| Literature DB >> 22243279 |
Matthew L Forister1, James A Fordyce, Andrew C McCall, Arthur M Shapiro.
Abstract
Butterflies in the family Lycaenidac are often the focus of conservation efforts. However, our understanding of lycaenid population dynamics has been limited to relatively few examples of long-term monitoring data that have been reported. Here, factors associated with population regulation are investigated using a complete record of a single population of the silvery blue, Glaucopsyche lygdamus Doubleday (Lepidoptera: Lycaenidae). Adults of G. lygdamus were first observed in an annual grassland near Davis, California, in 1982 and were last seen in 2003. Relationships between inter-annual variation in abundance and climatic variables were examined, accounting for density dependent effects. Significant effects of both negative density dependence and climatic variation were detected, particularly precipitation and temperature during winter months. Variation in precipitation, the strongest predictor of abundance, was associated directly and positively with butterfly abundance in the same year. Winter temperatures had a negative effect in the same year, but had a lagged, positive effect on abundance in the subsequent year. Mechanistic hypotheses are posed that include climatic effects mediated through both larval and adult plant resources.Entities:
Mesh:
Year: 2011 PMID: 22243279 PMCID: PMC3281404 DOI: 10.1673/031.011.13001
Source DB: PubMed Journal: J Insect Sci ISSN: 1536-2442 Impact factor: 1.857
Results from multiple regression models investigating the association between variation in abundance and weather variables.
Figure 1. Annual variation in abundance (solid line) of adult silvery blue (Glaucopsyche lygdamus) butterflies at Old Davis Road and annual total rainfall (gray shading). Open diamonds are predicted points from the best-fitting multiple regression model (see Table 1); at points where the model predicts extinction, the points are shown offset below zero (i.e., 1991). High quality figures are available online.
Pearson product-moment correlation coefficients between all weather variables shown in Table 1.
Figure 2. (a) Illustration of Glaucopsyche lygdamus life cycle (relative timing of adult, larval, and pupal stages) and path model relating change in adult abundance at time t (relative to the previous year) to the following weather variables: winter average daily maximum temperature in year t-1; winter precipitation as well as winter average daily minimum temperature in year t. Adult abundance at t-1 is the count of individuals in each spring, while variation in abundance in year t is expressed as ΔN, or the change in abundance from t-1 to t (see text for more details). Path coefficients are shown with dashed lines for the negative coefficients (*p < 0.05; **p < 0.01). R2 for Nt-1 and ΔN in this model are 0.25 and 0.81, respectively. Also, see Table 1 for results from a multiple regression model including the same variables. High quality figures are available online.