2008
DOI: 10.1002/we.284
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From probabilistic forecasts to statistical scenarios of short‐term wind power production

Abstract: Short-term (up to 2-3 days ahead) probabilistic forecasts of wind power provide forecast users with a highly valuable information on the uncertainty of expected wind generation. Whatever the type of these probabilistic forecasts, they are produced on a per horizon basis, and hence do not inform on the development of the forecast uncertainty through forecast series. However, this additional information may be paramount for a large class of time-dependent and multi-stage decision-making problems e.g. optimal ope… Show more

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Cited by 436 publications
(354 citation statements)
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“…Since the probabilistic forecasts (i.e., set of quantiles) produced by the quantile regression method do not capture the temporal correlation between forecast errors (i.e., uncertainty) of different hours, a scenario generation method described in [78] is used to generate a number of wind power scenarios that provide information on the development of the prediction errors through the set of look-ahead times. The method takes as inputs the forecasted quantiles for each look-ahead time-step and also the observed wind power generation.…”
Section: Forecasting and Scenario Generation Approachesmentioning
confidence: 99%
See 4 more Smart Citations
“…Since the probabilistic forecasts (i.e., set of quantiles) produced by the quantile regression method do not capture the temporal correlation between forecast errors (i.e., uncertainty) of different hours, a scenario generation method described in [78] is used to generate a number of wind power scenarios that provide information on the development of the prediction errors through the set of look-ahead times. The method takes as inputs the forecasted quantiles for each look-ahead time-step and also the observed wind power generation.…”
Section: Forecasting and Scenario Generation Approachesmentioning
confidence: 99%
“…A specified number of scenarios are obtained through sampling from an inverse cumulative distribution function. More details about the method can be found in [78]. The scenarios produced by the method have the following characteristics: (i) they respect the marginal wind power forecasted distribution for the coming horizon (i.e., probabilistic forecasts); and (ii) the temporal correlation of forecast errors are embedded in the scenarios values.…”
Section: Forecasting and Scenario Generation Approachesmentioning
confidence: 99%
See 3 more Smart Citations