Transients in a load have a significant impact on the performance and durability of a solid oxide fuel cell (SOFC) integrated into a micro gas turbine (MGT) hybrid power system. One of the main reasons is that the SOFC operating temperature and turbine inlet temperature change drastically due to the load change. Therefore, in order to guarantee the temperature to operate within a specified range, an adaptive proportional-integral-derivative (PID) decoupling control strategy based on a dynamic radial basis function (RBF) neural network is presented to control the temperature of a natural gas fueled, tubular SOFC/MGT hybrid with internal reforming in this paper. Using the self-learning ability of the dynamic RBF neural network, the proportional, integral, and differential factor of the PID controller are tuned on-line. The simulation results show that it is feasible to build the adaptive PID decoupling controller for temperature control of the SOFC/MGT hybrid system.
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October 2011
This article was originally published in
Journal of Fuel Cell Science and Technology
Research Papers
Temperature Control of a SOFC and MGT Hybrid System
Qi Huang,
Qi Huang
School of Automation, University of Electronic Science and Technology of China
, Chengdu 610054, China
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Xin-Jian Zhu,
Xin-Jian Zhu
Institute of Fuel Cell, Shanghai Jiao Tong University
, Shanghai 200030, China
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Chang-Hua Zhang
Chang-Hua Zhang
School of Automation, University of Electronic Science and Technology of China
, Chengdu 610054, China
Search for other works by this author on:
Qi Huang
School of Automation, University of Electronic Science and Technology of China
, Chengdu 610054, China
Xin-Jian Zhu
Institute of Fuel Cell, Shanghai Jiao Tong University
, Shanghai 200030, China
Chang-Hua Zhang
School of Automation, University of Electronic Science and Technology of China
, Chengdu 610054, China
J. Fuel Cell Sci. Technol. Oct 2011, 8(5): 051009 (6 pages)
Published Online: June 17, 2011
Article history
Received:
May 19, 2010
Revised:
April 13, 2011
Online:
June 17, 2011
Published:
June 17, 2011
Citation
Wu, X., Huang, Q., Zhu, X., and Zhang, C. (June 17, 2011). "Temperature Control of a SOFC and MGT Hybrid System." ASME. J. Fuel Cell Sci. Technol. October 2011; 8(5): 051009. https://doi.org/10.1115/1.4004174
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