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Generation and Validation of Spatial Distribution of Hourly Wind Speed Time-Series using Machine Learning
2016
Journal of Physics, Conference Series
Wind resource assessment is a key aspect of wind farm planning since it allows to estimate the long term electricity production. Moreover, wind speed time-series at high resolution are helpful to estimate the temporal changes of the electricity generation and indispensable to design stand-alone systems, which are affected by the mismatch of supply and demand. In this work, we present a new generalized statistical methodology to generate the spatial distribution of wind speed time-series, using
doi:10.1088/1742-6596/749/1/012001
fatcat:q2rsgeekbbgbvlrd62gkmkmy2i