测定铜电解液中添加剂浓度的机器学习外推性

IF 5.5 3区 材料科学 Q1 ELECTROCHEMISTRY
Hyunwoo Jeon , Hyeonsu Kim , Jeong Wuk Kim , Young Yoon , Myung Jun Kim , Jae Jeong Kim
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引用次数: 0

摘要

测量酸性电解质中添加剂的浓度对于维持铜电沉积过程的高可靠性至关重要。传统的循环伏安溶出(CVS)方法的准确性和效率都有一定的限制,通常需要过多的分析时间,并且本质上不适合原位分析。需要一种先进的分析工具来改进铜电沉积工艺,基于机器学习(ML)的技术成为主要的候选技术,因为它们能够同时从单个伏安图中提取多种添加剂的浓度。虽然基于ml的工具可以确保更高的准确性和更短的分析时间,但需要进一步的研究来推进这些技术。本研究的重点是确定添加剂浓度的ML模型的外推性。一个涉及PEG-Cl- SPS组合的案例研究,通过有意限制模型训练的浓度范围,然后在整个浓度范围内预测三种添加剂。通过研究三种添加剂的测试和预测浓度之间的关系,以向上和向下的可推断性来评估各种ML模型。人工神经网络(ANN)模型在同时确定三种添加剂的浓度时具有最高的外推性。
本文章由计算机程序翻译,如有差异,请以英文原文为准。

Extrapolability of machine learning for determining additive concentrations in copper electrolyte

Extrapolability of machine learning for determining additive concentrations in copper electrolyte
Measurement of additive concentrations in acidic electrolytes is essential for maintaining the high reliability of the Cu electrodeposition process. Conventional cyclic voltammetric stripping (CVS) methods limit both accuracy and efficiency, often requiring excessive analytical time, and are not inherently suitable for in-situ analysis. An advanced analytical tool is needed to improve the Cu electrodeposition process, with machine learning (ML)-based techniques emerging as leading candidates due to their ability to simultaneously extract the concentrations of multiple additives from a single voltammogram. While ML-based tools ensure higher accuracy and significantly shorter analytical times, further research is necessary to advance these techniques. This study focuses on the extrapolability of ML models for determining additive concentrations. A case study involving the PEG-Cl--SPS combination is conducted by intentionally limiting the concentration range for model training, followed by prediction of the three additives across the full concentration range. Various ML models are evaluated in terms of both upward and downward extrapolability by investigating the relationship between test and predicted concentrations of the three additives. The artificial neural network (ANN) model demonstrates the highest extrapolability in simultaneously determining the concentrations of three additives.
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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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