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Parameters Optimization of Laser-Induced Breakdown Spectroscopy Experimental Setup for the Case with Beam Expander

机译:扩束镜箱激光诱导击穿光谱实验装置的参数优化

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Improvement of measurement precision and repeatability is one of the issues currently faced by the laser-induced breakdown spectroscopy (LIBS) technique, which is expected to be capable of precise and accurate quantitative analysis. It was found that there was great potential to improve the signal quality and repeatability by reducing the laser beam divergence angle using a suitable beam expander (BE). In the present work, the influences of several experimental parameters for the case with BE are studied in order to optimize the analytical performances: the signal to noise ratio (SNR) and the relative standard deviation (RSD). We demonstrate that by selecting the optimal experimental parameters, the BE-included LIBS setup can give higher SNR and lower RSD values of the line intensity normalized by the whole spectrum area. For validation purposes, support vector machine (SVM) regression combined with principal component analysis (PCA) was used to establish a calibration model to realize the quantitative analysis of the ash content. Good agreement has been found between the laboratory measurement results from the LIBS method and those from the traditional method. The measurement accuracy presented here for ash content analysis is estimated to be 0.31%, while the average relative error is 2.36%
机译:测量精度和可重复性的提高是激光诱导击穿光谱技术(LIBS)目前面临的问题之一,该技术有望实现精确和准确的定量分析。已经发现通过使用合适的扩束器(BE)减小激光束发散角,具有改善信号质量和可重复性的巨大潜力。在目前的工作中,研究了几种实验参数对BE的影响,以优化分析性能:信噪比(SNR)和相对标准偏差(RSD)。我们证明,通过选择最佳实验参数,包括BE的LIBS设置可以提供更高的SNR和更低的线强度的RSD值,该强度通过整个光谱区域归一化。为了验证目的,使用支持向量机(SVM)回归结合主成分分析(PCA)建立了校准模型,以实现灰分的定量分析。 LIBS方法的实验室测量结果与传统方法的实验室测量结果之间找到了很好的一致性。此处给出的用于灰分分析的测量精度估计为0.31%,而平均相对误差为2.36%

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