Neural networks are powerful tools for phytoplankton primary production modeling, even though their application might be hindered by the limited amount of available data. Some new approaches that could enhance neural network models to overcome this problem are presented and discussed in this paper. For instance, co-predictors allow to improve neural network estimates when additional inputs from a broader range of variables are selected. Theoretical knowledge about biological processes can be easily embedded into neural network models by means of a constrained training procedure. Finally, information derived from both existing models and real data can be effectively exploited by a metamodeling approach. Since the underlying rationale applies...
14 pages, 10 figures, 7 tables, supplementary data http://dx.doi.org/10.1016/j.ecolmodel.2016.07.009...
Ecologic relationships are usually non-linear and highly complex. For this reason, artificial neural...
International audiencePhytoplankton plays a key role in the carbon cycle and supports the oceanic fo...
Enhancing the understanding of marine phytoplankton primary production is paramount due to the relat...
Marine phytoplankton primary production is an extremely important process and its estimates play a m...
Marine phytoplankton primary production is a process of paramount importance not only in biological ...
An artificial neural network (ANN), a data driven modelling approach, is proposed to predict the alg...
A research was made on the potential use of neural network based models in eutrophication modelling....
Neural networks (NN) are considered well suited to modelling ecological data, especially nonlinear r...
A generalised architecture of a feedforward ANN for the prediction of algal abundance is suggested. ...
Copyright © 2001 Elsevier Science B.V. All rights reserved.Two modelling paradigms were applied to t...
Symposium on Integrating New Advances in Mediterranean Oceanography and Marine Biology, 26-29 Novemb...
Harmful algal blooms are a natural phenomenon of growing global concern. Dense blooms of single cell...
The versatility of the neural network (NN) technique allows it to be successfully applied in many fi...
14 pages, 10 figures, 7 tables, supplementary data http://dx.doi.org/10.1016/j.ecolmodel.2016.07.009...
Ecologic relationships are usually non-linear and highly complex. For this reason, artificial neural...
International audiencePhytoplankton plays a key role in the carbon cycle and supports the oceanic fo...
Enhancing the understanding of marine phytoplankton primary production is paramount due to the relat...
Marine phytoplankton primary production is an extremely important process and its estimates play a m...
Marine phytoplankton primary production is a process of paramount importance not only in biological ...
An artificial neural network (ANN), a data driven modelling approach, is proposed to predict the alg...
A research was made on the potential use of neural network based models in eutrophication modelling....
Neural networks (NN) are considered well suited to modelling ecological data, especially nonlinear r...
A generalised architecture of a feedforward ANN for the prediction of algal abundance is suggested. ...
Copyright © 2001 Elsevier Science B.V. All rights reserved.Two modelling paradigms were applied to t...
Symposium on Integrating New Advances in Mediterranean Oceanography and Marine Biology, 26-29 Novemb...
Harmful algal blooms are a natural phenomenon of growing global concern. Dense blooms of single cell...
The versatility of the neural network (NN) technique allows it to be successfully applied in many fi...
14 pages, 10 figures, 7 tables, supplementary data http://dx.doi.org/10.1016/j.ecolmodel.2016.07.009...
Ecologic relationships are usually non-linear and highly complex. For this reason, artificial neural...
International audiencePhytoplankton plays a key role in the carbon cycle and supports the oceanic fo...