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Real time modelling of the dynamic mechanical behaviour of PEMFC thanks to neural networks

机译:借助神经网络对PEMFC的动态力学行为进行实时建模

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摘要

Modelling complex dynamic mechanical systems, such as PEMFC, without any physical models is a difficult challenge but it could allow the monitoring of endurance tests of fuel cell systems. Neural networks are recognised as powerful numerical tools for predicting complex and nonlinear dynamic behaviours. They require only data limited to experimental inputs and outputs but the choice of an adapted architecture is critical. This paper presents a method for defining a neural network architecture optimised for the fuel cell systems. The associated experimental conditions specifying the vibration tests to train and validate were defined. They consist of swept sinus as well as random excitation forces. The resulting simulations are presented and analysed.
机译:在没有任何物理模型的情况下对复杂的动态机械系统(例如PEMFC)进行建模是一个艰巨的挑战,但它可以监视燃料电池系统的耐久性测试。神经网络被认为是预测复杂和非线性动态行为的强大数值工具。它们仅需要限于实验输入和输出的数据,但是选择合适的体系结构至关重要。本文提出了一种用于定义针对燃料电池系统优化的神经网络架构的方法。定义了指定振动测试进行训练和验证的相关实验条件。它们由扫掠窦和随机激发力组成。给出并分析了所得的仿真。

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