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Monitoring change in aquatic invertebrate biodiversity: sample size, faunal elements and analytical methods
Halse, S.A.; Cale, D.J.; Jasinska, E.J.; Shiel, R.J. (2002). Monitoring change in aquatic invertebrate biodiversity: sample size, faunal elements and analytical methods. Aquat. Ecol. 36(3): 395-410
In: Aquatic Ecology. Springer: Dordrecht; London; Boston. ISSN 1386-2588, more
Peer reviewed article  

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Keywords
    Benthos; Salinity; Wetlands; Australia, Western Australia [Marine Regions]; Brackish water; Fresh water

Authors  Top 
  • Halse, S.A.
  • Cale, D.J.
  • Jasinska, E.J.
  • Shiel, R.J.

Abstract
    Replication is usually regarded as an integral part of biological sampling, yet the cost of extensive within-wetland replication prohibits its use in broad-scale monitoring of trends in aquatic invertebrate biodiversity. In this paper, we report results of testing an alternative protocol, whereby only two samples are collected from a wetland per monitoring event and then analysed using ordination to detect any changes in invertebrate biodiversity over time. Simulated data suggested ordination of combined data from the two samples would detect 20% species turnover and be a cost-effective method of monitoring changes in biodiversity, whereas power analyses showed about 10 samples were required to detect 20% change in species richness using ANOVA. Errors will be higher if years with extreme climatic events (e.g. drought), which often have dramatic short-term effects on invertebrate communities, are included in analyses. We also suggest that protocols for monitoring aquatic invertebrate biodiversity should include microinvertebrates. Almost half the species collected from the wetlands in this study were microinvertebrates and their biodiversity was poorly predicted by macroinvertebrate data.

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