A health index-based approach for fuel cell lifetime estimation
Journal article, 2024

Efficient health indicators (HI) and prediction methods are crucial for assessing the remaining useful life (RUL) of fuel cells. However, obtaining HI under dynamic conditions with frequently changing loads is highly challenging. Therefore, this study proposes a prediction framework based on dynamic conditions. A method combining complete ensemble empirical mode decomposition with adaptive noise, power spectral density, and energy analysis (CPE) is proposed to extract HI under dynamic conditions from the perspectives of frequency and energy. Furthermore, the time convolution network with adaptive Bayesian optimization (AB-TCN) is introduced to address parameter optimization and prediction challenges. Effective feature parameters of the data are identified using random forest and used to train the AB-TCN. Results show that the extracted HI can effectively determine the end-of-life. The AB-TCN achieves accurate RUL estimation with a prediction error of only 6.825% and shows strong adaptability to various prediction tasks.

Engineering

Artificial intelligence

Electrochemical energy conversion

Author

Hangyu Wu

Wuhan University of Technology

Ruiming Zhang

Wuhan University of Technology

Wenchao Zhu

Hubei Provincial Key Laboratory of Fuel Cell

Wuhan University of Technology

Changjun Xie

Wuhan University of Technology

Yang Li

Chalmers, Electrical Engineering, Systems and control

Yang Yang

Wuhan University of Technology

Bingxin Guo

Wuhan University of Technology

Changzhi Li

Wuhan University of Technology

Rui Xiong

Beijing Institute of Technology

iScience

25890042 (eISSN)

Vol. 27 11 110979

Subject Categories

Applied Mechanics

Energy Engineering

Other Civil Engineering

DOI

10.1016/j.isci.2024.110979

Related datasets

URI: https://www.scidb.cn/s/nyAnQf

More information

Latest update

11/13/2024