Abstract

The integration of photovoltaic power brings the key to clean energy. However, the increasing proportion of photovoltaic (PV) energy in power systems due to the random and intermittent nature of solar energy resources is causing difficulties for system operators to dispatch PV power stations. To reduce the negative influence of the use of PV power, it is great significant to predict PV power accurately. In this paper, we propose a high-precision hybrid neural network model that employs Gated Recurrent Units (GRU) and Convolution Neural Network (CNN) to build a GRU-CNN model to forecast PV system output power. The proposed framework has two major phases. Firstly, the sample data is divided into training set and test set. For this, the temporal characteristics of the data set are extracted using a GRU model and the spatial characteristics are obtained using the CNN model. Secondly, the final predicted PV power is obtained through the output layer. The forecasting accuracy of GRU-CNN is determined by the mean absolute error (MAE), mean square error (MSE), determination coefficient (R2) and root mean square error (RMSE) values. The findings of the comparison experiments show that the GRU-CNN model has better accuracy than some deep learning methods, including, GRU, CNN and long-short term memory model (LSTM).

Highlights

  • It is evident that the utilization of renewable energy sources has increased worldwide

  • Gated recurrent unit (GRU) [20] is an advancement of the standard RNN based on optimized long-short term memory model (LSTM), and the internal unit of the Gated Recurrent Units (GRU) is identical to the LSTM[21]

  • This paper proposes a new short term prediction model based on GRU and Convolution Neural Network (CNN), which mainly introduces the application of GRU-CNN in short-photovoltaic power prediction

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Summary

Introduction

It is evident that the utilization of renewable energy sources has increased worldwide. This increase is due to the advantages of renewable energy sources and their impact on the environment, in addition to the huge increase in demand for load [1, 2]. Photovoltaic (PV) power generation can convert solar power into electric energy through the photovoltaic effect, which is one among the foremost promising renewable power generation techniques [4]. Wang used novel approach based on Gated recurrent unit networks to forecast short-term Photovoltaic power [23]. Kim et al proposed CNN-LSTM model to predict electricity and recorded the lowest error rates as compared to other classical models, because CNN-LSTM model learned from both spatial and temporal features [24]. Deep learning models are potential in the field of Photovoltaic power prediction, they still require to be further researched as there are limited existing studies currently concentrating on input feature construction and model training

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