Time-Efficient, Repetitive Predictions of the Performance of PEMFCs Based on a Neural Network-Based, Reduced Order Model

  • Shin Dong-Il (Department of Chemical Engineering, Myongji University) ;
  • Oh Tae-Hoon (Department of Chemical Engineering, Myongji University) ;
  • Park Myong-Nam (Department of Chemical Engineering, Myongji University) ;
  • Rengaswamy Raghunathan (Department of Chemical Engineering, Clarkson University)
  • Published : 2006.06.01

Abstract

Detailed modeling of PEMFCs has been getting considerable interest for predicting the fuel cell performance and also for use in various systems engineering activities. While CFD-based equipment models provide detailed analyses of the performance, they are very time-consuming to develop and run. The computations become quite complex when such models have to be embedded into the flowsheet-level optimization of fuel cell systems. In this paper, we present results about building and using NN-based reduced order models for quickly and repetitively predicting the flow of reactants in a PEMFC manifold.

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