Adaptive neural network observer for proton-exchange membrane fuel cell system

IF 2.9 4区 环境科学与生态学 Q3 ENERGY & FUELS Clean Energy Pub Date : 2023-10-01 DOI:10.1093/ce/zkad048
Abdelaziz El Aoumari, Hamid Ouadi, Jamal El-Bakkouri, Fouad Giri
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Abstract

Abstract This paper develops an adaptive neural network (NN) observer for proton-exchange membrane fuel cells (PEMFCs). Indeed, information on the oxygen excess ratio (OER) value is crucial to ensure optimal management of the durability and reliability of the PEMFC. The OER indicator is computed from the mass of oxygen and nitrogen inside the PEMFC cathode. Unfortunately, the measurement process of both these masses is difficult and costly. To solve this problem, the design of a PEMFC state observer is attractive. However, the behaviour of the fuel cell system is highly non-linear and its modelling is complex. Due to this constraint, a multilayer perceptron neural network (MLPNN)-based observer is proposed in this paper to estimate the oxygen and nitrogen masses. One notable advantage of the suggested MLPNN observer is that it does not require a database to train the NN. Indeed, the weights of the NN are updated in real time using the output error. In addition, the observer parameters, namely the learning rate and the damping factor, are online adapted using the optimization tools of extremum seeking. Moreover, the proposed observer stability analysis is performed using the Lyapunov theory. The observer performances are validated by simulation under MATLAB®/Simulink®. The supremacy of the proposed adaptive MLPNN observer is highlighted by comparison with a fixed-parameter MLPNN observer and a classical high-gain observer (HGO). The mean relative error value of the excess oxygen rate is considered the performance index, which is equal to 1.01% for an adaptive MLPNN and 3.95% and 9.95% for a fixed MLPNN and HGO, respectively. Finally, a robustness test of the proposed observer with respect to measurement noise is performed.
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质子交换膜燃料电池系统的自适应神经网络观测器
摘要开发了一种用于质子交换膜燃料电池(pemfc)的自适应神经网络观测器。事实上,关于氧过剩比(OER)值的信息对于确保PEMFC的耐久性和可靠性的最佳管理至关重要。OER指标是由PEMFC阴极内氧和氮的质量计算得出的。不幸的是,这两个质量的测量过程既困难又昂贵。为了解决这一问题,PEMFC状态观测器的设计很有吸引力。然而,燃料电池系统的行为是高度非线性的,其建模是复杂的。基于这一约束,本文提出了一种基于多层感知器神经网络(MLPNN)的观测器来估计氧和氮的质量。建议的MLPNN观测器的一个显著优点是它不需要数据库来训练神经网络。实际上,神经网络的权重是利用输出误差实时更新的。此外,利用极值搜索优化工具在线调整观测器参数,即学习率和阻尼因子。此外,利用李亚普诺夫理论进行了观测器稳定性分析。在MATLAB®/Simulink®下通过仿真验证了观测器的性能。通过与固定参数MLPNN观测器和经典高增益观测器(HGO)的比较,突出了所提自适应MLPNN观测器的优越性。以过量氧率的平均相对误差值作为性能指标,自适应MLPNN的平均相对误差值为1.01%,固定MLPNN和HGO的平均相对误差值分别为3.95%和9.95%。最后,对所提出的观测器进行了关于测量噪声的鲁棒性测试。
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来源期刊
Clean Energy
Clean Energy Environmental Science-Management, Monitoring, Policy and Law
CiteScore
4.00
自引率
13.00%
发文量
55
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