Literature DB >> 36101650

Spatio-temporal estimation of wind speed and wind power using extreme learning machines: predictions, uncertainty and technical potential.

Federico Amato1, Fabian Guignard2, Alina Walch3, Nahid Mohajeri4, Jean-Louis Scartezzini3, Mikhail Kanevski5.   

Abstract

With wind power providing an increasing amount of electricity worldwide, the quantification of its spatio-temporal variations and the related uncertainty is crucial for energy planners and policy-makers. Here, we propose a methodological framework which (1) uses machine learning to reconstruct a spatio-temporal field of wind speed on a regular grid from spatially irregularly distributed measurements and (2) transforms the wind speed to wind power estimates. Estimates of both model and prediction uncertainties, and of their propagation after transforming wind speed to power, are provided without any assumptions on data distributions. The methodology is applied to study hourly wind power potential on a grid of 250 × 250  m 2 for turbines of 100 m hub height in Switzerland, generating the first dataset of its type for the country. We show that the average annual power generation per turbine is 4.4 GWh. Results suggest that around 12,000 wind turbines could be installed on all 19,617 km 2 of available area in Switzerland resulting in a maximum technical wind potential of 53 TWh. To achieve the Swiss expansion goals of wind power for 2050, around 1000 turbines would be sufficient, corresponding to only 8% of the maximum estimated potential. Supplementary Information: The online version contains supplementary material available at 10.1007/s00477-022-02219-w.
© The Author(s) 2022.

Entities:  

Keywords:  Big data mining; Extreme learning machine; Machine learning; Renewable energy; Uncertainty quantification

Year:  2022        PMID: 36101650      PMCID: PMC9463360          DOI: 10.1007/s00477-022-02219-w

Source DB:  PubMed          Journal:  Stoch Environ Res Risk Assess        ISSN: 1436-3240            Impact factor:   3.821


  1 in total

1.  A novel framework for spatio-temporal prediction of environmental data using deep learning.

Authors:  Federico Amato; Fabian Guignard; Sylvain Robert; Mikhail Kanevski
Journal:  Sci Rep       Date:  2020-12-17       Impact factor: 4.379

  1 in total

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