Title of article :
Developing an empirical model of phytoplankton primary production: a neural network case study
Author/Authors :
Scardi، نويسنده , , Michele and Harding Jr.، نويسنده , , Lawrence W، نويسنده ,
Abstract :
We describe the development of a neural network model for estimating primary production of phytoplankton. Data from an enriched estuary in the eastern United States, Chesapeake Bay, were used to train, validate and test the model. Two error backpropagation multilayer perceptrons were trained: a simpler one (3-5-1) and a more complex one (12-5-1). Both neural networks outperformed conventional empirical models, even though only the latter, which exploits a larger suite of predictive variables, provided truly accurate outputs. The application of this neural network model is thoroughly discussed and the results of a sensitivity analysis are also presented.
Keywords :
Empirical Models , primary production , Artificial neural networks , phytoplankton , Chesapeake Bay
Journal title :
Astroparticle Physics