Data-Driven Electrolyzer Modeling: Adaptive Model Considering Operating Conditions using K-means Clustering

Seungchan Jeon, Sungwoo Bae
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Abstract

This paper proposes a data-driven method for modeling electrolyzers at the cell level that takes into account operating conditions such as pressure, temperature, and current. To achieve this, operating conditions were categorized into optimal clusters using the K-means clustering algorithm. A deep neural network (DNN) was used to map the complex nonlinear input-output relationships arising from the electrolyzer's thermodynamic and electrochemical reactions. The study used a dataset of experimental data obtained from various specifications and operating conditions installed in different regions, with the goal of creating an adaptive electrolyzer model. The results showed that the proposed model outperformed physical-based and data-driven models that did not consider operating conditions in all evaluation indices. Specifically, the modeling error was MSE 0.15V/cell, RMSE 12.15mV/cell, MAE 8.14mV, and RE 0.49%. Therefore, the proposed model is suitable for energy grid research such as digital twins in future studies.
数据驱动的电解槽建模:使用K-means聚类考虑运行条件的自适应模型
本文提出了一种数据驱动的方法,用于在电池水平上对电解槽进行建模,该方法考虑到诸如压力、温度和电流等操作条件。为了实现这一点,使用K-means聚类算法将操作条件分类为最优聚类。采用深度神经网络(DNN)映射电解槽热力学和电化学反应产生的复杂非线性输入输出关系。该研究使用了从不同地区安装的各种规格和操作条件中获得的实验数据集,目的是创建一个自适应电解槽模型。结果表明,该模型在所有评价指标上都优于不考虑工况的物理模型和数据驱动模型。具体来说,建模误差MSE为0.15V/cell, RMSE为12.15mV/cell, MAE为8.14mV, RE为0.49%。因此,该模型适用于未来研究中数字孪生等能源网格研究。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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