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Adaptive aggregated predictions for renewable energy systems
2014
2014 IEEE Symposium on Adaptive Dynamic Programming and Reinforcement Learning (ADPRL)
The paper addresses the problem of generating forecasts for energy production and consumption processes in a renewable energy system. The forecasts are made for a prototype public lighting microgrid, which includes photovoltaic panels and LED luminaries that regulate their lighting levels, as inputs for a receding horizon controller. Several stochastic models are fitted to historical times-series data and it is argued that side information, such as clear-sky predictions or typical system
doi:10.1109/adprl.2014.7010625
dblp:conf/adprl/CsajiKV14
fatcat:uwldn4hdgffsndebmr3l72ib2m