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A Collision Risk Model to Predict Avian Fatalities at Wind Facilities: An Example Using Golden Eagles Aquila chrysaetos

机译:预测风能设施中禽类死亡的碰撞风险模型:以金鹰天鹰座(Aquila chrysaetos)为例

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摘要

Wind power is a major candidate in the search for clean, renewable energy. Beyond the technical and economic challenges of wind energy development are environmental issues that may restrict its growth. Avian fatalities due to collisions with rotating turbine blades are a leading concern and there is considerable uncertainty surrounding avian collision risk at wind facilities. This uncertainty is not reflected in many models currently used to predict the avian fatalities that would result from proposed wind developments. We introduce a method to predict fatalities at wind facilities, based on pre-construction monitoring. Our method can directly incorporate uncertainty into the estimates of avian fatalities and can be updated if information on the true number of fatalities becomes available from post-construction carcass monitoring. Our model considers only three parameters: hazardous footprint, bird exposure to turbines and collision probability. By using a Bayesian analytical framework we account for uncertainties in these values, which are then reflected in our predictions and can be reduced through subsequent data collection. The simplicity of our approach makes it accessible to ecologists concerned with the impact of wind development, as well as to managers, policy makers and industry interested in its implementation in real-world decision contexts. We demonstrate the utility of our method by predicting golden eagle (Aquila chrysaetos) fatalities at a wind installation in the United States. Using pre-construction data, we predicted 7.48 eagle fatalities year-1 (95% CI: (1.1, 19.81)). The U.S. Fish and Wildlife Service uses the 80th quantile (11.0 eagle fatalities year-1) in their permitting process to ensure there is only a 20% chance a wind facility exceeds the authorized fatalities. Once data were available from two-years of post-construction monitoring, we updated the fatality estimate to 4.8 eagle fatalities year-1 (95% CI: (1.76, 9.4); 80th quantile, 6.3). In this case, the increased precision in the fatality prediction lowered the level of authorized take, and thus lowered the required amount of compensatory mitigation.
机译:风力是寻求清洁,可再生能源的主要候选人。除风能开发的技术和经济挑战外,还有可能限制其发展的环境问题。与旋转的涡轮机叶片碰撞而导致的禽类死亡是人们最关注的问题,在风力发电设施中,禽类碰撞风险存在很大的不确定性。当前用于预测拟议的风向发展将导致禽类死亡的许多模型中并未反映出这种不确定性。我们基于施工前的监测,介绍了一种预测风能设施死亡人数的方法。我们的方法可以直接将不确定性纳入禽类死亡人数的估算中,如果可以从施工后post体监测中获得有关真实死亡人数的信息,则可以进行更新。我们的模型仅考虑三个参数:危险足迹,鸟类对涡轮机的暴露以及碰撞概率。通过使用贝叶斯分析框架,我们可以解释这些值中的不确定性,这些不确定性随后会反映在我们的预测中,并且可以通过后续数据收集来减少。我们的方法简单易行,使关心风能发展影响的生态学家以及对在实际决策环境中实施风能感兴趣的管理人员,政策制定者和行业都可以使用。我们通过在美国的风力发电装置中预测金鹰(Aquila chrysaetos)的死亡率来证明我们方法的实用性。利用施工前的数据,我们预测了7.48头鹰年的死亡 -1 (95%CI:(1.1,19.81))。美国鱼类和野生动物服务局在其许可程序中使用第80个分位数(11.0头鹰死亡年 -1 ),以确保风力发电设施超过20%的机会授权的死亡人数。一旦获得两年施工后监测的数据,我们便将死亡估计数更新为4.8鹰年 -1 (95%CI:(1.76,9.4); 80 / sup>分位数,6.3)。在这种情况下,病死率预测中提高的精确度会降低授权服用的水平,从而降低所需的补偿性缓解量。

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