Photovoltaic power prediction of LSTM model based on Pearson feature selection
Hailang Chen, Xianfa Chang
Abstract
Accurate photovoltaic power prediction is the basis for realizing high-efficiency utilization of new energy in large-scale regional power grids. In order to deal with the influence and restriction of many factors such as ambient temperature, relative temperature and solar irradiance in the prediction of photovoltaic power generation, a photovoltaic power prediction method based on Pearson coefficient is proposed in this paper. In the prediction model, Pearson coefficients were used for correlation tests to remove irrelevant features. The remaining features were modeled using a long short-term memory network for regression prediction, and the final conclusions were drawn. The results of the algorithm show that the modified long short-term memory network has improved the mean absolute error and mean squared error of the predicted values. The prediction method, which can achieve short-term prediction of PV power and can reduce the impact of noise on PV power prediction. This research provides important support for the engineering application of energy internet related technologies to guarantee the stable operation of the power grid as well as to arrange reasonable dispatch.