Neural network modeling strategy applied to a multi-stack PEM fuel cell system

F. da Costa Lopes, S. Kelouwani, L. Boulon, K. Agbossou, Neigel Marx, K. Ettihir
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引用次数: 10

Abstract

This work proposes applying a modeling methodology based on recurrent neural networks to a multi-stack fuel cell system composed of four Proton Exchange Membrane Fuel Cell (PEMFC) stacks. Even if the stacks have the same rated power and are from the same manufacturer, very often they present different performances (voltage response, efficiency and power curves). In this way, a model able to predict the behavior of each stack is necessary to guarantee an optimized operation of the whole system. Hence, the aforementioned methodology is used to obtain a prediction model for each stack aiming at their final application in a predictive control system. The models are also able to predict the power availability of the multi-stack system, being useful to be employed in the prognostics of the performance of the system in a vehicular application.
多堆PEM燃料电池系统的神经网络建模策略
本研究提出了一种基于递归神经网络的建模方法,用于由四个质子交换膜燃料电池(PEMFC)堆叠组成的多堆燃料电池系统。即使电池具有相同的额定功率并且来自同一制造商,它们也经常表现出不同的性能(电压响应、效率和功率曲线)。因此,需要一个能够预测每个堆栈行为的模型来保证整个系统的优化运行。因此,上述方法用于获得每个堆栈的预测模型,目标是它们在预测控制系统中的最终应用。该模型还能够预测多堆栈系统的功率可用性,有助于在车载应用中预测系统的性能。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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