Fuel cell-based CHP system modelling using Artificial Neural Networks aimed at developing techno-economic efficiency maximization control systems
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Date
2017-02-08Author
Zamora Belver, Inmaculada
García-Villalobos, Javier
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Energy 123 : 585-93 (2017)
Abstract
This paper focuses on the modelling of the performance of a Polymer Electrolyte Membrane Fuel Cell
(PEMFC)-based cogeneration system to integrate it in hybrid and/or connected to grid systems and
enable the optimization of the techno-economic efficiency of the system in which it is integrated. To this
end, experimental tests on a PEMFC-based cogeneration system of 600 Wof electrical power have been
performed to train an Artificial Neural Network (ANN). Once the learning of the ANN, it has been able to
emulate real operating conditions, such as the cooling water out temperature and the hydrogen consumption
of the PEMFC depending on several variables, such as the electric power demanded, temperature
of the inlet water flow to the cooling circuit, cooling water flow and the heat demanded to the
CHP system. After analysing the results, it is concluded that the presented model reproduces with
enough accuracy and precision the performance of the experimented PEMFC, thus enabling the use of
the model and the ANN learning methodology to model other PEMFC-based cogeneration systems and
integrate them in techno-economic efficiency optimization control systems.