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Temporally adaptive acoustic sampling to maximize detection across a suite of focal wildlife species

机译:暂时自适应声学采样,以最大限度地探测围绕焦平野生动物种类的套件

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Acoustic recordings of the environment can produce species presence–absence data for characterizing populations of sound‐producing wildlife over multiple spatial scales. If a species is present at a site but does not vocalize during a scheduled audio recording survey, researchers may incorrectly conclude that the species is absent (“false negative”). The risk of false negatives is compounded when audio devices have sampling constraints, do not record continuously, and must be manually scheduled to operate at pre‐selected times of day, particularly when research programs target multiple species with acoustic availability that varies across temporal conditions. We developed a temporally adaptive acoustic sampling algorithm to maximize detection probabilities for a suite of focal species amid sampling constraints. The algorithm combines user‐supplied species vocalization models with site‐specific weather forecasts to set an optimized sampling schedule for the following day. To test our algorithm, we simulated hourly vocalization probabilities for a suite of focal species in a hypothetical monitoring area for the year 2016. We conducted a factorial experiment that sampled from the 2016 acoustic environment to compare the probability of acoustic detection by a fixed (stationary) schedule versus a temporally adaptive optimized schedule under several sampling efforts and monitoring durations. We found that over the course of a study season, the probability of acoustically capturing a focal species (given presence) at least once via automated acoustic monitoring was greater (and acoustic capture occurred earlier in the season) when using the temporally adaptive optimized schedule as compared to a fixed schedule. The advantages of a temporally adaptive optimized acoustic sampling schedule are magnified when a study duration is short, sampling effort is low, and/or species acoustic availability is minimal. This methodology presents the opportunity to maximize acoustic monitoring sampling efforts amid constraints.
机译:环境的声学记录可以产生物种存在缺席数据,用于在多个空间尺度上表征发积野生动物的群体。如果在网站存在但是在预定的音频记录调查期间没有发挥物种,则研究人员可能错误地得出结论,这些物种缺少(“假阴性”)。当音频设备具有采样约束时,不断录制的假凸起的风险复杂,并且必须在预先选择的时间内手动预定在日期的预先选择时运行,特别是当研究程序目标多种物种时,具有在时间条件上变化的声学可用性的多种物种。我们开发了一种时间自适应声学采样算法,可以在采样约束中最大化用于套件套件的检测概率。该算法将用户提供的物种声音模型与现场特定的天气预报结合起来,以便在第二天设置优化的采样时间表。为了测试我们的算法,我们模拟了2016年假设监测区域中的一套焦点种类的每小时发声概率。我们进行了一项从2016年声学环境中取样的阶乘实验,以比较固定的声学检测的可能性(静止的)时间表与几个采样努力和监测持续时间下的时间自适应优化的时间表。我们发现,在研究季节的过程中,在使用时间自适应优化的时间表时,通过自动声学监测至少一次发声捕获焦距(给予存在)的概率与固定的时间表相比。当研究持续时间短时,逐时自适应优化的声学采样时间表的优点是放大的,采样效能低,和/或物种声学可用性最小。该方法提供了最大化声学监测采样工作的机会,在约束中。

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