Optimization of dual-layer flow field in a water electrolyzer using a data-driven surrogate model

IF 9.6 Q1 COMPUTER SCIENCE, ARTIFICIAL INTELLIGENCE
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引用次数: 0

Abstract

Serious bubble clogging in flow-field channels will hinder the water supply to the electrode of proton exchange membrane water electrolyzer (PEMWE), deteriorating the cell performance. In order to address this issue, the dual-layer flow field design has been proposed in our previous study. In this study, the VOF (volume of fluid) method is utilized to investigate the effects of different degassing layer and base heights on the bubble behavior in channel and determine the time for the bubbles to detach from the electrode surface. However, it is very time-consuming to get the optimal combination of base layer and degassing layer heights due to the large number of potential cases, which needs to be calculated through computation-intensive physical model. Therefore, machine learning methods are adopted to accelerate the optimization. A data-driven surrogate model based on deep neural network (DNN) is developed and successfully trained using data obtained by the physical VOF method. Based on the highly efficient surrogate, genetic algorithm (GA) is further utilized to determine the optimal heights of base layer and degassing layer. Finally, the reliability of the optimization was validated by bubble visualization in channel and electrochemical characterization in PEMWE through experiments.

Abstract Image

利用数据驱动代用模型优化水电解槽中的双层流场
流场通道中严重的气泡堵塞会阻碍质子交换膜水电解槽(PEMWE)电极的供水,从而降低电解槽的性能。为了解决这个问题,我们在之前的研究中提出了双层流场设计。在这项研究中,我们利用 VOF(流体体积)方法研究了不同脱气层和基底高度对通道中气泡行为的影响,并确定了气泡脱离电极表面的时间。然而,由于潜在情况较多,要获得基底层和脱气层高度的最佳组合非常耗时,需要通过计算密集型物理模型进行计算。因此,我们采用了机器学习方法来加速优化。利用物理 VOF 方法获得的数据,开发并成功训练了基于深度神经网络(DNN)的数据驱动代用模型。在高效代用模型的基础上,进一步利用遗传算法(GA)确定基础层和脱气层的最佳高度。最后,通过实验对通道中的气泡可视化和 PEMWE 中的电化学特性进行了验证,证明了优化的可靠性。
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来源期刊
Energy and AI
Energy and AI Engineering-Engineering (miscellaneous)
CiteScore
16.50
自引率
0.00%
发文量
64
审稿时长
56 days
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