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生态监测的挑战:从稀疏的陷阱计数估计种群数量。

Challenges of ecological monitoring: estimating population abundance from sparse trap counts.

机构信息

School of Mathematics, University of Birmingham, Birmingham B15 2TT, UK.

出版信息

J R Soc Interface. 2012 Mar 7;9(68):420-35. doi: 10.1098/rsif.2011.0386. Epub 2011 Aug 10.

Abstract

Ecological monitoring aims to provide estimates of pest species abundance-this information being then used for making decisions about means of control. For invertebrate species, population size estimates are often based on trap counts which provide the value of the population density at the traps' location. However, the use of traps in large numbers is problematic as it is costly and may also be disruptive to agricultural procedures. Therefore, the challenge is to obtain a reliable population size estimate from sparse spatial data. The approach we develop in this paper is based on the ideas of numerical integration on a coarse grid. We investigate several methods of numerical integration in order to understand how badly the lack of spatial data can affect the accuracy of results. We first test our approach on simulation data mimicking spatial population distributions of different complexity. We show that, rather counterintuitively, a robust estimate of the population size can be obtained from just a few traps, even when the population distribution has a highly complicated spatial structure. We obtain an estimate of the minimum number of traps required to calculate the population size with good accuracy. We then apply our approach to field data to confirm that the number of trap/sampling locations can be much fewer than has been used in many monitoring programmes. We also show that the accuracy of our approach is greater that that of the statistical method commonly used in field studies. Finally, we discuss the implications of our findings for ecological monitoring practice and show that the use of trap numbers 'smaller than minimum' may still be possible but it would result in a paradigm shift: the population size estimates should be treated probabilistically and the arising uncertainty may introduce additional risk in decision-making.

摘要

生态监测旨在提供害虫物种数量的估计值,这些信息随后用于决策控制措施。对于无脊椎动物物种,种群规模估计通常基于陷阱计数,这提供了陷阱位置处种群密度的值。然而,大量使用陷阱存在问题,因为它成本高昂,并且可能会干扰农业程序。因此,挑战在于从稀疏的空间数据中获得可靠的种群规模估计。本文中我们提出的方法基于在粗网格上进行数值积分的思想。我们研究了几种数值积分方法,以了解缺乏空间数据会如何严重影响结果的准确性。我们首先在模拟数据上测试我们的方法,模拟了不同复杂程度的空间种群分布。我们表明,相当出人意料的是,即使种群分布具有非常复杂的空间结构,也可以仅从少数几个陷阱中获得种群规模的稳健估计值。我们获得了计算种群规模所需的最少陷阱数量的估计值。然后,我们将我们的方法应用于野外数据,以确认可以使用比许多监测计划中更少的陷阱/采样地点来计算种群规模。我们还表明,我们的方法的准确性高于野外研究中常用的统计方法。最后,我们讨论了我们的发现对生态监测实践的影响,并表明仍然可以使用“小于最小”的陷阱数量,但这将导致范式转变:种群规模估计值应采用概率处理,并且由此产生的不确定性可能会在决策中引入额外的风险。

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