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    基于物理信息神经网络的电解池内部两相流状态分布协同估计

    Collaborative estimation of internal two-phase flow states distribution of the electrolytic cell based on physical-informed neural networks

    • 摘要: 质子交换膜电解池已发展为最有前途的制氢设备,但电解池内部水两相流传输严重影响其制氢效率,针对电解池两相流状态分布不可测、不可观难题,构建了一种基于物理信息神经网络(PINN)的两相流状态分布协同估计策略。该方法通过深度神经网络架构提取体积分数和流速等状态的时空依赖关系,并引入初始条件误差、边界条件误差和偏微分方程误差,从而实现对复杂两相流传输机制的解耦建模。其中偏微分方程项基于混合物模型与Schiller-Naumann滑移模型,基于传统自动微分的计算方法无法建立与周围相邻点的有效联系,增加了网络训练不收敛的风险。结合自动微分与二阶中心矩差分算法计算偏微分方程项,进一步提升了模型的精度和可解释性。此外,为加速模型的收敛,设计了一种全局状态误差的贝叶斯优化算法,用于微调偏微分方程误差和预测张量误差的权重分配。最后通过有限元仿真验证了所提出方法的有效性,结果表明其对体积分数和流速的预测平均绝对误差分别为 1.09\times 10^-2 和 4.37\times 10^-4 ,相较于深度神经网络提升了39.80%和43.25%。

       

      Abstract: Proton exchange membrane electrolyzer cell (PEMEC) has emerged as one of the most promising devices for hydrogen production. However, the two-phase flow dynamics within the PEMEC severely affect its hydrogen production efficiency. To address the challenge of unobservability and immeasurability of two-phase flow state distributions, this paper proposes a collaborative states estimation strategy based on physics-Informed neural network (PINN). The method extracts spatiotemporal dependencies of state variables, such as volume fraction and flow velocity, through a deep neural network architecture. It also incorporates initial condition loss, boundary condition loss, and partial differential equation (PDE) loss terms to decouple the complex two-phase flow dynamics. The PDE terms are based on a mixture model combined with the Schiller-Naumann slip model, and are further refined by automatic differentiation and second-order central moment difference algorithms, which improve the model’s accuracy and interpretability. Additionally, to accelerate model convergence, Bayesian optimization algorithm is adopted for fine-tuning the weights of loss terms and difference algorithms. Finally, the proposed method's effectiveness is validated based on finite element simulations. The results show that the method’s predictions for volume fraction and flow velocity achieve mean absolute errors of 1.09×102 and 4.37×104, respectively, demonstrating improvements of 39.80% and 43.25% compared to traditional deep neural network models.

       

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