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Quantitative analysis of multi-component complex oil spills based on the Least-Squares Support Vector Regression

机译:基于最小二乘支持向量回归的多组分复杂溢油事故定量分析

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Quantitative analysis of the simulated complex oil spills was researched based on PSO-LS-SVR method. Forty simulated mixture oil spills samples were made with different concentration proportions of gasoline, diesel and kerosene oil, and their near infrared spectra were collected. The parameters of least squares support vector machine were optimized by particle swarm optimization algorithm. The optimal concentration quantitative models of three-component oil spills were established. The best regularization parameter C and kernel parameter σ of gasoline, diesel and kerosene model were 48.1418 and 0.1067; 53.2820 and 0.1095; 59.1689 and 0.1000 respectively; The decision coefficient R~2 of the prediction model were 0.9983、0.9907 and 0.9942 respectively; RMSEP values were 0.0753, 0.1539 and 0.0789 respectively; For gasoline, diesel fuel and kerosene oil models, the mean value and variance value of predict absolute error were -0.0176±0.0636 μL/mL, -0.0084±0.1941 μL/mL, and 0.00338±0.0726 μL/mL respectively. The results showed that each component's concentration of the oil spills samples could be detected by the NIR technology combined with PSO-LS-SVR regression method, the predict results were accurate and reliable, thus this method can provide effective means for the quantitative detection and analysis of complex marine oil spills.
机译:基于PSO-LS-SVR方法,对模拟复杂溢油事故进行了定量分析。用不同浓度比例的汽油,柴油和煤油制作了40个模拟混合溢油样品,并收集了它们的近红外光谱。通过粒子群算法对最小二乘支持向量机的参数进行优化。建立了三组分溢油的最佳浓度定量模型。汽油,柴油和煤油模型的最佳正则化参数C和内核参数σ为48.1418和0.1067; 53.2820和0.1095; 59.1689和0.1000;预测模型的决策系数R〜2分别为0.9983、0.9907和0.9942。 RMSEP值分别为0.0753、0.1539和0.0789;对于汽油,柴油和煤油模型,预测绝对误差的平均值和方差分别为-0.0176±0.0636μL/ mL,-0.0084±0.1941μL/ mL和0.00338±0.0726μL/ mL。结果表明,采用NIR技术结合PSO-LS-SVR回归方法可以检测出溢油样中各成分的浓度,预测结果准确可靠,为定量检测分析提供了有效手段。复杂的海洋石油泄漏。

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