Abstract

The randomness and fluctuation of photovoltaic (PV) power brings new challenges to power system operation. Accurate PV power forecasting is critical to system dispatch. This paper applies long short-term memory network (LSTM) to forecast short-term PV power. First, Pearson correlation analysis is applied to identify features affecting PV power. The features with high correlation coefficient are selected as LSTM inputs. Short-term LSTM PV power forecasting models are then established according to different seasons and weather types. Case study is performed using PV power and numerical weather prediction (NWP) of a practical PV station in northwest China. The results obtained indicate that the forecasting models can effectively improve the forecast accuracy of short-term PV power.

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