4.5 Article

Short-Term PV Power Forecasting Using a Regression-Based Ensemble Method

期刊

ENERGIES
卷 15, 期 11, 页码 -

出版社

MDPI
DOI: 10.3390/en15114171

关键词

PV power forecasting; ensemble method; Random forest; linear regression; support vector machine; clustering method

资金

  1. Ministry of Science and Technology, Taiwan [MOST 110-3116-F-006-001]

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This study proposes a regression-based ensemble method for day-ahead photovoltaic (PV) power forecasting, which combines multiple forecasting models to improve accuracy. The method consists of three steps: model training, creating optimal weights, and testing. The results show that the proposed method outperforms other methods in terms of mean relative error (MRE), mean absolute error (MAE), and coefficient of determination (R-2).
One of the most critical aspects of integrating renewable energy sources into the smart grid is photovoltaic (PV) power generation forecasting. This ensemble forecasting technique combines several forecasting models to increase the forecasting accuracy of the individual models. This study proposes a regression-based ensemble method for day-ahead PV power forecasting. The general framework consists of three steps: model training, creating the optimal set of weights, and testing the model. In step 1, a Random forest (RF) with different parameters is used for a single forecasting method. Five RF models (RF1, RF2, RF3, RF4, and RF5) and a support vector machine (SVM) for classification are established. The hyperparameters for the regression-based method involve learners (linear regression (LR) or support vector regression (SVR)), regularization (least absolute shrinkage and selection operator (LASSO) or Ridge), and a penalty coefficient for regularization (lambda). Bayesian optimization is performed to find the optimal value of these three hyperparameters based on the minimum function. The optimal set of weights is obtained in step 2 and each set of weights contains five weight coefficients and a bias. In the final step, the weather forecasting data for the target day is used as input for the five RF models and the average daily weather forecasting data is also used as input for the SVM classification model. The SVM output selects the weather conditions, and the corresponding set of weight coefficients from step 2 is combined with the output from each RF model to obtain the final forecasting results. The stacking recurrent neural network (RNN) is used as a benchmark ensemble method for comparison. Historical PV power data for a PV site in Zhangbin Industrial Area, Taiwan, with a 2000 kWp capacity is used to test the methodology. The results for the single best RF model, the stacking RNN, and the proposed method are compared in terms of the mean relative error (MRE), the mean absolute error (MAE), and the coefficient of determination (R-2) to verify the proposed method. The results for the MRE show that the proposed method outperforms the best RF method by 20% and the benchmark method by 2%.

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