Pirotta Enrico, Booth Cormac G, Cade David E, Calambokidis John, Costa Daniel P, Fahlbusch James A, Friedlaender Ari S, Goldbogen Jeremy A, Harwood John, Hazen Elliott L, New Leslie, Southall Brandon L
Department of Mathematics and Statistics, Washington State University, Vancouver, WA 98686, USA.
School of Biological, Earth and Environmental Sciences, University College Cork, Cork T23 N73K, Ireland.
Conserv Physiol. 2021 Jan 16;9(1):coaa137. doi: 10.1093/conphys/coaa137. eCollection 2021.
Assessing the long-term consequences of sub-lethal anthropogenic disturbance on wildlife populations requires integrating data on fine-scale individual behavior and physiology into spatially and temporally broader, population-level inference. A typical behavioral response to disturbance is the cessation of foraging, which can be translated into a common metric of energetic cost. However, this necessitates detailed empirical information on baseline movements, activity budgets, feeding rates and energy intake, as well as the probability of an individual responding to the disturbance-inducing stressor within different exposure contexts. Here, we integrated data from blue whales () experimentally exposed to military active sonar signals with fine-scale measurements of baseline behavior over multiple days or weeks obtained from accelerometry loggers, telemetry tracking and prey sampling. Specifically, we developed daily simulations of movement, feeding behavior and exposure to localized sonar events of increasing duration and intensity and predicted the effects of this disturbance source on the daily energy intake of an individual. Activity budgets and movements were highly variable in space and time and among individuals, resulting in large variability in predicted energetic intake and costs. In half of our simulations, an individual's energy intake was unaffected by the simulated source. However, some individuals lost their entire daily energy intake under brief or weak exposure scenarios. Given this large variation, population-level models will have to assess the consequences of the entire distribution of energetic costs, rather than only consider single summary statistics. The shape of the exposure-response functions also strongly influenced predictions, reinforcing the need for contextually explicit experiments and improved mechanistic understanding of the processes driving behavioral and physiological responses to disturbance. This study presents a robust approach for integrating different types of empirical information to assess the effects of disturbance at spatio-temporal and ecological scales that are relevant to management and conservation.
评估亚致死性人为干扰对野生动物种群的长期影响,需要将关于精细尺度个体行为和生理的数据整合到空间和时间尺度更广的种群水平推断中。对干扰的一种典型行为反应是停止觅食,这可以转化为一个常见的能量消耗指标。然而,这需要关于基线活动、活动预算、摄食率和能量摄入的详细实证信息,以及个体在不同暴露情境下对干扰诱发应激源做出反应的概率。在这里,我们将实验暴露于军事有源声纳信号的蓝鲸数据,与通过加速度计记录器、遥测跟踪和猎物采样获得的多日或数周的基线行为精细尺度测量数据进行了整合。具体而言,我们对运动、摄食行为以及暴露于持续时间和强度不断增加的局部声纳事件进行了每日模拟,并预测了这种干扰源对个体每日能量摄入的影响。活动预算和运动在空间和时间上以及个体之间高度可变,导致预测的能量摄入和消耗存在很大差异。在我们一半的模拟中,个体的能量摄入不受模拟源的影响。然而,一些个体在短暂或微弱暴露情景下失去了全部每日能量摄入。鉴于这种巨大差异,种群水平模型将不得不评估能量消耗整个分布的后果,而不是仅考虑单一汇总统计量。暴露 - 反应函数的形状也强烈影响预测结果,这进一步凸显了进行情境明确的实验以及更好地从机制上理解驱动对干扰的行为和生理反应过程的必要性。本研究提出了一种稳健的方法,用于整合不同类型的实证信息,以评估在与管理和保护相关的时空和生态尺度上干扰的影响。