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An Approach to Reduce the Sample Consumption for LIBS based Identification of Explosive Materials

机译:基于LIBS的爆炸物识别减少样品消耗的方法

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摘要

An experimental design based on spectral construction, which has potential to minimise the sample consumption, the number of laser shots and time required to collect the data from laser induced breakdown spectroscopy for identification of the explosive materials is reported in the study. This approach is an ideal solution in the field of hazardous material detection, where the availability of the sample can be a serious limiting factor. The experimental data recorded on a set of five high energy materials has been considered to test the performance of the proposed methodology. Multiple spectra are constructed by assuming a normal distribution at each wavelength of the spectrum, where random numbers are generated using the mean and standard deviations obtained from arbitrarily chosen five experimental spectra from each class. The newly generated spectra are called as synthetic spectra. The correct classification obtained from-K-nearest neighbour combined with principal component analysis and partial least square-discriminant analysis demonstrated very promising results. The correct classification rates differed by only 4 per cent-7 per cent as compared to conventional approach where experimental spectra alone are considered for the analysis. Further, when RDX is excluded, the obtained results are almost identical with conventional approach.
机译:研究中报告了基于光谱构造的实验设计,该实验具有最大程度地减少样品消耗,减少激光发射次数和从激光诱导击穿光谱法收集数据以鉴定爆炸物所需的时间。这种方法是有害物质检测领域的理想解决方案,在这种情况下,样品的可用性可能是一个严重的限制因素。已经考虑了在一组五种高能材料上记录的实验数据,以测试所提出方法的性能。通过假定光谱的每个波长处的正态分布来构造多个光谱,其中使用从每个类别中任意选择的五个实验光谱中获得的均值和标准差来生成随机数。新生成的光谱称为合成光谱。从-K近邻获得的正确分类与主成分分析和偏最小二乘判别分析相结合,显示出非常有希望的结果。与仅考虑实验光谱进行分析的常规方法相比,正确的分类率仅相差4%-7%。此外,当排除RDX时,获得的结果与常规方法几乎相同。

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