A Knowledge Transfer Approach for Online PEMFC Degradation prediction with Uncertainty Quantification

Citation:

Benaggoune, Khaled, et al. 2022. “A Knowledge Transfer Approach for Online PEMFC Degradation prediction with Uncertainty Quantification”. 12th International Conference on Power, Energy and Electrical Engineering (CPEEE).

Abstract:

Proton Exchange Membrane Fuel Cells (PEMFCs) are a key challenger for the world’s future clean and renewable energy solution. Yet, fuel cells are susceptible to operating conditions and hydrogen impurities, leading to performance loss over time in service. Hence, performance degradation prediction is gaining attention recently for fuel cell system reliability. In this work, we present a knowledge transfer approach for online voltage drop prediction. A dual-path convolution neural network is proposed to extract linearity and non-linearity from historical data and performs multi-steps ahead prediction with uncertainty quantification. Online voltage prediction is then evaluated with and without knowledge transfer using two different PEMFC datasets. Results indicate that our proposed approach with transfer knowledge can predict the voltage drop accurately with a small uncertainty range compared to the conventional approach.

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