TY - JOUR
T1 - Spatial models for probabilistic prediction of wind power with application to annual-average and high temporal resolution data
AU - Lenzi, Amanda
AU - Pinson, Pierre
AU - Clemmensen, Line H.
AU - Guillot, Gilles
N1 - Funding Information:
Acknowledgments The data used here was kindly provided by Ener-ginet.dk (system operator in Denmark) which is hereby acknowledged, then quality was checked and prepared by Robin Girard at Mines Paristech, France. The authors also thank the Danish Strategic Council for Strategic Research through the project 5s—Future Electricity Markets (No. 12-132636/DSF), the Danish e-Infrastructure Cooperation, DeIC and CAPES for support. Moreover, we thank the Associated Editor and the two reviewers who provided valuable comments.
Funding Information:
The data used here was kindly provided by Energinet.dk (system operator in Denmark) which is hereby acknowledged, then quality was checked and prepared by Robin Girard at Mines Paristech, France. The authors also thank the Danish Strategic Council for Strategic Research through the project 5s?Future Electricity Markets (No. 12-132636/DSF), the Danish e-Infrastructure Cooperation, DeIC and CAPES for support. Moreover, we thank the Associated Editor and the two reviewers who provided valuable comments.
Publisher Copyright:
© 2016, The Author(s).
PY - 2017/9/1
Y1 - 2017/9/1
N2 - Producing accurate spatial predictions for wind power generation together with a quantification of uncertainties is required to plan and design optimal networks of wind farms. Toward this aim, we propose spatial models for predicting wind power generation at two different time scales: for annual average wind power generation, and for a high temporal resolution (typically wind power averages over 15-min time steps). In both cases, we use a spatial hierarchical statistical model in which spatial correlation is captured by a latent Gaussian field. We explore how such models can be handled with stochastic partial differential approximations of Matérn Gaussian fields together with Integrated Nested Laplace Approximations. We demonstrate the proposed methods on wind farm data from Western Denmark, and compare the results to those obtained with standard geostatistical methods. The results show that our method makes it possible to obtain fast and accurate predictions from posterior marginals for wind power generation. The proposed method is applicable in scientific areas as diverse as climatology, environmental sciences, earth sciences and epidemiology.
AB - Producing accurate spatial predictions for wind power generation together with a quantification of uncertainties is required to plan and design optimal networks of wind farms. Toward this aim, we propose spatial models for predicting wind power generation at two different time scales: for annual average wind power generation, and for a high temporal resolution (typically wind power averages over 15-min time steps). In both cases, we use a spatial hierarchical statistical model in which spatial correlation is captured by a latent Gaussian field. We explore how such models can be handled with stochastic partial differential approximations of Matérn Gaussian fields together with Integrated Nested Laplace Approximations. We demonstrate the proposed methods on wind farm data from Western Denmark, and compare the results to those obtained with standard geostatistical methods. The results show that our method makes it possible to obtain fast and accurate predictions from posterior marginals for wind power generation. The proposed method is applicable in scientific areas as diverse as climatology, environmental sciences, earth sciences and epidemiology.
KW - Integrated nested Laplace approximation
KW - Latent Gaussian field
KW - Spatial prediction
KW - Wind power
U2 - 10.1007/s00477-016-1329-0
DO - 10.1007/s00477-016-1329-0
M3 - Journal article
AN - SCOPUS:84991045187
SN - 1436-3240
VL - 31
SP - 1615
EP - 1631
JO - Stochastic Environmental Research and Risk Assessment
JF - Stochastic Environmental Research and Risk Assessment
IS - 7
ER -