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  • Search: person:"Nivet, Marie-Laure"
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Artificial neural networks 4 Estimation 3 Solar irradiation 3 ARMA 2 Artificial Neural Network 2 Global radiation 2 Hybrid 2 Hybrid model 2 Prediction 2 Stationarity 2 Time series 2 Time series forecasting 2 Artifical neural network 1 Artificial neural network 1 Autoregressive and moving average model 1 Autoregressive moving average 1 Bayes 1 Energy prediction 1 Mutual information 1 PV plant 1 Pressure 1 Processing 1 Stationary 1
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Undetermined 8
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Article 8
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Author
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Paoli, Christophe 8 Voyant, Cyril 6 Muselli, Marc 5 Nivet, Marie-Laure 5 Nivet, Marie Laure 3 Notton, Gilles 3 Vasileva, Siyana 2 Canaletti, Jean-Louis 1 Cristofari, Christian 1 Dahmani, Kahina 1 Darras, Christophe 1 Dizene, Rabah 1 Ivanova, Liliana 1 Poggi, Philippe 1
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Energy 4 Renewable Energy 2 Applied Energy 1 Renewable and Sustainable Energy Reviews 1
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RePEc 8
Showing 1 - 8 of 8
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Bayesian rules and stochastic models for high accuracy prediction of solar radiation
Voyant, Cyril; Darras, Christophe; Muselli, Marc; … - In: Applied Energy 114 (2014) C, pp. 218-226
It is essential to find solar predictive methods to massively insert renewable energies on the electrical distribution grid. The goal of this study is to find the best methodology allowing predicting with high accuracy the hourly global radiation. The knowledge of this quantity is essential for...
Persistent link: https://www.econbiz.de/10010729409
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Estimation of 5-min time-step data of tilted solar global irradiation using ANN (Artificial Neural Network) model
Dahmani, Kahina; Dizene, Rabah; Notton, Gilles; Paoli, … - In: Energy 70 (2014) C, pp. 374-381
Converting measured horizontal global solar irradiance in tilted ones is a difficult task, particularly for a small time-step and for not-averaged data. Conventional methods (statistical, correlation, …) are not always efficient with time-step less than one hour; thus, we want to know if an...
Persistent link: https://www.econbiz.de/10011053366
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Hybrid methodology for hourly global radiation forecasting in Mediterranean area
Voyant, Cyril; Muselli, Marc; Paoli, Christophe; Nivet, … - In: Renewable Energy 53 (2013) C, pp. 1-11
The renewable energies prediction and particularly global radiation forecasting is a challenge studied by a growing number of research teams. This paper proposes an original technique to model the insolation time series based on combining Artificial Neural Network (ANN) and Auto-Regressive and...
Persistent link: https://www.econbiz.de/10010805383
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Neural network approach to estimate 10-min solar global irradiation values on tilted planes
Notton, Gilles; Paoli, Christophe; Ivanova, Liliana; … - In: Renewable Energy 50 (2013) C, pp. 576-584
Calculation of solar global irradiation on tilted planes from only horizontal global one is particularly difficult when the time step is small. We used an Artificial Neural Network (ANN) to realize this conversion at a 10-min time step. The ANN is developed and optimized using five years of...
Persistent link: https://www.econbiz.de/10010806498
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Multi-horizon solar radiation forecasting for Mediterranean locations using time series models
Voyant, Cyril; Paoli, Christophe; Muselli, Marc; Nivet, … - In: Renewable and Sustainable Energy Reviews 28 (2013) C, pp. 44-52
Considering the grid manager′s point of view, needs in terms of prediction of intermittent energy like the photovoltaic resource can be distinguished according to the considered horizon: following days (d+1, d+2 and d+3), next day by hourly step (h+24), next hour (h+1) and next few minutes...
Persistent link: https://www.econbiz.de/10011049253
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Estimation of hourly global solar irradiation on tilted planes from horizontal one using artificial neural networks
Notton, Gilles; Paoli, Christophe; Vasileva, Siyana; … - In: Energy 39 (2012) 1, pp. 166-179
Calculating global solar irradiation from global horizontal irradiation only is a difficult task, especially when the time step is small and the data are not averaged. We used an Artificial Neural Network (ANN) to realize this conversion. The ANN is optimized and tested on the basis of five...
Persistent link: https://www.econbiz.de/10010807557
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Numerical weather prediction (NWP) and hybrid ARMA/ANN model to predict global radiation
Voyant, Cyril; Muselli, Marc; Paoli, Christophe; Nivet, … - In: Energy 39 (2012) 1, pp. 341-355
We propose in this paper an original technique to predict global radiation using a hybrid ARMA/ANN model and data issued from a numerical weather prediction model (NWP). We particularly look at the multi-layer perceptron (MLP). After optimizing our architecture with NWP and endogenous data...
Persistent link: https://www.econbiz.de/10011053431
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Optimization of an artificial neural network dedicated to the multivariate forecasting of daily global radiation
Voyant, Cyril; Muselli, Marc; Paoli, Christophe; Nivet, … - In: Energy 36 (2011) 1, pp. 348-359
This paper presents an application of Artificial Neural Networks (ANNs) to predict daily solar radiation. We look at the Multi-Layer Perceptron (MLP) network which is the most used of ANNs architectures. In previous studies, we have developed an ad-hoc time series preprocessing and optimized a...
Persistent link: https://www.econbiz.de/10011055851
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