4.5 Article

A Novel Short-Term Photovoltaic Power Forecasting Approach based on Deep Convolutional Neural Network

Journal

INTERNATIONAL JOURNAL OF GREEN ENERGY
Volume 18, Issue 5, Pages 525-539

Publisher

TAYLOR & FRANCIS INC
DOI: 10.1080/15435075.2021.1875474

Keywords

Photovoltaic power plant; photovoltaic power forecasting; convolutional neural network; empirical mode decomposition; deep learning

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A novel photovoltaic power forecasting system using a deep Convolutional Neural Network and decomposition algorithm was proposed, showing superior performance compared to benchmark regression algorithms under various weather conditions.
In this study, a novel photovoltaic power forecasting system that utilizes a deep Convolutional Neural Network (CNN) structure and an input signal decomposition algorithm is proposed. The proposed CNN architecture extracts deep features to forecast short-term power using transfer learning-based AlexNet. The historical power, solar radiation, wind speed, and temperature data are selected as the input. The signal decomposition algorithm called Empirical Mode Decomposition (EMD) is utilized to decompose the historical power signal into sub-components. In order to extract deep features, all input parameters are converted to 2D feature maps and feed to the input of the CNN. The experiments are realized on a grid-tied Photovoltaic Power Plant (PVPP) that has 1000 kW installed capacity located in Turkey. The experiments are performed under four weather conditions as partial cloudy, cloudy-rainy, heavy-rainy, and sunny days to show the effectiveness of the proposed method. The obtained results are compared with the benchmark regression algorithms. When the results are analyzed, the proposed method gives the highest Correlation Coefficient (R) and the lowest Root Mean Square Error (RMSE), Mean Absolute Error (MAE), and SMAPE values under all horizons and weather conditions. For 1-h to 5-h ahead, the average R values of the proposed method are obtained as 97.28%, 95.77%, 94.49%, 93.61%, and 92.62%, respectively. The average RMSE values are observed as 4.90%, 6.30%, 7.50%, 8.00%, and 9.17% for 1-h to 5-h ahead. The experimental results confirm that the proposed method outperforms the conventional regression algorithms and reveals effective results with its competitive performance.

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