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首页> 外文期刊>Biodiversity and Conservation >Integrating variability in detection probabilities when designing wildlife surveys: a case study of amphibians from south-eastern Australia.
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Integrating variability in detection probabilities when designing wildlife surveys: a case study of amphibians from south-eastern Australia.

机译:设计野生动植物调查时将变异性整合到检测概率中:以澳大利亚东南部的两栖动物为例。

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Occupancy-based monitoring programs rely on survey data to infer presence or absence of the target species. However, species may occupy a site and go undetected, leading to erroneous inference of absence ('false absence'). If detectability is influenced by the time of year or weather conditions, survey protocols can be adjusted to minimize the chance of false absences. In this study, detection probabilities for three amphibian species from south-eastern Australia were modelled using a Bayesian approach. For aural surveys, we compared basic models, which only included effects of survey date, duration and time of day on detection, to models including additional effects of weather. Model selection using deviance information criterion (DIC) suggested that the basic model was the most parsimonious for Crinia signifera, while models including relative humidity and water temperature were most supported for Limnodynastes dumerilii and L. tasmaniensis respectively. When predictive performance was assessed by cross validation, DIC results were largely matched for C. signifera and L. dumerilii, while models of detection for L. tasmaniensis were indistinguishable, AUC scores suggesting inadequate performance. We show how results such as these can be used to design surveys, developing protocols for individual surveys and estimating the number of surveys required under those protocols to achieve a threshold cumulative probability of detection. Conservation managers can use these models to maximize the efficiency of surveys. This will improve the accuracy of occupancy data, and reduce the risk of misdirected conservation actions resulting from false absences.
机译:基于占用率的监视程序依靠调查数据来推断目标物种的存在与否。但是,物种可能会占据一个位置而未被发现,从而导致错误地推断出缺失(“假缺失”)。如果可检测性受一年中的时间或天气状况的影响,则可以调整调查方案以最大程度地减少误报的机会。在这项研究中,使用贝叶斯方法对来自澳大利亚东南部的三种两栖动物的检测概率进行了建模。对于听觉调查,我们将仅包括调查日期,持续时间和一天中的时间对检测的影响的基本模型与包括天气的其他影响的模型进行了比较。使用偏差信息准则(DIC)进行的模型选择表明,基本模型最适用于 Crinia signifera ,而 Limnodynastes dumerilii 则最支持包括相对湿度和水温的模型。和 L。塔斯马尼亚州。当通过交叉验证评估预测性能时,DIC结果在很大程度上与iC相符。 Signifera 和 L。 dumerilii ,而 L的检测模型。 tasmaniensis 难以区分,AUC分数表明性能不足。我们将展示如何将此类结果用于设计调查,为单个调查制定协议以及估算在那些协议下达到阈值累积检测概率所需的调查数量。保护管理员可以使用这些模型来最大化调查效率。这将提高占用数据的准确性,并减少因错误缺勤而导致保护行动方向错误的风险。

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