| Home > Publications database > A Forecast-Driven Energy Management Methodology for Microgrids under Seasonal Variability |
| Contribution to a conference proceedings | FZJ-2026-01399 |
; ; ;
2025
IEEE
This record in other databases:
Please use a persistent id in citations: doi:10.1109/ICCEP65222.2025.11143761
Abstract: This paper introduces a dynamic energy management strategy based on model predictive control (MPC) for a microgrid with photovoltaic generation and an energy storage system. The strategy is designed to be able to acclimate to different seasonal situations. Moreover, to model realistic scenarios, some forecasting uncertainties are made current, using noise models for photovoltaic, load and cost variables. The performance of the MPC was also compared with an open-loop controller with pre-known trajectory prediction. Moreover, some week scenarios are carried out using real and processed solar generation data and load profiles from Milan, Italy, considering summer and winter periods. The results show the MPC strategy is able to optimize grid transactions, while the stability of the battery is kept even in hard and noisy scenarios.
|
The record appears in these collections: |