估计野猪密度的去除和空间标记观察模型的比较

IF 1.9 3区 环境科学与生态学 Q3 ECOLOGY
Charles R. Taylor, Kim M. Pepin, Ryan S. Miller, John R. Foster, James C. Beasley
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引用次数: 0

摘要

密度估算对于有效管理入侵物种和阐明最受关注的区域至关重要。对于野猪(Sus scrofa)来说,由于其不同的家庭范围大小和社会结构,估计密度的能力是复杂的。估计密度的常用方法(例如,标记再捕获)可能不适合管理应用,因为需要在管理前后收集额外的数据。迁移模型为估计管理后的密度变化提供了一种合适的替代方法,可以广泛应用于正在进行野猪管理的地区。从2020年到2023年,我们收集了美国南卡罗来纳州3个生态区25个私人农场的野猪清除和相机陷阱数据,这些农场的面积从0.5平方公里到95平方公里不等。我们比较了影响去除和空间标记-视觉(SMR)模型之间属性级密度估计一致性和精度的因素。一般来说,除1个较大的异常值外,去除模型的密度估计值在0.60 ~ 15.85头/km2之间(中位数= 5.34),中位变异系数(CV)为0.76,CV的95%置信区间为0.70 ~ 0.94。同样,排除1个大异常值,SMR的密度估计值在0.22 ~ 30.97头/km2之间(中位数= 5.48),中位数CV为0.39,95%置信区间为0.38 ~ 1.20。我们发现迁移模型的精度主要受迁移期间(3个月)派出的野猪数量和迁移的生态区域的影响。所有协变量,包括重新捕获的数量(样本大小的相应度量),都不影响SMR模型的精度,尽管重新捕获确实影响密度估计。在个体属性水平上,我们的两个估计器的密度估计值在大约80%的情况下彼此不同,尽管我们检查的协变量都没有影响差异。我们的结果提供了独特的见解,样本量如何影响密度估计使用两种常见的方法和新的SMR模型,包括标记和未标记的检测。此外,本研究的密度估计值可作为美国东南部常见土地覆盖类型野猪密度的参考。
本文章由计算机程序翻译,如有差异,请以英文原文为准。

Comparison of removal and spatial mark-resight models for estimating wild pig density

Comparison of removal and spatial mark-resight models for estimating wild pig density

Comparison of removal and spatial mark-resight models for estimating wild pig density

Comparison of removal and spatial mark-resight models for estimating wild pig density

Comparison of removal and spatial mark-resight models for estimating wild pig density

Density estimation is critical to effectively manage invasive species and elucidate areas of highest concern. For wild pigs (Sus scrofa), the ability to estimate density is complicated because of their variable home range sizes and social structure. Common methods for estimating density (e.g., mark-recapture) may be unsuitable in management applications because additional data needs to be collected before and after management. Removal models offer a suitable alternative to estimate density changes following management and can be applied broadly across areas where management of wild pigs is ongoing. We collected wild pig removal and camera trap data from 25 private properties ranging in size from approximately 0.5 km2 to 95 km2 across 3 ecoregions in South Carolina, USA, from 2020–2023. We compared factors affecting consistency and precision of property-level density estimates between removal and spatial mark-resight (SMR) models. In general, excluding 1 large outlier, density estimates from removal models were between 0.60 and 15.85 wild pigs/km2 (median = 5.34) with a median coefficient of variation (CV) of 0.76 and 95% confidence intervals for the CV between 0.70 and 0.94. Similarly, excluding 1 large outlier, density estimates from SMR were between 0.22 and 30.97 wild pigs/km2 (median = 5.48) with a median CV of 0.39 and 95% confidence intervals for the CV between 0.38 and 1.20. We found the precision of removal models was affected primarily by the number of wild pigs dispatched in the removal period (3 months) and the ecoregion in which they were removed. None of the covariates, including the number of recaptures (a corresponding measure of sample size), influenced precision of the SMR models, although recaptures did influence the density estimates. At the individual property level, density estimates from our 2 estimators were dissimilar from each other in approximately 80% of instances, although none of the covariates we examined influenced dissimilarity. Our results provide unique insight into how sample size affects density estimates using 2 common methods and into novel SMR models that incorporate both marked and unmarked detections. In addition, the density estimates in this study can be used as a reference for wild pig densities in common land cover types throughout the southeastern United States.

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来源期刊
Journal of Wildlife Management
Journal of Wildlife Management 环境科学-动物学
CiteScore
4.00
自引率
13.00%
发文量
188
审稿时长
9-24 weeks
期刊介绍: The Journal of Wildlife Management publishes manuscripts containing information from original research that contributes to basic wildlife science. Suitable topics include investigations into the biology and ecology of wildlife and their habitats that has direct or indirect implications for wildlife management and conservation. This includes basic information on wildlife habitat use, reproduction, genetics, demographics, viability, predator-prey relationships, space-use, movements, behavior, and physiology; but within the context of contemporary management and conservation issues such that the knowledge may ultimately be useful to wildlife practitioners. Also considered are theoretical and conceptual aspects of wildlife science, including development of new approaches to quantitative analyses, modeling of wildlife populations and habitats, and other topics that are germane to advancing wildlife science. Limited reviews or meta analyses will be considered if they provide a meaningful new synthesis or perspective on an appropriate subject. Direct evaluation of management practices or policies should be sent to the Wildlife Society Bulletin, as should papers reporting new tools or techniques. However, papers that report new tools or techniques, or effects of management practices, within the context of a broader study investigating basic wildlife biology and ecology will be considered by The Journal of Wildlife Management. Book reviews of relevant topics in basic wildlife research and biology.
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