Energy Prediction of Edge-side Photovoltaic Power Generation Based on Hierarchical Fuzzy Neural Network
The wide access of new energy,represented by dis-tributed photovoltaic,has brought about new demands such as real-time business responsiveness intelligent analysis and pro-cessing within the substations.The issue of local autonomy for distributed new energy consumption is rarely addressed in the literature.The key to optimizing new energy consumption lies in accurate prediction of photovoltaic power generation and rapid development of edge devices for Internet of Things.Based on the power grid dispatching Internet of Things,in this paper we propose a local autonomy solution for new energy consumption combined with the energy router of the substation.An energy controller is designed for distributed new energy consumption,and the energy produced by photovoltaic power generation is predicted based on hierarchical fuzzy neural net-work algorithm.The research results demonstrate that the en-ergy controller developed in this paper,along with the hierarch-ical fuzzy neural network model,exhibit certain effects and ad-vantages in enhancing the autonomy at edge-side stations.
energy routerdistributed photovoltaic genera-tionpower generation prediction modelnew energy con-sumption