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首页> 外文期刊>The Journal of Applied Ecology >A regionally informed abundance index for supporting integrative analyses across butterfly monitoring schemes
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A regionally informed abundance index for supporting integrative analyses across butterfly monitoring schemes

机译:区域性信息丰度指数支持跨蝴蝶综合分析监测方案

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The rapid expansion of systematic monitoring schemes necessitates robust methods to reliably assess species' status and trends. Insect monitoring poses a challenge where there are strong seasonal patterns, requiring repeated counts to reliably assess abundance. Butterfly monitoring schemes (BMSs) operate in an increasing number of countries with broadly the same methodology, yet they differ in their observation frequency and in the methods used to compute annual abundance indices. Using simulated and observed data, we performed an extensive comparison of two approaches used to derive abundance indices from count data collected via BMS, under a range of sampling frequencies. Linear interpolation is most commonly used to estimate abundance indices from seasonal count series. A second method, hereafter the regional generalized additive model (GAM), fits a GAM to repeated counts within sites across a climatic region. For the two methods, we estimated bias in abundance indices and the statistical power for detecting trends, given different proportions of missing counts. We also compared the accuracy of trend estimates using systematically degraded observed counts of the Gatekeeper Pyronia tithonus (Linnaeus 1767). The regional GAM method generally outperforms the linear interpolation method. When the proportion of missing counts increased beyond 50%, indices derived via the linear interpolation method showed substantially higher estimation error as well as clear biases, in comparison to the regional GAM method. The regional GAM method also showed higher power to detect trends when the proportion of missing counts was substantial.Synthesis and applications. Monitoring offers invaluable data to support conservation policy and management, but requires robust analysis approaches and guidance for new and expanding schemes. Based on our findings, we recommend the regional generalized additive model approach when conducting integrative analyses across schemes, or when analysing scheme data with reduced sampling efforts. This method enables existing schemes to be expanded or new schemes to be developed with reduced within-year sampling frequency, as well as affording options to adapt protocols to more efficiently assess species status and trends across large geographical scales.
机译:系统监测的快速扩张计划需要健壮的可靠方法评估物种的状况和趋势。哪里有监控带来了挑战强劲的季节性模式,需要重复丰富可靠的评估。监测方案(bms)在一个操作越来越多的国家和广泛同样的方法,但他们有不同的观察频率和方法计算年度丰度指数。,我们进行了大量的观测数据比较两种方法用于推导丰度指数的计算通过收集的数据BMS,在一系列的采样频率。线性插值是最常用的从季节性数估计丰度指数系列。广义相加模型(GAM),适合GAM在网站在气候重复计数地区。丰度指数的统计力量检测趋势,给予不同比例的丢失的数量。使用系统的退化趋势估计观察项守门人Pyronia提托诺斯(林奈1767)。通常优于线性插值方法。增加超过50%,指数通过派生而来线性插值方法充分显示更高的估计误差以及清晰的偏见,相比地区访问的方法。区域GAM方法也表现出更高的权力检测趋势时失踪的比例数量是巨大的。应用程序。支持保护政策和管理,但是需要健壮的方法和分析指导新和扩张计划。我们的研究结果,我们建议该地区当广义相加模型方法在方案进行综合分析,或者当分析与降低计划数据取样工作。计划扩大或新方案了减少年内抽样适应的频率,以及提供选项更有效地评估物种的协议在大的地理状况和趋势鳞片。

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