Abstract
This paper reports our initial development of simulation-informed machine learning algorithms for failure diagnostics in solid
oxide fuel cell (SOFC) systems. We used physics-based models to simulate electrochemical impedance spectroscopy (EIS)
response of a short SOFC stack under normal conditions and under three different failure modes: fuel maldistribution,
delamination, and oxidant gas crossover to the anode channel. These data were used to train a support vector machine (SVM)
model, which is able to detect and differentiate these failures in simulated data under various conditions. The SVM model can also
distinguish these failures from simulated uniform degradation that often occurs with long-term operation. These encouraging
results are guiding our ongoing efforts to apply EIS as a failure diagnostic for real SOFC cells and short stacks.
Graphical Abstract