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How long should we ignore imperfect detection of species in the marine environment when modelling their distribution?

机译:在对物种分布进行建模时,我们应该忽略多久才可以忽略对海洋环境中物种的不完善检测?

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摘要

The application of the 'ecosystem approach' to marine conservation management demands knowledge of the distribution patterns of the target species or communities. This information is commonly obtained from species distribution models (SDMs). This article explores an important but rarely acknowledged assumption in these models: almost all species may be present, but simply not detected by the particular survey method. However, nearly all of these SDM approaches neglect this important characteristic. This leads to the violation of a fundamental assumption of these models, which presuppose the detection of a species is equal to one (i.e. at each survey locality, a species is perfectly detected). In this article, the concept of imperfect detection is discussed, how it potentially influences the prediction of species' distributions is examined, and some statistical methods that could be used to incorporate the detection probability of species in estimates of their distribution are suggested. The approaches discussed here could improve the collection and interpretation of marine biological survey data and provide a coherent way to incorporate detection probability estimates in the modelling of species distributions. This will ultimately lead to an unbiased and more rigorous understanding of the distribution of species in the marine environment.
机译:“生态系统方法”在海洋保护管理中的应用要求了解目标物种或群落的分布模式。通常从物种分布模型(SDM)获得此信息。本文探讨了这些模型中的一个重要但很少为人所接受的假设:几乎所有物种都可能存在,但不能通过特定的调查方法检测到。但是,几乎所有这些SDM方法都忽略了这一重要特性。这导致违反了这些模型的基本假设,即假设某物种的检测等于一个物种(即在每个调查地点均完美地检测到一种物种)。在本文中,讨论了不完善检测的概念,研究了不完善检测的潜在影响因素,并提出了一些统计方法可以用来将物种的检测概率纳入其分布的估计中。这里讨论的方法可以改善海洋生物调查数据的收集和解释,并提供一种将检测概率估计值纳入物种分布建模的一致方法。这最终将导致对海洋环境中物种分布的公正和更加严格的理解。

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