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基于共振激发的激光诱导击穿光谱研究进展

[Research Progress on Laser-Induced Breakdown Spectroscopy Based on Resonance Excitation].

作者信息

Wang Xu-zhao, Hao Zhong-qi, Guo Lian-bo, Li Xiang-you, Lu Yong-feng, Zeng Xiao-yan

出版信息

Guang Pu Xue Yu Guang Pu Fen Xi. 2015 May;35(5):1159-64.

Abstract

Laser-induced breakdown spectroscopy (LIBS), a new kind of atomic spectrum analysis technology, has attracted much atterition of the researchers due to its characteristics of real-time, simultaneous multi-element analysis, and no sample preparation. However, the poor analytical sensitivity has been an important factor that restricts the development of this technology. LIBS based on resonance excitation combines atomic fluorescence spectroscopy and laser-induced breakdown spectroscopy and selectively excites the target elements. In this way, the analytical sensitivity of LIBS can be improved substantially and its application for trace elements detection is greatly expanded. In this paper, the research development of LIBS based on resonance excitation is summarized. The generation of atomic, fluorescence spectrum in laser-induced plasma, the typical classification and the basic principle of LIBS based on resonance. excitation are introduced. The influence of ablation laser energy, resonant laser energy and wavelength, delay between the ablation laser and the resonant laser, and the gate width on spectral enhancement are analyzed in detail. The application status and deficiencies of LIBS based on resonance excitation in the fields of metallurgy, environmental monitoring and isotope detection are elaborated. Future prospects of LIBS based on resonance excitation are also described.

摘要

激光诱导击穿光谱技术(LIBS)是一种新型的原子光谱分析技术,因其具有实时、多元素同时分析以及无需样品制备等特点,而备受研究人员关注。然而,分析灵敏度较低一直是制约该技术发展的重要因素。基于共振激发的LIBS结合了原子荧光光谱和激光诱导击穿光谱,能够选择性地激发目标元素。通过这种方式,可以大幅提高LIBS的分析灵敏度,并极大地拓展其在痕量元素检测方面的应用。本文综述了基于共振激发的LIBS的研究进展。介绍了激光诱导等离子体中原子荧光光谱的产生、基于共振激发的LIBS的典型分类及其基本原理。详细分析了烧蚀激光能量、共振激光能量和波长、烧蚀激光与共振激光之间的延迟以及门宽对光谱增强的影响。阐述了基于共振激发的LIBS在冶金、环境监测和同位素检测领域的应用现状及不足。还描述了基于共振激发的LIBS的未来前景。

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