Artificial intelligence for time-efficient prediction and optimization of solid oxide fuel cell performances

Vanja Subotić*, Michael Eibl, Christoph Hochenauer

*Korrespondierende/r Autor/in für diese Arbeit

Publikation: Beitrag in einer FachzeitschriftArtikel

Abstract

Reliability and durability are main issues that must be addressed in order to accelerate the commercialization of solid oxide fuel cells (SOFCs). Time-efficient and exact prediction of system performance as a function of an operating environment could reduce the time required to find the operating optimum within a wide range of parameters. For this purpose, a prognostic framework based on artificial neural network (ANN) is designed within this study to predict SOFC performance presented by polarization curves and electrochemical impedance spectra. In order to train and validate the ANN developed two approaches are followed to generate the data sets required: very detailed multi-physic model and experimental data. Very good agreement between the ANN model and the measured data is observed, with an exception for very low current densities lower than 20 mA cm−2. The polarization model with 1–3 hidden layers and 3–5 neurons as well as a patience parameter 5–20 resulted in a very good accuracy. Increasing the system complexity, e.g. required prediction of the overall cell impedance as a function of the operating temperature, the system complexity increased thus increasing the number of neurons per hidden layer up to 10–30 and a patience of up to 500–1000 epochs.

Originalspracheenglisch
Aufsatznummer113764
FachzeitschriftEnergy Conversion and Management
Jahrgang230
DOIs
PublikationsstatusVeröffentlicht - 15 Feb 2021

ASJC Scopus subject areas

  • !!Renewable Energy, Sustainability and the Environment
  • !!Nuclear Energy and Engineering
  • !!Fuel Technology
  • !!Energy Engineering and Power Technology

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