Center for Biofilm Engineering
Abstract:
"Characterizing temporal development of biofilm
porosity using artificial neural networks"
08-021
We used artificial neural networks (ANN) to compute parameters characterising
biofilm structure from biofilm images and to interpolate a limited number of
experimental data characterising the effects of nutrient concentration and flow
velocity on the areal porosity of biofilms. ANN were trained using a set of
experimental data characterising structural parameters of biofilms of
Pseudomonas aeruginosa (ATCC #700829), Pseudomonas fluorescens (ATCC #700830)
and Klebsiella pneumoniae (ATCC #700831) for various flow velocities and glucose
concentrations. We used 80% of the data to train ANN and 10% of the data to
validate the results, which is routinely carried out as a countermeasure against
overtraining. Trained ANN were used to interpolate into the data set and
evaluate the missing
10% of the data. To compare ANN accuracy in evaluating the missing data with the
accuracies
achieved using other interpolation algorithms, we used spline, cubic, linear and
nearest neighbour interpolation algorithms to evaluate the missing data. ANN
estimates were consistently closer to the experimental data than the estimates
made using the other methods.
"Characterizing temporal development of biofilm porosity using artificial
neural networks"
Veluchamy R, Beyenal H, Lewandowski Z
Water Science & Technology 2008; 57(12):1867-1872
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