Fuel cells are emerging as alternate green power producers for both large power production and for use in automobiles. Hydrogen is seen as the best option as a fuel; however, hydrogen fuel cells require recirculation of unspent hydrogen. A supersonic ejector is an apt device for recirculation in the operating regimes of a hydrogen fuel cell. Optimal ejectors have to be designed to achieve best performances. The use of the vector evaluated particle swarm optimization technique to optimize supersonic ejectors with a focus on its application for hydrogen recirculation in fuel cells is presented here. Two parameters, compression ratio and efficiency, have been identified as the objective functions to be optimized. Their relation to operating and design parameters of ejector is obtained by control volume based analysis using a constant area mixing approximation. The independent parameters considered are the area ratio and the exit Mach number of the nozzle. The optimization is carried out at a particular entrainment ratio and results in a set of nondominated solutions, the Pareto front. A set of such curves can be used for choosing the optimal design parameters of the ejector.
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August 2010
This article was originally published in
Journal of Fuel Cell Science and Technology
Research Papers
Vector Evaluated Particle Swarm Optimization (VEPSO) of Supersonic Ejector for Hydrogen Fuel Cells
Srisha Rao M V,
Srisha Rao M V
Department of Aerospace Engineering,
e-mail: srisharao@aero.iisc.ernet.in
Indian Institute of Science
, Bangalore, Karnataka PIN 560012, India
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G. Jagadeesh
G. Jagadeesh
Department of Aerospace Engineering,
e-mail: jaggie@aero.iisc.ernet.in
Indian Institute of Science
, Bangalore, Karnataka PIN 560012, India
Search for other works by this author on:
Srisha Rao M V
Department of Aerospace Engineering,
Indian Institute of Science
, Bangalore, Karnataka PIN 560012, Indiae-mail: srisharao@aero.iisc.ernet.in
G. Jagadeesh
Department of Aerospace Engineering,
Indian Institute of Science
, Bangalore, Karnataka PIN 560012, Indiae-mail: jaggie@aero.iisc.ernet.in
J. Fuel Cell Sci. Technol. Aug 2010, 7(4): 041014 (7 pages)
Published Online: April 8, 2010
Article history
Received:
January 17, 2009
Revised:
August 4, 2009
Online:
April 8, 2010
Published:
April 8, 2010
Citation
M V, S. R., and Jagadeesh, G. (April 8, 2010). "Vector Evaluated Particle Swarm Optimization (VEPSO) of Supersonic Ejector for Hydrogen Fuel Cells." ASME. J. Fuel Cell Sci. Technol. August 2010; 7(4): 041014. https://doi.org/10.1115/1.4000676
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