Abstract
The ability to forecast electricity generation for a small wind turbine is important both on a larger scale where there are many such turbines (because it creates problems for networks managed by distribution system operators) and for prosumers to allow current energy consumption planning. It is also important for owners of small energy systems in order to optimize the use of various energy sources and facilitate energy storage. The research presented here addresses an original, rarely predicted 48 h forecasting horizon for small wind turbines. This topic has been rather underrepresented in research, especially in comparison with forecasts for large wind farms. Wind speed forecasts with a 48 h horizon are also rarely used as input data. We have analyzed the available data to identify potentially useful explanatory variables for forecasting models. Eight sets with increasing data amounts were created to analyze the influence of the types and amounts of data on forecast quality. Hybrid, ensemble and single methods are used for predictions, including machine learning (ML) solutions like long short-term memory (LSTM), multi-layer perceptron (MLP), support vector regression (SVR) and K-nearest neighbours regression (KNNR). Original hybrid methods, developed for research of specific implementations and ensemble methods based on hybrid methods’ decreased errors of energy generation forecasts for small wind turbines in comparison with single methods. The “artificial neural network (ANN) type MLP as an integrator of ensemble based on hybrid methods” ensemble forecasting method incorporates an original combination of predictors. Predictions by this method have the lowest mean absolute error (MAE). In addition, this paper presents an original ensemble forecasting method, called “averaging ensemble based on hybrid methods without extreme forecasts”. Predictions by this method have the lowest root mean square error (RMSE) error among all tested methods. LSTM, a deep neural network, is the best single method, MLP is the second best one, while SVR, KNNR and, especially, linear regression (LR) perform less well. We prove that lagged values of forecasted time series slightly increase the accuracy of predictions. The same applies to seasonal and daily variability markers. Our studies have also demonstrated that using the full set of available input data and the best proposed hybrid and ensemble methods yield the lowest error. The proposed hybrid and ensemble methods are also applicable to other short-time generation forecasting in renewable energy sources (RES), e.g., in photovoltaic (PV) systems or hydropower.
Highlights
Introduction distributed under the terms andRenewable energy sources have become a very important element of energy mixes in many countries across our planet
Four types of integration system were used for forecasts using “ensemble methods based on hybrid methods”: (1) Averaging ensemble based on hybrid methods
Original hybrid methods and ensemble methods based on hybrid methods, developed for researching specific implementations, have reduced errors of energy generation forecasts for a small wind turbine as compared to single methods
Summary
Introduction distributed under the terms andRenewable energy sources have become a very important element of energy mixes in many countries across our planet. The majority of green energy is produced in large hydropower stations, wind and solar farms. More and more energy has been produced every year by various types of prosumer sources. A prosumer is most often conditions of the Creative Commons. Perceived as a user of photovoltaic systems. Some prosumers use small wind turbines to produce electricity. This may be appropriate where insolation is low or wind conditions are favourable. Small wind turbines are not as convenient as PV systems for prosumers. Small wind turbines need more free space around them and can be problematic due to noise and vibration that can adversely affect people and cause structural damage. That is why wind turbines are rarely installed on buildings
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