研究目的
The aim of this study is to evaluate PCA and associated statistical parameters for the classification of single-shot LIBS spectra from gold ores based on the presence of Au emission lines.
研究成果
PCA and its related statistical parameters successfully identified and classified LIBS single-shot spectra containing the Au(I) 267.59 nm emission line. The method's performance was highly dependent on the spectral range analyzed, with a narrower range around the Au emission line improving detection. The study highlights the potential of PCA as a discrimination tool for samples with discrete analytes, despite challenges related to spectral variability and interference.
研究不足
The study acknowledges the high shot-to-shot variation in LIBS spectra and the presence of interfering emission lines as limitations. The applicability of the methodology to other situations may be affected by the size, shape, and abundance of gold particles in ore deposits as well as the host geological matrix.
1:Experimental Design and Method Selection
The study utilized Laser-induced breakdown spectroscopy (LIBS) and principal component analysis (PCA) for the classification of LIBS spectra from gold ores. The methodology involved analyzing 5000 single-shot LIBS spectra per sample, focusing on two spectral ranges (21 nm and 0.15 nm wide) around the Au(I) 267.59 nm emission line.
2:Sample Selection and Data Sources
Ore samples containing naturally occurring gold were obtained from a Colombian gold-production plant. Samples were prepared as pressed pellets from pulverized bulk samples. The gold concentrations in the samples ranged up to 7.7 μg/g.
3:List of Experimental Equipment and Materials
A 450 mJ, 6 ns duration, Q-switched, Nd:YAG laser (Continuum SL I-10) operating at 1064 nm and 5 Hz pulse repetition rate was used to produce the LIBS plasma. The light emitted by the plasma was captured and analyzed using a spectrometer (Princeton Instruments) and an ICCD camera (Princeton Instruments).
4:Experimental Procedures and Operational Workflow
The laser energy and detection times were optimized for each sample. The samples were analyzed by firing 5000 laser shots per sample, with the plasma light collected and spectrally resolved for analysis.
5:Data Analysis Methods
PCA was applied to reduce the dimensionality of the LIBS spectra and to classify the spectra based on the presence of Au emission lines. The performance of PCA was evaluated using statistical parameters such as sample residual and Mahalanobis distance.
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