论文标题

激光诱导的分解光谱的机器学习方法的进展,重点是土壤分析

Progress towards machine learning methodologies for laser-induced breakdown spectroscopy with an emphasis on soil analysis

论文作者

Huang, Yingchao, Harilal, Sivanandan S., Bais, Abdul, Hussein, Amina E.

论文摘要

激光生产的等离子体的光学发射光谱,通常称为激光诱导的分解光谱(LIBS),是用于快速土壤分析的新兴分析工具。然而,存在着液生物的具体挑战,例如基质效应和定量问题,这些问题需要进一步研究LIB的应用,特别是用于分析异质样品(例如土壤)。机器学习应用(ML)方法的进步可以解决其中一些问题,从而促进土壤分析中的LIBS的潜力。本文旨在回顾LIBS应用的进度与ML方法的相结合,重点是用于减少基质效应,特征选择,定量分析,土壤分类和自我吸收的方法学方法。讨论了各种采用的ML方法的性能,包括它们的缺点和优势,以使研究人员清楚地了解LIBS中ML应用的当前状态,以提高其分析能力。提出了土壤分析中LIBS开发的挑战和前景,为未来的研究提供了一条途径。这篇评论文章强调了用于LIBS土壤分析的ML工具,这些工具与其他LIBS应用大致相关。

Optical emission spectroscopy of laser-produced plasmas, commonly known as laser-induced breakdown spectroscopy (LIBS), is an emerging analytical tool for rapid soil analysis. However, specific challenges with LIBS exist, such as matrix effects and quantification issues, that require further study in the application of LIBS, particularly for analysis of heterogeneous samples such as soils. Advancements in the applications of Machine Learning (ML) methods can address some of these issues, advancing the potential for LIBS in soil analysis. This article aims to review the progress of LIBS application combined with ML methods, focusing on methodological approaches used in reducing matrix effect, feature selection, quantification analysis, soil classification, and self-absorption. The performance of various adopted ML approaches is discussed, including their shortcomings and advantages, to provide researchers with a clear picture of the current status of ML applications in LIBS for improving its analytical capability. The challenges and prospects of LIBS development in soil analysis are proposed, offering a path toward future research. This review article emphasize ML tools for LIBS soil analysis that are broadly relevant for other LIBS applications.

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