8):e02408. doi: 10.1002/eap.2408. Epub 2021 Sep 20.
Estimating bird and bat fatalities caused by wind-turbine facilities is challenging when carcasses are rare and produce counts that are either exactly or very near zero. The rarity of found carcasses is exacerbated when live members of a particular species are rare and when carcasses degrade quickly, are removed by scavengers, or are not detected by observers. With few observed carcass counts, common statistical methods like logistic, Poisson, or negative binomial regression are unreliable (statistically biased) and often fail to provide answers (i.e., fail to converge). Here, we propose a binomial N-mixture model that estimates fatality rates as well as the total number of carcasses when rates are expanded. Our model extends the "evidence of absence" model by relating carcass deposition rates to study covariates and by incorporating terms that naturally scale counts from facilities of different sizes. Our model, which we call Evidence of Absence Regression (EoAR), can estimate the total number of birds or bats killed at a single wind energy facility or a fleet of wind energy facilities based on covariate values. Furthermore, with accurate prior distributions the model's results are extremely robust to sparse data and unobserved combinations of covariate values. In this paper, we describe the model, show its low bias and high precision via computer simulation, and apply it to bat carcass counts observed at 21 wind energy facilities in Iowa.
估算风力发电设施造成的鸟类和蝙蝠死亡数量具有挑战性,因为当尸体稀少且产生的数量恰好或非常接近零时,进行计数会变得非常困难。当特定物种的活体成员稀少、尸体迅速降解、被食腐动物清除或观察者未发现时,发现的尸体就更加稀少。由于观察到的尸体数量很少,因此像逻辑、泊松或负二项式回归等常用统计方法不可靠(存在统计偏差),并且经常无法提供答案(即无法收敛)。在这里,我们提出了二项式 N 混合模型,该模型可以在扩展速率时估算死亡率和总尸体数量。我们的模型通过将尸体沉积速率与研究协变量相关联,并通过纳入自然按设施大小调整计数的术语,扩展了“无证据存在”模型。我们称之为“无证据存在回归”(EoAR)的模型可以根据协变量值来估算单个风力发电设施或风力发电设施群中鸟类或蝙蝠的总死亡数量。此外,通过准确的先验分布,该模型的结果对稀疏数据和未观察到的协变量值组合具有极强的稳健性。在本文中,我们描述了该模型,通过计算机模拟展示了其低偏差和高精度,并将其应用于爱荷华州 21 个风力发电设施中观察到的蝙蝠尸体数量。