Dynamic neural network based parametric modeling of PEM fuel cell system for electric vehicle applications

M. Karthik, K. Gomathi
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引用次数: 5

Abstract

The paper is focused on modeling and simulation of artificial intelligent technique based fuel cell driven electric vehicle system. In the first part of this paper, the reliability of the dynamic recurrent network (NARX) and radial basis function network (RBFN) for the output prediction of a PEM fuel cell system in terms of prediction indices such as performance measure (MSE value) and iteration value (number of epochs) is investigated. In the second part, an optimum network is chosen among the two proposed networks to develop a neural network based PEM fuel cell driven electric vehicle that incorporates the modeling of neural network based fuel cell, DC-DC converter system and vehicle dynamics. In this work, modified standard drive cycle (NEDC/ECE_EUDC) is used as the system primary input. The simulation result obtained from the developed model is used to predict the power availability of the vehicle and power required to propel the vehicle.
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基于动态神经网络的电动汽车PEM燃料电池系统参数化建模
本文主要研究了基于人工智能技术的燃料电池驱动电动汽车系统的建模与仿真。本文第一部分研究了动态循环网络(NARX)和径向基函数网络(RBFN)在性能指标(MSE值)和迭代值(epoch数)预测PEM燃料电池系统输出的可靠性。在第二部分中,从两个网络中选择一个最优网络,开发基于神经网络的PEM燃料电池驱动电动汽车,该网络将基于神经网络的燃料电池、DC-DC变换器系统和车辆动力学建模结合起来。在这项工作中,使用修改的标准驱动周期(NEDC/ECE_EUDC)作为系统的主要输入。该模型的仿真结果用于预测车辆的可用功率和推进车辆所需的功率。
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