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Application of a series of artificial neural networks to on-site quantitative analysis of lead into real soil samples by laser induced breakdown spectroscopy

机译:一系列人工神经网络在激光诱导击穿光谱法现场定量分析土壤中铅中的应用

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Artificial neural networks were applied to process data from on-site LIBS analysis of soil samples. A first artificial neural network allowed retrieving the relative amounts of silicate, calcareous and ores matrices into soils. As a consequence, each soil sample was correctly located inside the ternary diagram characterized by these three matrices, as verified by ICP-AES. Then a series of artificial neural networks were applied to quantify lead into soil samples. More precisely, two models were designed for classification purpose according to both the type of matrix and the range of lead concentrations. Then, three quantitative models were locally applied to three data subsets. This complete approach allowed reaching a relative error of prediction close to 20%, considered as satisfying in the case of on-site analysis. (C) 2014 Elsevier B.V. All rights reserved.
机译:人工神经网络被用于处理来自土壤样品的现场LIBS分析的数据。第一个人工神经网络允许将相对数量的硅酸盐,钙质和矿石基质提取到土壤中。结果,通过ICP-AES验证,每个土壤样品都正确定位在以这三个矩阵为特征的三元图内部。然后应用一系列的人工神经网络对土壤样品中的铅进行定量。更准确地说,根据基质类型和铅浓度范围,设计了两种用于分类目的的模型。然后,将三个定量模型局部应用于三个数据子集。这种完整的方法可以使预测的相对误差接近20%,这在现场分析中被认为是令人满意的。 (C)2014 Elsevier B.V.保留所有权利。

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