High-Precision Parameter Identification for Hydrogen Fuel Cell Voltage Models Using a Backpropagation Neural Network
编号:82 访问权限:仅限参会人 更新:2025-09-30 11:06:48 浏览:2次 张贴报告

报告开始:2025年10月10日 17:10(Asia/Shanghai)

报告时间:20min

所在会场:[P] Poster Presentation [P1] Poster Presentation 1

暂无文件

摘要
The accuracy of the voltage model for hydrogen fuel cells is crucial for system performance evaluation and control strategy design. Semi-empirical models are widely adopted due to their clear physical interpretability and concise structure. However, the precise identification of their key parameters (such as activation coefficients, ohmic resistance, concentration polarization parameters, etc.) faces significant challenges including strong nonlinearity, multivariable coupling, and experimental noise interference. Traditional identification methods (e.g., least squares) are prone to converging to local optima or failing to converge under complex operating conditions.To address the above issues, this paper proposes a parameter identification method based on a Backpropagation (BP) neural network. Leveraging the powerful nonlinear regression and prediction capabilities of the BP network, we construct a mapping relationship where operational conditions (temperature, pressure, voltage, current, etc.) serve as inputs and the model parameters to be identified serve as outputs. By collecting multiple sets of steady-state experimental data to train the network and dynamically optimizing the weights using the gradient descent algorithm, the network autonomously learns the complex association patterns between the parameters and operating conditions. Data normalization and cross-validation strategies are incorporated during training to enhance the model's generalization capability and robustness.Simulation results demonstrate that this method effectively overcomes the limitations of traditional identification: Across a wide operating range, the prediction error of the voltage model using the identified parameters is below 1%, significantly outperforming conventional optimization algorithms. Furthermore, the BP network avoids complex mathematical derivations and offers high computational efficiency. It thus provides a reliable solution for high-precision parameter identification of hydrogen fuel cell models, holding substantial practical value for enhancing system modeling and real-time control performance.
 
关键词
Parameter Identification;,PEMFC;,BP Neural Network
报告人
Chenzi Zhang
Xi'an Jiaotong University, China

稿件作者
琛梓 张 西安交通大学
俊宏 陈 西安交通大学
璞 何 西安交通大学
文铨 陶 西安交通大学
发表评论
验证码 看不清楚,更换一张
全部评论
重要日期
  • 会议日期

    10月09日

    2025

    10月13日

    2025

  • 08月30日 2025

    初稿截稿日期

  • 10月13日 2025

    注册截止日期

主办单位
Huazhong University of Science and Technology
移动端
在手机上打开
小程序
打开微信小程序
客服
扫码或点此咨询