z-logo
Premium
Water quality assessment using diatom assemblages and advanced modelling techniques
Author(s) -
Gevrey Muriel,
Rimet Frédéric,
Park Young Seuk,
Giraudel JeanLuc,
Ector Luc,
Lek Sovan
Publication year - 2004
Publication title -
freshwater biology
Language(s) - English
Resource type - Journals
SCImago Journal Rank - 1.297
H-Index - 156
eISSN - 1365-2427
pISSN - 0046-5070
DOI - 10.1046/j.1365-2426.2003.01174.x
Subject(s) - diatom , canonical correspondence analysis , self organizing map , canonical correlation , predictability , multilayer perceptron , cluster analysis , sample (material) , artificial neural network , assemblage (archaeology) , ecology , computer science , artificial intelligence , statistics , mathematics , species richness , biology , chemistry , chromatography
Summary 1. Two types of artificial neural networks procedures were used to define and predict diatom assemblage structures in Luxembourg streams using environmental data. 2. Self‐organising maps (SOM) were used to classify samples according to their diatom composition, and multilayer perceptron with a backpropagation learning algorithm (BPN) was used to predict these assemblages using environmental characteristics of each sample as input and spatial coordinates ( X and Y ) of the cell centres of the SOM map identified as diatom assemblages as output. Classical methods (correspondence analysis and clustering analysis) were then used to identify the relations between diatom assemblages and the SOM cell number. A canonical correspondence analysis was also used to define the relationship between these assemblages and the environmental conditions. 3. The diatom‐SOM training set resulted in 12 representative assemblages (12 clusters) having different species compositions. Comparison of observed and estimated sample positions on the SOM map were used to evaluate the performance of the BPN (correlation coefficients were 0.93 for X and 0.94 for Y ). Mean square errors of 12 cells varied from 0.47 to 1.77 and the proportion of well predicted samples ranged from 37.5 to 92.9%. This study showed the high predictability of diatom assemblages using physical and chemical parameters for a small number of river types within a restricted geographical area.

This content is not available in your region!

Continue researching here.

Having issues? You can contact us here