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Epigaeic Invertebrates as Potential Ecological Indicators of Afromontane Forest Condition in South Africa1
Authors:Michael J. Lawes  D. Johan Kotze  Sven L. Bourquin  Craig Morris
Abstract:Forest condition and the associated ecological processes vital for forest patch persistence are difficult to judge rapidly and time‐consuming to sample. Here we examine the efficacy of epigaeic invertebrate species as ecological indicators of Afromontane forest condition. Epigaeic invertebrates are potentially good ecological indicators because they play an important role in maintaining ecosystem processes, such as nutrient cycling, rely almost entirely upon the resources provided by the organic leaf litter layer, are known to be sensitive to environmental changes, and are easily surveyed. Epigaeic invertebrate communities were sampled using pitfall traps for 21 days in each of 11 forests that spanned a gradient from large and relatively undisturbed to small and highly disturbed forest patches. Using canonical correspondence analysis, we identified a suite of potential ecological indicator species (eight out of 140 species) and showed that gradients in their population response (abundance) reflect overall forest condition, as judged from the correlated vegetation indicators and position of the forests of varying condition along this gradient. The abundance of all but two of the eight indicator species (a spider and the landhopper, Talitriator africana[Amphipoda]) decreased with increasing disturbance. As a group, the rove beetles (Staphylinidae) show promise as ecological indicators and comprised four of the eight potential indicators species. A strong case is also made for a single‐species ecological indicator in the form of T. africana, which is a robust and sensitive indicator of poor forest condition.
Keywords:Afromontane mistbelt forest  Amphipoda  disturbance  ecological indicator species  epigaeic invertebrates  forest condition  South Africa  Staphylinidae
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