A heuristic approach to predicting water beetle diversity in temporary and fluctuating waters
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Abstract
An understanding of the causal mechanisms and processes that shape macroinvertebrate communities at
a local scale has important implications for the management and conservation of freshwater biodiversity.
Here we compare the performance of linear and non-linear statistics to explore diversity–environment
relationships using data from 76 temporary and fluctuating ponds in two regions of southern England.We
focus on aquatic beetle assemblages, which have been shown to be excellent surrogates of wider freshwater
macroinvertebrate diversity. Ponds in the region contained a rich coleopteran fauna, totaling 68
species, which provided an excellent model system with which to compare the performance of two nonlinear
procedures (artificial neural networks—ANNs and generalised additive models—GAMs) and one
more traditional linear approach (Multiple linear regression—MLR) to modelling diversity–environment
relationships. Of all approaches employed, the best fit was obtained using an ANN model with only four
input variables (conductivity, turbidity, magnesium concentration and depth). This model accounted for
82% of the observed variability in Shannon diversity index across ponds. In contrast, the best GAM and
MLR models only explained 50% and 14% of this variation, respectively. Contribution profile analysis of
conductivity, turbidity, magnesium concentration and depth, obtained from the best fit ANN through a
hierarchical cluster analysis, allowed the identification of direct and proxy effects in relation to the environmental
variables measured in this study. In each case, distinct clusters of ponds were identified in
contribution profile analysis, suggesting that ponds across the two regions fall into a number of discrete
groups, whose beetle faunas respond in subtly yet significantly different ways to key environmental variables.
Aquatic coleopteran diversity in ponds in the two regions appears to be driven at a local scale by
changes in relatively few physicochemical gradients, which are related to diversity in a clearly non-linear
manner
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Bibliographic citation
Gutiérrez Estrada, J.C.. Bilton, D.T.: "A heuristic approach to predicting water beetle diversity in temporary and fluctuating waters". Ecological Modelling. Vol. 221, n. 11, p. 1451-1462 (2010). ISSN 0304-3800














