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Please use this identifier to cite or link to this item: http://hdl.handle.net/11375/20224
Title: Application of a two-level rolling horizon optimization scheme to a solid-oxide fuel cell and compressed air energy storage plant for the optimal supply of zero-emissions peaking power
Authors: Nease, Jake
Monteiro, Nina
Adams, TA II
Department: Chemical Engineering
Keywords: Solid oxide fuel cells;Compressed air energy storage;Peaking power;Optimization;Coal;Carbon capture
Publication Date: 2-Nov-2016
Publisher: Elsevier
Citation: Application of a two-level rolling horizon optimization scheme to a solid-oxide fuel cell and compressed air energy storage plant for the optimal supply of zero-emissions peaking power Nease, J., Montiero, N., Adams, T. A. II Computers & Chemical Engineering, 94 235–249 (2016)
Abstract: We present a new two-level rolling horizon optimization framework applied to a zero-emissions coal-fueled solid-oxide fuel cell power plant with compressed air energy storage for peaking applications. Simulations are performed where the scaled hourly demand for the year 2014 from the Ontario, Canada market is met as closely as possible. It was found that the proposed two-level strategy, by slowly adjusting the SOFC stack power upstream of the storage section, can improve load-following performance by 86% compared to the single-level optimization method proposed previously. A performance analysis indicates that the proposed approach uses the available storage volume to almost its maximum potential, with little improvement possible without changing the system itself. Further improvement to load-following is possible by increasing storage volumes, but with diminishing returns. Using an economically-focused objective function can improve annual revenue generation by as much as 6.5%, but not without a significant drop-off in load-following performance.
URI: http://hdl.handle.net/11375/20224
Identifier: 10.1016/j.compchemeng.2016.08.004
Appears in Collections:Chemical Engineering Publications

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