A multi-parameter artificial neural network model to estimate macrobenthic invertebrate productivity and production


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Thomas.Brey [ at ] awi.de

Abstract

I developed a new model for estimating annual production-to-biomass ratio P/B and production P of macrobenthic populations in marine and freshwater habitats. Self-learning artificial neural networks (ANN) were used to model the relationships between P/B and twenty easy-to-measure abiotic and biotic parameters in 1252 data sets of population production. Based on log-transformed data, the final predictive model estimates log(P/B) with reasonable accuracy and precision (r 2 = 0.801; residual mean square RMS = 0.083). Body mass and water temperature contributed most to the explanatory power of the model. However, as with all least squares models using nonlinearly transformed data, back-transformation to natural scale introduces a bias in the model predictions, i.e., an underestimation of P/B (and P). When estimating production of assemblages of populations by adding up population estimates, accuracy decreases but precision increases with the number of populations in the assemblage. © 2012, by the American Society of Limnology and Oceanography, Inc.



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30365
DOI https://www.doi.org/10.4319/lom.2012.10.581

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Brey, T. (2012): A multi-parameter artificial neural network model to estimate macrobenthic invertebrate productivity and production , Limnology and Oceanography: Methods, 10 (8), pp. 581-589 . doi: https://www.doi.org/10.4319/lom.2012.10.581


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