Improved Ecmwf Forecasts Of Direct Normal Irradiance: A Tool For Better Operational Strategies In Concentrating Solar Power Plants

RENEWABLE ENERGY(2021)

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Abstract
To contribute for improved operational strategies of concentrating solar power plants with accurate forecasts of direct normal irradiance, this work describes the use of several post-processing methods on numerical weather prediction. Focus is given to a multivariate regression model that uses measured irradiance values from previous hours to improve next-hour predictions, which can be used to refine daily strategies based on day-ahead predictions. Short-term forecasts provided by the Integrated Forecasting System, the global model from the European Centre for Medium-Range Weather Forecasts (ECMWF), are used together with measurements in southern Portugal. As a nowcasting tool, the proposed regression model significantly improves hourly predictions with a skill score of approximate to 0.84 (i.e. an increase of approximate to 27.29% towards the original hourly forecasts). Using previous-day measured availability to improve next-day forecasts, the model shows a skill score of approximate to 0.78 (i.e. an increase of approximate to 6% towards the original forecasts), being further improved if larger sets of data are used. Through a power plant simulator (i.e. the System Advisor Model), a preliminary economic analysis shows that using improved hourly predictions of electrical energy allows to enhance a power plant's profit in approximate to 0.44 M(sic)/year, as compared with the original forecasts. Operational strategies are proposed accordingly. (C) 2020 Elsevier Ltd. All rights reserved.
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Key words
ECMWF, Direct normal irradiance, Short-term forecasting, Model output statistics, Concentrating solar power operation, Energy production simulations
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