Forward-Flyback Resonant Topology with Edge AI for MPPT Control in Solar Power Generation
Metadatos
Mostrar el registro completo del ítemAutor
Cruz Cozar, Juan; Méndez, Javier; Molina, Miguel; Perez Martinez, Jorge; Martín Martín, Alberto; Rodriguez, Noel; Morales, Diego P.Editorial
MDPI
Materia
solar energy low consumption AI resonant flyback
Fecha
2026-04-12Referencia bibliográfica
Cruz-Cozar, J., Mendez, J., Molina, M., Perez-Martinez, J., Martin-Martin, A., Rodriguez, N., & Morales, D. P. (2026). Forward-Flyback Resonant Topology with Edge AI for MPPT Control in Solar Power Generation. Journal of Low Power Electronics and Applications, 16(2), 13. https://doi.org/10.3390/jlpea16020013
Patrocinador
Chips Joint Undertaking - (101139790)Resumen
Distributed energy systems open up a vast field of research in power electronics. Local solar power generation requires DC-DC converters that adapt the energy generated by the panels to on-site distribution buses. In addition, the control of the power converter to obtain the maximum possible energy from the solar source is crucial for the correct deployment of these distributed grids. In this work, system-level solutions are proposed for this application as follows: On the one hand, the use of novel resonant forward-flyback converters allows for a higher energy density than that of a conventional flyback and more relaxed withstand voltages on the switching elements. On the other hand, the implementation of maximum power point tracking algorithms for solar energy using Edge AI enables the deployment of algorithms that maximize the energy obtained locally. These improvements are shown by means of a prototype demonstrator, using cutting-edge microcontrollers and the implementation of a DC-DC power converter based on the proposed topology.





