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Classification of iron ore based on acidity and alkalinity by laser induced breakdown spectroscopy coupled with N-nearest neighbours (N3)

机译:基于酸度和碱度的激光诱导击穿光谱结合N近邻(N3)对铁矿石进行分类

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Laser induced breakdown spectroscopy (LIBS) coupled with N-nearest neighbours (N3) method was developed for classification and identification of four types of iron ore (acid iron ore, seiili-self fluxing iron ore, self-fluxing iron ore and alkaline iron ore). The parameters included spectral pretreatment methods and spectral range selection and the model parameter ?± was optimized at the same time by 5-fold cross validation and evaluated by average classification error rate. The region of 400a€“600 nm was normalized by maximum integrated intensity and used to construct the N3 and KNN (K nearest neighbor) models. The N3 and KNN models were evaluated and applied to discriminate iron ore. The classification accuracy is 100% for the N3 model, which shows better predictive capabilities than the KNN model for the classification of iron ore. Therefore, LIBS technique combined with N3 could be a promising method for real-time online, rapid analysis in mining and mineral processing industries.
机译:结合N近邻法(N3)的激光诱导击穿光谱法(LIBS)用于分类和鉴定四种类型的铁矿石(酸性铁矿石,赛利-自熔铁矿石,自熔铁矿石和碱性铁矿石) )。这些参数包括光谱预处理方法和光谱范围选择,同时通过5倍交叉验证对模型参数进行优化,并通过平均分类错误率进行评估。通过最大积分强度将400-600 nm区域归一化,并用于构建N3和KNN(K最近邻)模型。评估了N3和KNN模型,并将其应用于判别铁矿石。 N3模型的分类精度为100%,与铁矿石分类的KNN模型相比,具有更好的预测能力。因此,结合N3的LIBS技术可能成为采矿和选矿行业中实时在线,快速分析的有前途的方法。

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