Laser-induced breakdown spectroscopy (LIBS): calibration challenges, combination with other techniques, and spectral analysis using data science

IF 3.1 2区 化学 Q2 CHEMISTRY, ANALYTICAL Journal of Analytical Atomic Spectrometry Pub Date : 2024-11-08 DOI:10.1039/D4JA00250D
Dennis Silva Ferreira, Diego Victor Babos, Mauro Henrique Lima-Filho, Heloisa Froehlick Castello, Alejandro C. Olivieri, Fabiola Manhas Verbi Pereira and Edenir Rodrigues Pereira-Filho
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Abstract

Laser-Induced Breakdown Spectroscopy (LIBS) is a versatile and powerful analytical technique widely used for rapid, in situ elemental analysis across various fields, from industrial quality control to planetary exploration. This review addresses the critical aspects and emerging trends in LIBS, focusing on calibration challenges, integrating complementary techniques (data fusion), and applying data science for spectral analysis. Calibration is a fundamental challenge in LIBS due to matrix effects, signal drift, and variations in experimental conditions. Recent advancements aim to develop matrix-independent calibration models and employ machine learning algorithms to improve calibration accuracy and robustness. LIBS has also proven invaluable in space exploration, particularly on Mars. Instruments like ChemCam and SuperCam have successfully utilized LIBS to perform real-time chemical analysis of the Martian surface, providing critical insights into its composition and history. The review further explores the advancements in multivariate calibration techniques for handling complex and multi-component systems. Techniques such as Partial Least Squares (PLS) regression and Principal Component Analysis (PCA) are increasingly employed to address the high dimensionality of LIBS data, enhancing the precision and reliability of the analysis. In addition, combining LIBS with other instrumental analytical techniques expands its analytical capabilities. Data fusion strategies integrating LIBS with techniques like Raman spectroscopy, X-ray fluorescence (XRF), and hyperspectral imaging provide a more comprehensive understanding of material composition. These integrated systems, supported by sophisticated data fusion algorithms, offer unprecedented insights and accuracy. Finally, applying data science in LIBS transforms spectral inspection and analysis. Machine learning and deep learning methods are being adopted to automate and enhance the processing and interpretation of LIBS spectra, uncovering complex patterns and improving analysis accuracy. The future lies in leveraging big data analytics and real-time processing to address more complex analytical challenges. In conclusion, LIBS is evolving rapidly, driven by advancements in calibration methods, techniques integration, and data science. This review highlights the potential of LIBS to continue pushing the boundaries of material analysis and its significant contributions to diverse scientific and industrial fields.

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激光诱导击穿光谱(LIBS):校准挑战、与其他技术的结合以及利用数据科学进行光谱分析
激光诱导击穿光谱(LIBS)是一种用途广泛、功能强大的分析技术,广泛应用于从工业质量控制到行星探索等各个领域的快速原位元素分析。本综述探讨了 LIBS 的关键方面和新兴趋势,重点是校准挑战、整合互补技术(数据融合)以及将数据科学应用于光谱分析。由于基质效应、信号漂移和实验条件的变化,校准是 LIBS 的基本挑战。最近的进展旨在开发与矩阵无关的校准模型,并采用机器学习算法来提高校准精度和鲁棒性。事实证明,LIBS 在太空探索,特别是火星探索中也非常有价值。ChemCam 和 SuperCam 等仪器已经成功地利用 LIBS 对火星表面进行了实时化学分析,为了解火星的组成和历史提供了重要依据。综述进一步探讨了处理复杂和多组分系统的多元校准技术的进展。越来越多地采用偏最小二乘法(PLS)回归和主成分分析(PCA)等技术来处理 LIBS 数据的高维性,从而提高分析的精度和可靠性。此外,将 LIBS 与其他仪器分析技术相结合还能扩展其分析能力。将 LIBS 与拉曼光谱、X 射线荧光 (XRF) 和高光谱成像等技术相结合的数据融合策略可以更全面地了解材料成分。在复杂的数据融合算法支持下,这些集成系统可提供前所未有的洞察力和准确性。最后,在 LIBS 中应用数据科学改变了光谱检测和分析。目前正在采用机器学习和深度学习方法来自动化和加强 LIBS 光谱的处理和解释,从而发现复杂的模式并提高分析的准确性。未来将利用大数据分析和实时处理来应对更复杂的分析挑战。总之,在校准方法、技术集成和数据科学进步的推动下,LIBS 正在迅速发展。本综述强调了 LIBS 继续推动材料分析发展的潜力及其对不同科学和工业领域的重大贡献。
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来源期刊
CiteScore
6.20
自引率
26.50%
发文量
228
审稿时长
1.7 months
期刊介绍: Innovative research on the fundamental theory and application of spectrometric techniques.
期刊最新文献
Back cover Laser-induced breakdown spectroscopy (LIBS): calibration challenges, combination with other techniques, and spectral analysis using data science High-precision MC-ICP-MS measurements of Cd isotopes using a novel double spike method without Sn isobaric interference† Magneto-electrical fusion enhancement of LIBS signals: a case of Al and Fe emission lines' characteristic analysis in soil Sensitive and rapid determination of the iodine/calcium ratio in carbonate rock samples by ICP-MS based on solution cathode glow discharge sampling†
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