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A Spatial Model for the Instantaneous Estimation of Wind Power at a Large Number of Unobserved Sites
Author(s) -
Amanda Lenzi,
G. Guillot,
Pierre Pinson
Publication year - 2015
Publication title -
procedia environmental sciences
Language(s) - English
Resource type - Journals
ISSN - 1878-0296
DOI - 10.1016/j.proenv.2015.05.017
Subject(s) - estimation , econometrics , wind power , computer science , statistics , geography , environmental science , economics , mathematics , engineering , management , electrical engineering
We propose a hierarchical Bayesian spatial model to obtain predictive densities of wind power at a set of un-monitored locations. The model consists of a mixture of Gamma density for the non-zero values and degenerated distributions at zero. The spatial dependence is described through a common Gaussian random field with a Matérn covariance. For inference and prediction, we use the GMRF-SPDE approximation implemented in the R-INLA package. We showcase the method outlined here on data for 336 wind farms located in Denmark. We test the predictions derived from our method with model-diagnostic tools and show that it is calibrated

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