Neural Network-based Integrated Reactive Power Optimization Study for
Power Grids Containing Large-scale Wind Power
Abstract
This paper proposes a neural network-based integrated reactive power
optimisation method for power grids containing large-scale wind power,
which improves the generalisation capability of the neural network by
constructing a typical wind-load scenario, and solves the integrated
reactive power optimisation problem for a typical wind-load scenario
after it is connected to the system using the Harris Hawk Optimisation
algorithm (HHO) The method is designed to reduce the computational
effort and decision time of reactive power optimization by deeply
fitting the mapping relationship between grid operation state and
comprehensive reactive power optimization strategy through neural
networks.