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Parameter Identification for One-Dimension Fuel Cell Model Using GA-PSO Algorithm

机译:使用GA-PSO算法进行一维燃料电池模型的参数识别

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When studying on how to identify the proton exchange membrane fuel cell model parameters accurately and quickly, the model frequently used is a lumped parameter model. Compared to this kind of model, one-dimensional dynamic proton exchange membrane fuel cell model can correlate the physical parameters with output characteristics of fuel cell to predict the effects of design parameters, materials and environmental conditions, thus reducing the need for experimentation. However, there is little literature about parameter identification for one-dimensional dynamic models currently. In this paper, a one-dimension dynamic proton exchange membrane fuel cell model with many assumptions for reducing the complexity of calculation is realized in Matlab-Simulink environment. The model consists of five interacting subsystems. The GA-PSO hybrid optimization algorithm is used to identify the parameters of fuel cell model to emulate the output characteristics of different proton exchange membrane fuel cells. This hybrid algorithm is an improved Particle Swarm Optimization Algorithm relying on Genetic Algorithm's strong global search ability, with the aim of maintaining the population diversity and avoiding premature convergence. The result shows that the Relative Errors between experimental data and the corresponding simulated data are less than 1% by setting the model parameters using the results from the new hybrid optimization method. In addition, the dynamic simulation is also carried out. Taking the dynamically changing current as an input, the voltage and power response of this model are compared with conclusions of other researchers. The rationality of the dynamic simulation results further verifies the reliability of the model.
机译:在学习如何准确且快速地识别质子交换膜燃料电池模型参数时,经常使用的模型是一个集成的参数模型。与这种模型相比,一维动态质子交换膜燃料电池模型可以将物理参数与燃料电池的输出特性相关联,以预测设计参数,材料和环境条件的影响,从而降低了对实验的需求。然而,目前一维动态模型的参数识别几乎没有文献。本文在Matlab-Simulink环境中实现了一种具有许多用于降低计算复杂性的许多假设的一维动态质子交换膜燃料电池模型。该模型由五个交互子系统组成。 GA-PSO混合优化算法用于识别燃料电池模型的参数,以模拟不同质子交换膜燃料电池的输出特性。这种混合算法是一种改进的粒子群优化算法,依赖于遗传算法的强大全球搜索能力,目的是维持人口多样性并避免早产。结果表明,使用新的混合优化方法的结果设置模型参数,实验数据和相应的模拟数据之间的相对误差小于1%。此外,还执行动态模拟。采用动态变化的电流作为输入,将该模型的电压和功率响应与其他研究人员的结论进行比较。动态仿真结果的合理性进一步验证了模型的可靠性。

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