Extended Model Predictive Controller to Develop Energy Management Systems in Renewable Source- Based Smart Microgrids with Hydrogen as Backup. Theoretical Foundation and Case Study
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Abstract
This article presents a methodological foundation to design and experimentally test a
Model Predictive Controller (MPC) to be applied in renewable source-based microgrids with
hydrogen as backup. The Model Predictive Controller has been developed with the aim to guarantee
the best energy distribution while the microgrid operation is optimized considering both technical
and economic parameters. As a differentiating element, this proposal provides a solution to the
problem of energy management in real systems, addressing technological challenges such as charge
management in topologies with direct battery connection, or loss of performance associated with
equipment degradation or the required dynamics in the operation of hydrogen systems. That is, the
proposed Model Predictive Controller achieves the optimization of microgrid operation both in the
short and in the long-term basis. For this purpose, a generalized multi-objective function has been
defined that considers the energy demand, operating costs, system performance as well as the
suffered and accumulated degradation by microgrid elements throughout their lifespan. The
generality in the definition of the model and cost function, allows multi-objective optimization
problems to be raised depending on the application, topology or design criteria to be considered.
For this purpose, a heuristic methodology based on artificial intelligence techniques is presented for
the tuning of the controller parameters. The Model Predictive Controller has been validated by
simulation and experimental tests in a case study, where the performance of the microgrid under
energy excess and deficit situations has been tested, considering the constrains defined by the
degradation of the systems that make up the microgrid. The designed controller always made it
possible to guarantee both the power balance and the optimal energy distribution between systems
according to the predefined priority and accumulated degradation, while guaranteeing the
maximum operating voltage of the system with a margin of error less than 1%. The simulation and
experimental results for the case study showed the validity of the controller and the design
methodology used.
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Bibliographic citation
Vivas Fernández, F. J., Segura Manzano, F., Andújar Márquez, J. M., & Calderón Godoy, A. J. (2020). Extended Model Predictive Controller to Develop Energy Management Systems in Renewable Source-Based Smart Microgrids with Hydrogen as Backup. Theoretical Foundation and Case Study. Sustainability, 12(21), 8969. DOI: https://doi.org/10.3390/su12218969














