An XGBoost Based Prediction Model for Electrochemical Characteristics of Hydrogen Production by Water Electrolysis

Ziyan Zhang, Bowen Ren, Xili Du, Laijun Chen
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Abstract

With the increasing proportion of renewable generation in the power system, the hydrogen storage is expected to play an important role in the future power system for its clean and efficient characteristics. As an important source of hydrogen storage, the electrochemical characteristics of hydrogen production from water electrolysis have a crucial impact on hydrogen production efficiency. In this paper, an XGBoost based prediction model is proposed for electrochemical characteristics of hydrogen production by water electrolysis under different operation conditions. Firstly, the over potential and impedance characteristics of electrolysis process were investigated through experiments under different temperature and concentration. Then, a performance prediction model of electrolysis hydrogen production is developed based on XGBoost. Test results show that the proposed prediction model is more practical compared with traditional machine learning methods for the analysis of electrochemical process of hydrogen production.
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基于XGBoost的水电解制氢电化学特性预测模型
随着可再生能源发电在电力系统中所占比例的不断提高,储氢技术以其清洁高效的特点,有望在未来的电力系统中发挥重要作用。水电解制氢作为重要的储氢源,其电化学特性对制氢效率有着至关重要的影响。本文提出了基于XGBoost的不同操作条件下水电解制氢电化学特性预测模型。首先,通过实验研究了不同温度和浓度下电解过程的过电位和阻抗特性。在此基础上,建立了基于XGBoost的电解制氢性能预测模型。实验结果表明,与传统的机器学习方法相比,所提出的预测模型对电化学制氢过程的分析更加实用。
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