Banner Katharine M, Irvine Kathryn M, Rodhouse Thomas J, Wright Wilson J, Rodriguez Rogelio M, Litt Andrea R
Department of Ecology Montana State University Bozeman Montana USA.
U.S. Geological Survey Northern Rocky Mountain Science Center Bozeman Montana USA.
Ecol Evol. 2018 May 20;8(12):6144-6156. doi: 10.1002/ece3.4162. eCollection 2018 Jun.
Acoustic recording units (ARUs) enable geographically extensive surveys of sensitive and elusive species. However, a hidden cost of using ARU data for modeling species occupancy is that prohibitive amounts of human verification may be required to correct species identifications made from automated software. Bat acoustic studies exemplify this challenge because large volumes of echolocation calls could be recorded and automatically classified to species. The standard occupancy model requires aggregating verified recordings to construct confirmed detection/non-detection datasets. The multistep data processing workflow is not necessarily transparent nor consistent among studies. We share a workflow diagramming strategy that could provide coherency among practitioners. A false-positive occupancy model is explored that accounts for misclassification errors and enables potential reduction in the number of confirmed detections. Simulations informed by real data were used to evaluate how much confirmation effort could be reduced without sacrificing site occupancy and detection error estimator bias and precision. We found even under a 50% reduction in total confirmation effort, estimator properties were reasonable for our assumed survey design, species-specific parameter values, and desired precision. For transferability, a fully documented r package, OCacoustic, for implementing a false-positive occupancy model is provided. Practitioners can apply OCacoustic to optimize their own study design (required sample sizes, number of visits, and confirmation scenarios) for properly implementing a false-positive occupancy model with bat or other wildlife acoustic data. Additionally, our work highlights the importance of clearly defining research objectives and data processing strategies at the outset to align the study design with desired statistical inferences.
声学记录单元(ARUs)能够对敏感且难以捉摸的物种进行广泛的地理调查。然而,将ARU数据用于物种占用建模的一个潜在成本是,可能需要大量人工核查来纠正由自动化软件做出的物种识别。蝙蝠声学研究就是这一挑战的典型例子,因为可以记录大量的回声定位叫声并自动分类到物种。标准的占用模型需要汇总经过验证的记录来构建确认的检测/未检测数据集。多步骤的数据处理工作流程在不同研究中不一定透明或一致。我们分享一种工作流程图绘制策略,该策略可以为从业者提供连贯性。我们探索了一种考虑错误分类误差的假阳性占用模型,并有可能减少确认检测的数量。利用真实数据进行的模拟,用于评估在不牺牲地点占用率以及检测误差估计偏差和精度的情况下,可以减少多少确认工作。我们发现,即使总确认工作量减少50%,对于我们假设的调查设计、物种特定参数值和期望的精度,估计属性也是合理的。为了便于移植,我们提供了一个完整记录的R包OCacoustic,用于实现假阳性占用模型。从业者可以应用OCacoustic来优化自己的研究设计(所需样本量、访问次数和确认方案),以便用蝙蝠或其他野生动物声学数据正确实施假阳性占用模型。此外,我们的工作强调了从一开始就明确界定研究目标和数据处理策略的重要性,以便使研究设计与期望的统计推断保持一致。