首页> 外文期刊>Analytica chimica acta >The continuous-addition-of-reagent technique as an effective tool for enhancing kinetic-based multicomponent determinations using computational neural networks
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The continuous-addition-of-reagent technique as an effective tool for enhancing kinetic-based multicomponent determinations using computational neural networks

机译:试剂连续添加技术是使用计算神经网络增强基于动力学的多组分测定的有效工具

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The batch and continuous-addition-of-reagent (CAR) techniques were tested to determine whether the approach used to mix the sample and reagents influences accuracy in kinetic multicomponent determinations based on computational neural networks (CNNs). Both techniques were used to obtain kinetic profiles for ternary mixtures of related sulphur-containing amino acids (L-cysteine, N-acetyl-L-cysteine and DL-homocysteine) by reaction with the copper(II)-neocuproine complex, from which CNN inputs were acquired at a fixed sampling frequency. Once the influence of chemical and computational variables was established, trained networks were used to estimate the amino acid concentrations in mixtures with relative standard errors of prediction in the range 15-45% and 1-4% for the batch and CAR technique, respectively. The accuracy of the CAR results was found to depend largely on its peculiar response curve, which is a result of the special way in which the sample and reagents are mixed. (C) 1999 Elsevier Science B.V. All rights reserved. [References: 30]
机译:测试了批处理和连续添加试剂(CAR)技术,以确定用于混合样品和试剂的方法是否会影响基于计算神经网络(CNN)的动力学多组分测定的准确性。两种技术都通过与铜(II)-新古铜配合物反应而获得了相关含硫氨基酸(L-半胱氨酸,N-乙酰-L-半胱氨酸和DL-高半胱氨酸)的三元混合物的动力学曲线输入以固定的采样频率获取。一旦确定了化学和计算变量的影响,就可以使用训练有素的网络来估计混合物中的氨基酸浓度,相对于批处理和CAR技术而言,相对标准预测误差分别在15-45%和1-4%范围内。发现CAR结果的准确性主要取决于其特殊的响应曲线,这是样品和试剂混合的特殊方式的结果。 (C)1999 Elsevier Science B.V.保留所有权利。 [参考:30]

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