Short-term photovoltaic output prediction based on advanced prediction
error NGA-ELMAN cascade neural network
Abstract
Improving the accuracy of photovoltaic power prediction is crucial for
grid scheduling planning and is essential for the safe, stable, and
economic operation of power systems. Based on the statistical
characterization of the data, a two-stage PV power prediction model with
error correction is developed. First, an Elman neural network model
optimized by a small habitat genetic algorithm is introduced;
subsequently, a more accurate model for the preliminary prediction error
probability distribution is established, based on its distribution
characteristics. This model aims to achieve error correction of the
preliminary prediction results. The empirical results, derived from
actual PV power curves and meteorological data, demonstrate the
effectiveness of the proposed method.