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首页> 外文期刊>International journal of hydrogen energy >The optimal design for PEMFC modeling based on Taguchi method and genetic algorithm neural networks
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The optimal design for PEMFC modeling based on Taguchi method and genetic algorithm neural networks

机译:基于Taguchi方法和遗传算法神经网络的PEMFC建模优化设计。

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This paper has presented a new approach to estimate the output voltage of proton exchange membrane fuel cell (PEMFC) accurately by combining the use of a genetic algorithm neural networks (GANN) model and the Taguchi method. Using the PEMFC experimental data measured from performance test equipment of PEMFC, the GANN model could be trained and constructed for obtaining the steady state output voltage of PEMFC. Furthermore, in order to determine the important parameters in GANN, the Taguchi method is used for parameter optimization, with the goal of reducing the estimation error. The test equipment of PEMFC is accurate enough for acquiring the output voltage of PEMFC, and is quite useful for teaching purpose. However, taking the high cost, complicated operation procedure and environment safety into consideration, it is necessary to develop a simulation model of PEMFC to benefit teaching and R&D. Therefore, this paper will present an approach for constructing a GANN model with precise accuracy for the output voltage of PEMFC. For achieving the GANN model with high precision, a troublesome work has to be taken care of, that is, to determine all the parameters required in GANN. We will introduce Taguchi method to solve this problem as well. Finally, to show the superiority of proposed model, this approach has compared the estimation values of output voltage for PEMFC from GANN and BPNN models without using Taguchi method. One can easily find that the error of the proposed method is much smaller than that of the GANN model without Taguchi method and of the BPNN model; that is, the proposed approach has better performance on estimation for PEMFC output voltages.
机译:通过结合遗传算法神经网络模型和田口方法,提出了一种精确估算质子交换膜燃料电池(PEMFC)输出电压的新方法。利用从PEMFC性能测试设备测得的PEMFC实验数据,可以训练和构造GANN模型以获得PEMFC的稳态输出电压。此外,为了确定GANN中的重要参数,使用Taguchi方法进行参数优化,目的是减少估计误差。 PEMFC的测试设备足够准确以获取PEMFC的输出电压,对于教学目的非常有用。但是,考虑到高成本,复杂的操作程序和环境安全性,有必要开发一种PEMFC的仿真模型,以利于教学和研发。因此,本文将为PEMFC的输出电压提供一种精确精确的GANN模型的构建方法。为了以高精度实现GANN模型,必须进行繁琐的工作,即确定GANN中所需的所有参数。我们还将介绍田口方法来解决此问题。最后,为了展示所提出模型的优越性,该方法比较了GANN和BPNN模型中不使用Taguchi方法的PEMFC输出电压的估计值。可以很容易地发现,与没有Taguchi方法的GANN模型和BPNN模型相比,该方法的误差要小得多。也就是说,所提出的方法在估计PEMFC输出电压方面具有更好的性能。

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