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首页> 外文期刊>Journal of Materials Chemistry, A. Materials for energy and sustainability >Interpretable machine learning modeling of capacitive deionization for contribution analysis of electrode and process features
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Interpretable machine learning modeling of capacitive deionization for contribution analysis of electrode and process features

机译:电极和工艺特征贡献分析电容去离子的可解释机学习建模

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Capacitive deionization (CDI) is a promising technique used to desalinate water via electrosorption of ions inside the porous structure of two oppositely charged electrodes. Developing a numerical model to predict CDI desalination performance and to understand how electrode and process features jointly contribute to desalination is very crucial for rational CDI system designing. However, the non-linear behavior of CDI and the interconnectivity of the parameters make this a challenging task. In this work, two different machine learning (ML) models of Artificial Neural Network and Random Forest have been implemented to predict the electrosorption capacity of CDI with a reasonable accuracy based on important electrode and process features. Then, based on the established models, the contribution and relative importance of each feature in deionization are determined and validated. The specific surface area of electrodes and the electrolyte salt concentration are defined as the most important electrode and process features, respectively. Oxygen and nitrogen elements of the electrode material are shown to have a suppressing and enhancing impact on deionization, respectively. A nitrogen-rich electrode with a dominant channel-pore fraction is expected to show high deionization capacity according to the established models which is in agreement with previous experimental and theoretical findings. This study shows the strong abilities of ML in predicting the non-linear behavior of the CDI system and in revealing the role of each feature in desalination.
机译:电容去离子(CDI)是一种很有前途的技术,通过在两个带相反电荷的电极的多孔结构中电吸附离子来淡化水。开发一个数值模型来预测CDI脱盐性能,并了解电极和工艺特性如何共同促进脱盐,对于合理的CDI系统设计至关重要。然而,CDI的非线性行为和参数的互连性使得这是一项具有挑战性的任务。在这项工作中,两种不同的机器学习(ML)模型人工神经网络和随机森林已经实现,以合理的精度预测CDI的电吸附容量,基于重要的电极和过程特征。然后,基于所建立的模型,确定和验证了每个特征在去离子中的贡献和相对重要性。电极的比表面积和电解质盐浓度分别被定义为最重要的电极和工艺特征。电极材料中的氧和氮元素分别对去离子有抑制和增强作用。根据已建立的模型,具有主要通道孔分数的富氮电极有望显示出较高的去离子能力,这与先前的实验和理论结果一致。这项研究表明,ML在预测CDI系统的非线性行为以及揭示每个特征在脱盐中的作用方面具有强大的能力。

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