Statistical Analysis of Wind Power Forecast Error
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Abstract
Wind power forecast error usually has been assumed to have a near Gaussian distribution. With a simple statistical analysis, it can be shown that this is not valid. To obtain a more appropriate probability density function (pdf) of the wind power forecast error, an indirect algorithm based on the Beta pdf is proposed. Measured one-year time series from two different wind farms are used to generate the forecast data. Three different forecast scenarios are simulated based on the persistence approach. This makes the results comparable to other forecast methods. It is found that the forecast error pdf has a variable kurtosis ranging from 3 (like the Gaussian) to over 10, and therefore it can be categorized as…
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Topics
Keywords
- Probability density function
- Wind power
- Forecast error
- Kurtosis
- Wind power forecasting
- Forecast verification
- Gaussian
- Statistics
UN Sustainable Development Goals
- Affordable and clean energy
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