| Literature DB >> 23985353 |
L López-Rosales1, J J Gallardo-Rodríguez1, A Sánchez-Mirón1, A Contreras-Gómez1, F García-Camacho2, E Molina-Grima1.
Abstract
This study examines the use of artificial neural networks as predictive tools for the growth of the dinoflagellate microalga Protoceratium reticulatum. Feed-forward back-propagation neural networks (FBN), using Levenberg-Marquardt back-propagation or Bayesian regularization as training functions, offered the best results in terms of representing the nonlinear interactions among all nutrients in a culture medium containing 26 different components. A FBN configuration of 26-14-1 layers was selected. The FBN model was trained using more than 500 culture experiments on a shake flask scale. Garson's algorithm provided a valuable means of evaluating the relative importance of nutrients in terms of microalgal growth. Microelements and vitamins had a significant importance (approximately 70%) in relation to macronutrients (nearly 25%), despite their concentrations in the culture medium being various orders of magnitude smaller. The approach presented here may be useful for modelling multi-nutrient interactions in photobioreactors.Entities:
Keywords: Artificial neural network; Dinoflagellate; Growth modelling; Microalga
Mesh:
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Year: 2013 PMID: 23985353 DOI: 10.1016/j.biortech.2013.07.141
Source DB: PubMed Journal: Bioresour Technol ISSN: 0960-8524 Impact factor: 9.642