基于人工神经网络的机器学习方法定量分析Cu电解质中的DPS和PEG-PPG

IF 5.6 3区 材料科学 Q1 ELECTROCHEMISTRY
Jeong Wuk Kim , Huiju Seo , Myung Jun Kim , Jae Jeong Kim
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引用次数: 0

摘要

铜电解液中添加剂浓度的测定是维持铜电沉积性能的第一步。循环伏安溶出(CVS)方法一直被用于这一目的,尽管它的局限性,如低精度和无法进行现场监测。因此,由于添加剂浓度的波动,长期使用铜电解质会带来工艺误差的风险。为了解决这些问题,本研究引入了一种基于机器学习(ML)的技术,无需任何预处理或采样步骤,即可从单个伏安图中提取添加剂浓度信息。具体来说,这项基于ml的技术旨在预测3-N, n-二甲氨基二硫代氨基甲酰基-1-丙磺酸(DPS)的浓度,DPS是一种随浓度变化而表现出非线性加速行为的加速剂。四种不同的算法-线性回归,脊回归,随机森林和神经网络模型-检查了他们学习聚醚和DPS之间复杂相互作用的能力,允许从单个伏安图中提取它们的浓度。这项研究表明,神经网络是最有效的捕获非线性模式的伏安图。此外,我们的结果表明,仔细选择训练的潜在范围可以通过最小化模型大小来产生有效的ML技术,同时保持高分析精度。
本文章由计算机程序翻译,如有差异,请以英文原文为准。

Quantitative analyses of DPS and PEG-PPG in Cu electrolyte using machine learning with artificial neural network

Quantitative analyses of DPS and PEG-PPG in Cu electrolyte using machine learning with artificial neural network

Quantitative analyses of DPS and PEG-PPG in Cu electrolyte using machine learning with artificial neural network
The measurement of additive concentrations in Cu electrolyte is the first step in maintaining the performance of Cu electrodeposition. The cyclic voltammetric stripping (CVS) method has been continuously used for this purpose, despite its limitations, such as low accuracy and the inability to perform in-situ monitoring. Consequently, long-term usage of Cu electrolyte carries a risk of process errors due to fluctuations in additive concentration. To address these issues, this study introduces a machine learning (ML)-based technique to extract additive concentration information from a single voltammogram, without the need for any pretreatment or sampling steps. Specifically, this ML-based technique aims to predict the concentration of 3-N,N-dimethylaminodithiocarbamoyl-1-propanesulfonic acid (DPS), an accelerator that exhibits non-linear acceleration behavior depending on its concentration. Four different algorithms—linear regression, ridge regression, random forest, and neural network models—are examined for their ability to learn the complex interaction between polyether and DPS, allowing extraction of their concentrations from a single voltammogram. This study demonstrates that neural network is the most effective for capturing non-linear patterns in voltammograms. Additionally, our results indicate that careful selection of the potential range for training can yield an efficient ML technique by minimizing model size while maintaining high analytical accuracy.
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来源期刊
Electrochimica Acta
Electrochimica Acta 工程技术-电化学
CiteScore
11.30
自引率
6.10%
发文量
1634
审稿时长
41 days
期刊介绍: Electrochimica Acta is an international journal. It is intended for the publication of both original work and reviews in the field of electrochemistry. Electrochemistry should be interpreted to mean any of the research fields covered by the Divisions of the International Society of Electrochemistry listed below, as well as emerging scientific domains covered by ISE New Topics Committee.
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