Article ID Journal Published Year Pages File Type
1286811 Journal of Power Sources 2015 10 Pages PDF
Abstract

•A linear, dynamic model for SOFC stack temperature is identified from experimental data on complete 10 kW SOFC system.•Accurate temperature estimation is obtained with the identified model and Kalman filtering.•Experiment design and all algorithms are given in a ready-for-implementation manner.

Data-based modeling is utilized for the dynamic estimation of the temperature inside a solid oxide fuel cell (SOFC) stack. Experiment design and implementation, data pretreatment, model parameter identification and application of the obtained model for the estimation and prediction of the SOFC stack maximum and minimum temperatures are covered. Experiments are carried out on a complete 10 kW SOFC system to obtain data for model development. An ARX-type (autoregressive with extra input) polynomial input–output model is identified from the data and Kalman filtering is utilized to obtain an accurate estimator for the internal stack temperatures. Prediction capabilities of the model are demonstrated and using the modeling approach for SOFC system monitoring is discussed.

Related Topics
Physical Sciences and Engineering Chemistry Electrochemistry
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