• Title of article

    Grazing rate of zebra mussel in a shallow eutrophicated bay of the Baltic Sea

  • Author/Authors

    Oganjan، نويسنده , , Katarina and Lauringson، نويسنده , , Velda، نويسنده ,

  • Issue Information
    روزنامه با شماره پیاپی سال 2014
  • Pages
    8
  • From page
    43
  • To page
    50
  • Abstract
    Benthic suspension feeding is an important process in coastal ecosystems. Among all the Worldʹs oceans, coastal ecosystems are the most modified by human impact and changing at accelerating pace. It is complicated to understand, how various environmental factors affect feeding rates of suspension feeders in their natural habitats. Thus, shapes of such relationships are poorly described for several intersections of environmental gradients. In this study, relationships between grazing rates of an invasive bivalve Dreissena polymorpha and ambient environmental factors were investigated in a turbid eutrophic bay of the central Baltic Sea using a novel modelling method of Boosted Regression Trees (BRT), a statistical tool able to handle non-normal distributions, complex relationships, and interactive effects. Feeding rates of mussels were derived from field populations by measuring the content of algal pigments in specimens collected from their natural habitat. The content of pigments was converted to feeding rate separately each time using field experiments measuring simultaneously the content of pigments and biodeposition of mussels. sults suggest that feeding rates of D. polymorpha are related to several environmental factors which gradients outreach the optimal range for the local mussel population. All the observed effects were non-linear with complex shapes. Variability along the resource gradient was the most important predictor of mussel feeding, followed by salinity and disturbance caused by wind. The most important interaction occurred between disturbance and resource gradient, while feeding function showed more plasticity along the latter. Mapping of environmental tipping points with the aid of machine learning methods may enable to concentrate the most relevant information about ecological functions worldwide.
  • Keywords
    seston , BRT modelling , Dreissena polymorpha , feeding , Chlorophyll , Salinity
  • Journal title
    Marine Environmental Research
  • Serial Year
    2014
  • Journal title
    Marine Environmental Research
  • Record number

    2256456