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Featured researches published by P. Baran.


Ecological Modelling | 1996

Application of neural networks to modelling nonlinear relationships in ecology

Sovan Lek; Marc Delacoste; P. Baran; Ioannis Dimopoulos; Jacques Lauga; Stéphane Aulagnier

Abstract Two predictive modelling principles are discussed: multiple regression (MR) and neural networks (NN). The MR principle of linear modelling often gives low performance when relationships between variables are nonlinear; this is often the case in ecology; some variables must therefore be transformed. Despite these manipulations, the results often remain disappointing: poor prediction, dependence of residuals on the variable to predict. On the other hand NN are nonlinear type models. They do not necessitate transformation of variables and can give better results. The application of these two techniques to a set of ecological data (study of the relationship between density of brown trout spawning sites (redds) and habitat characteristics), shows that NN are clearly more performant than MR (R2 = 0.96 vs R2 = 0.47 or R2 = 0.72 in raw variables or nonlinear transformed variables). With the calculation power now currently available, NN are easy to implement and can thus be recommended for modelling of a number ecological processes.


Hydrobiologia | 1996

Stochastic models that predict trout population density or biomass on a mesohabitat scale

P. Baran; Sovan Lek; Marc Delacoste; Alain Belaud

Neural networks and multiple linear regression models of the abundance of brown trout (Salmo trutta L.) on the mesohabitat scale were developed from combinations of physical habitat variables in 220 channel morphodynamic units (pools, riffles, runs, etc.) of 11 different streams in the central Pyrenean mountains. For all the 220 morphodynamic units, the determination coefficients obtained between the estimated and observed values of density or biomass were significantly higher for the neural network (r2 adjusted= 0.93 and r2 adjusted=0.92 (p<0.01) for biomass and density respectively with the neural network, against r2 adjusted=0.69 (p<0.01) and r2 adjusted = 0.54 (p<0.01) with multiple linear regression). Validation of the multivariate models and learning of the neural network developed from 165 randomly chosen channel morphodynamic units, was tested on the 55 other channel morphodynamic units. This showed that the biomass and density estimated by both methods were significantly related to the observed biomass and density. Determination coefficients were significantly higher for the neural network (r2 adjusted =0.72 (p<0.01) and 0.81 (p<0.01) for biomass and density respectively) than for the multiple regression model (r2 adjusted=0.59 and r2 adjusted=0.37 for biomass and density respectively). The present study shows the advantages of the backpropagation procedure with neural networks over multiple linear regression analysis, at least in the field of stochastic salmonid ecology.


Nonlinear Analysis-theory Methods & Applications | 1997

Estimations of trout density and biomass: a neural networks approach

Sovan Lek; P. Baran

Abstract In this paper, we report the use of artificial neural networks to predict the density and biomass of trout in the Pyrenees mountains from 8 physical parameters of the environment. The results obtained with a three-layered neural network are presented. Studies have been undertaken with 1 or 4 variables in the output layer of the network. Results on the test set (generalization of models) are satisfactory with determination coefficients R 2 exceeding 0.76.


Aquatic Living Resources | 1996

Role of some environmental variables in trout abundance models using neural networks

Sovan Lek; Alain Belaud; P. Baran; Ioannis Dimopoulos; Marc Delacoste


Regulated Rivers-research & Management | 2001

Factors regulating brown trout populations in two French rivers: application of a dynamic population model

Véronique Gouraud; J.L. Baglinière; P. Baran; C. Sabaton; Puy Lim; D. Ombredane


Regulated Rivers-research & Management | 1995

Effects of reduced flow on brown trout (Salmo trutta L.) populations downstream dams in french pyrenees

P. Baran; Marc Delacoste; Francis Dauba; J.-Marc Lascaux; Alain Belaud; Sovan Lek


Fundamental and Applied Limnology | 2001

Role of temperature and flow regulation on the Salmoniform - Cypriniform transition

Yorick Reyjol; Puy Lim; Francis Dauba; P. Baran; Alain Belaud


Bulletin Francais De La Peche Et De La Pisciculture | 1997

Bilan des introductions de salmonidés dans les lacs et ruisseaux d'altitude des Hautes-Pyrénées

Marc Delacoste; P. Baran; J. M. Lascaux; N. Abad; J. P. Besson


Bulletin Francais De La Peche Et De La Pisciculture | 1995

Classification et clé de détermination des faciès d'écoulements en rivières de montagne

Marc Delacoste; P. Baran; Sovan Lek; J. M. Lascaux


Bulletin Francais De La Peche Et De La Pisciculture | 1993

Relations entre les caractéristiques de l'habitat et les populations de truites communes (Salmo trutta L.) de la vallée de la Neste d'Aure

P. Baran; Marc Delacoste; J. M. Lascaux; Alain Belaud

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Marc Delacoste

École Normale Supérieure

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Alain Belaud

École Normale Supérieure

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Sovan Lek

Paul Sabatier University

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J. M. Lascaux

École Normale Supérieure

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Puy Lim

École Normale Supérieure

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C. Sabaton

Électricité de France

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Francis Dauba

École Normale Supérieure

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G. Segura

École Normale Supérieure

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