Groß, ArneArneGroßWittwer, ChristofChristofWittwerDiehl, MoritzMoritzDiehl2023-06-282023-06-282020https://publica.fraunhofer.de/handle/publica/26363410.1016/j.ejcon.2020.02.004Photovoltaic (PV) battery systems allow citizens to take part in a more sustainable energy system. Using the electric energy produced on-site usually entails a financial benefit for the consumer. Furthermore, feed-in peaks during high photovoltaic generation sometimes cause local voltage violations. Therefore, a feed-in limit applies to PV battery systems. In our study, we present a method to generate an optimal control that takes into account the forecast uncertainties. To that end, a stochastic forecast model is developed and used in a dynamic programming framework. We carry out a simulation study assuming the regulatory constraints in Germany. In this setup, our method is shown to mitigate the effects of the forecast uncertainties better than comparable methods.enLeistungselektronikNetze und Intelligente Systemeintelligentes Netz621697Stochastic model predictive control of photovoltaic battery systems using a probabilistic forecast modeljournal article