Computational modeling and optimization of proton exchange membrane fuel cells

Improvements in performance, reliability and durability as well as reductions in production costs, remain critical prerequisites for the commercialization of proton exchange membrane fuel cells. In this thesis, a computational framework for fuel cell analysis and optimization is presented as an inno...

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Main Author: Secanell Gallart, Marc
Other Authors: Djilali, Ned
Language:English
en
Published: 2007
Subjects:
Online Access:http://hdl.handle.net/1828/249
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spelling ndltd-uvic.ca-oai-dspace.library.uvic.ca-1828-2492015-01-29T16:50:26Z Computational modeling and optimization of proton exchange membrane fuel cells Secanell Gallart, Marc Djilali, Ned Suleman, Afzal fuel cell catalyst layer fuel cell design agglomerate model multidisciplinary design optimization adaptive finite elements UVic Subject Index::Sciences and Engineering::Engineering::Mechanical engineering Improvements in performance, reliability and durability as well as reductions in production costs, remain critical prerequisites for the commercialization of proton exchange membrane fuel cells. In this thesis, a computational framework for fuel cell analysis and optimization is presented as an innovative alternative to the time consuming trial-and-error process currently used for fuel cell design. The framework is based on a two-dimensional through-the-channel isothermal, isobaric and single phase membrane electrode assembly (MEA) model. The model input parameters are the manufacturing parameters used to build the MEA: platinum loading, platinum to carbon ratio, electrolyte content and gas diffusion layer porosity. The governing equations of the fuel cell model are solved using Netwon's algorithm and an adaptive finite element method in order to achieve quadratic convergence and a mesh independent solution respectively. The analysis module is used to solve two optimization problems: i) maximize performance; and, ii) maximize performance while minimizing the production cost of the MEA. To solve these problems a gradient-based optimization algorithm is used in conjunction with analytical sensitivities. The presented computational framework is the first attempt in the literature to combine highly efficient analysis and optimization methods to perform optimization in order to tackle large-scale problems. The framework presented is capable of solving a complete MEA optimization problem with state-of-the-art electrode models in approximately 30 minutes. The optimization results show that it is possible to achieve Pt-specific power density for the optimized MEAs of 0.422 $g_{Pt}/kW$. This value is extremely close to the target of 0.4 $g_{Pt}/kW$ for large-scale implementation and demonstrate the potential of using numerical optimization for fuel cell design. 2007-11-13T22:40:51Z 2007-11-13T22:40:51Z 2007 2007-11-13T22:40:51Z Thesis http://hdl.handle.net/1828/249 M. Secanell, K. Karan, A. Suleman and N. Djilali, “Optimal Design of Ultra-Low Platinum PEMFC Anode Electrodes”, Journal of the Electrochemical Society, accepted for publication October 2007. M. Secanell, K. Karan, A. Suleman and N. Djilali, “Multi-Variable Optimization of PEMFC Cathodes using an Agglomerate Model”, Electrochimica Acta, 52(22):6318-6337, June 2007. M. Secanell, B. Carnes, A. Suleman and N. Djilali, “Numerical Optimization of Proton Exchange Membrane Fuel Cell Cathode Electrodes”, Electrochimica Acta, 52(7):2668-2682, February 2007. English en Available to the World Wide Web
collection NDLTD
language English
en
sources NDLTD
topic fuel cell
catalyst layer
fuel cell design
agglomerate model
multidisciplinary design optimization
adaptive finite elements
UVic Subject Index::Sciences and Engineering::Engineering::Mechanical engineering
spellingShingle fuel cell
catalyst layer
fuel cell design
agglomerate model
multidisciplinary design optimization
adaptive finite elements
UVic Subject Index::Sciences and Engineering::Engineering::Mechanical engineering
Secanell Gallart, Marc
Computational modeling and optimization of proton exchange membrane fuel cells
description Improvements in performance, reliability and durability as well as reductions in production costs, remain critical prerequisites for the commercialization of proton exchange membrane fuel cells. In this thesis, a computational framework for fuel cell analysis and optimization is presented as an innovative alternative to the time consuming trial-and-error process currently used for fuel cell design. The framework is based on a two-dimensional through-the-channel isothermal, isobaric and single phase membrane electrode assembly (MEA) model. The model input parameters are the manufacturing parameters used to build the MEA: platinum loading, platinum to carbon ratio, electrolyte content and gas diffusion layer porosity. The governing equations of the fuel cell model are solved using Netwon's algorithm and an adaptive finite element method in order to achieve quadratic convergence and a mesh independent solution respectively. The analysis module is used to solve two optimization problems: i) maximize performance; and, ii) maximize performance while minimizing the production cost of the MEA. To solve these problems a gradient-based optimization algorithm is used in conjunction with analytical sensitivities. The presented computational framework is the first attempt in the literature to combine highly efficient analysis and optimization methods to perform optimization in order to tackle large-scale problems. The framework presented is capable of solving a complete MEA optimization problem with state-of-the-art electrode models in approximately 30 minutes. The optimization results show that it is possible to achieve Pt-specific power density for the optimized MEAs of 0.422 $g_{Pt}/kW$. This value is extremely close to the target of 0.4 $g_{Pt}/kW$ for large-scale implementation and demonstrate the potential of using numerical optimization for fuel cell design.
author2 Djilali, Ned
author_facet Djilali, Ned
Secanell Gallart, Marc
author Secanell Gallart, Marc
author_sort Secanell Gallart, Marc
title Computational modeling and optimization of proton exchange membrane fuel cells
title_short Computational modeling and optimization of proton exchange membrane fuel cells
title_full Computational modeling and optimization of proton exchange membrane fuel cells
title_fullStr Computational modeling and optimization of proton exchange membrane fuel cells
title_full_unstemmed Computational modeling and optimization of proton exchange membrane fuel cells
title_sort computational modeling and optimization of proton exchange membrane fuel cells
publishDate 2007
url http://hdl.handle.net/1828/249
work_keys_str_mv AT secanellgallartmarc computationalmodelingandoptimizationofprotonexchangemembranefuelcells
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