A regionally informed abundance index for supporting integrative analyses across butterfly monitoring schemes

Schmucki, Reto; Pe'er, Guy; Roy, David B.; Stefanescu, Constantí; Van Swaay, Chris A.M.; Oliver, Tom H.; Kuussaari, Mikko; Van Strien, Arco J.; Ries, Leslie; Settele, Josef; Musche, Martin; Carnicer, Jofre; Schweiger, Oliver; Brereton, Tom M.; Harpke, Alexander; Heliölä, Janne; Kühn, Elisabeth; Julliard, Romain. 2016 A regionally informed abundance index for supporting integrative analyses across butterfly monitoring schemes. Journal of Applied Ecology, 53 (2). 501-510.

Before downloading, please read NORA policies.
N513191JA.pdf - Published Version
Available under License Creative Commons Attribution 4.0.

Download (862kB) | Preview


1. 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. 2. 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). 3. 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. 4. 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.

Item Type: Publication - Article
Digital Object Identifier (DOI):
UKCEH and CEH Sections/Science Areas: Pywell
ISSN: 0021-8901
Additional Information. Not used in RCUK Gateway to Research.: Open Access paper - full text available via Official URL link.
Additional Keywords: abundance indices, butterfly monitoring scheme, butterfly count, citizen science, flight period, insect conservation; missing data, pollard walk, sampling effort, seasonal pattern
NORA Subject Terms: Ecology and Environment
Date made live: 07 Mar 2016 11:42 +0 (UTC)

Actions (login required)

View Item View Item

Document Downloads

Downloads for past 30 days

Downloads per month over past year

More statistics for this item...