Direct Cu, Fe, and Ni Ions Multicomponent Analysis Using UV-Vis Spectrophotometric Method

S. Suprapto, Y. Ni'mah
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Abstract

This study presents a direct multicomponent analysis method using UV-Vis spectrophotometry to determine Cu(II), Fe(III), and Ni(II) ion content without prior complexation or separation. Single and multivariate regression was used to predict metal ion content, and the resulting model was trained and validated using a dataset of 25 multi-component samples. The mean recoveries for Cu(II), Fe(III), and Ni(II) using linear and ridge regression based only on absorbance at 805 nm were 99.97% and 101.6%, 95.42% and 95.65%, and 99.43% and 99.99%, respectively, for the 20% test data. The mean recoveries for Cu(II), Fe(III), and Ni(II) using linear and ridge regression based only on absorbance at 805 nm were 92.27% and 95.03%, 125.3% and 124.11%, and 104.15% and 105.52%, respectively, for the test solution outside of the training data. These results demonstrate the effectiveness of the multivariate UV-Vis spectrophotometric method for the simultaneous determination of Cu(II) and Ni(II) in multicomponent samples, which meets the analysis standard and can be successfully applied. Finally, the study sheds light on the influence of spectral interference on the accuracy of regression models. It highlights the importance of carefully selecting the wavelengths used as predictors in such models. This can have significant implications for developing and validating analytical methods, particularly in cases where multiple analytes were present in a sample.
紫外可见分光光度法直接分析铜、铁、镍离子多组分
本研究提出了一种直接的多组分分析方法,采用紫外可见分光光度法测定Cu(II), Fe(III)和Ni(II)离子含量,无需事先络合或分离。采用单因素回归和多因素回归预测金属离子含量,并使用25个多组分样本数据集对所得模型进行训练和验证。仅基于805 nm吸光度的线性回归和脊回归对Cu(II)、Fe(III)和Ni(II)的平均回收率分别为99.97%和101.6%,95.42%和95.65%,99.43%和99.99%。仅基于805 nm吸光度的线性回归和脊回归对Cu(II)、Fe(III)和Ni(II)的平均回收率分别为92.27%和95.03%,125.3%和124.11%,104.15%和105.52%。结果表明,多元紫外可见分光光度法可用于多组分样品中Cu(II)和Ni(II)的同时测定,符合分析标准,可成功应用。最后,研究揭示了光谱干扰对回归模型精度的影响。它强调了在这种模型中仔细选择用作预测因子的波长的重要性。这对于开发和验证分析方法具有重要意义,特别是在样品中存在多种分析物的情况下。
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