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首页> 外文期刊>Annali di Chimica: Journal of Analytical and Environmental Chemistry >SIMULTANEOUS DETERMINATION OF THIOCYANATE and SALYCILATE BY A COMBINED UV-SPECTROPHOTOMETRIC DETECTION PRINCIPAL COMPONENT ARTIFICIAL NEURAL NETWORK
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SIMULTANEOUS DETERMINATION OF THIOCYANATE and SALYCILATE BY A COMBINED UV-SPECTROPHOTOMETRIC DETECTION PRINCIPAL COMPONENT ARTIFICIAL NEURAL NETWORK

机译:紫外分光光度法主成分人工神经网络同时测定硫氰酸根和水杨酸根

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摘要

A modified principle component artificial neural network (PC-ANN) model is developed for simultaneous determination of thiocyanate and salycilate concentration after passing through the bulk of a liquid membrane by tri-phenyl benzyl phosphonium chloride.All calibration,and test samples data were obtained using UV-Vis spectrophotometer.In this way,a modified PC-ANN consisting of three layers of nodes was trained by combination of Bayesian-Levenberg-Marquardt as training rule.Sigmoid and liner transfer functions were used in the hidden and output layers respectively to facilitate nonlinear calibration.The model could accurately estimate the concentration of components with acceptable precision and accuracy,for mixtures.The PC-ANN model exhibits a good ability for the simultaneous determination of the thiocyanate and salycilate in concentration range 0.5x10~(-4) mol.l~(-1) up to 5.0 x10~(-4) mol.l~(-1)with Root Mean square error (2.22% and 2.20%,for thiocyanate and salycilate,respectively) and high correlation coefficients (R~2=0.998 or greater).Results obtained with modified trained PC-ANN were compared with stepwise linear regression (SMLR) model.Validation of the two models shows a better ability in estimation of the modified PC-ANN as compared with the SMLR model (MSRE given are 3.12%,6.31%.).
机译:建立了改进的主成分人工神经网络(PC-ANN)模型,用于同时测定三苯基苄基氯化nium通过大部分液膜后的硫氰酸盐和水杨酸盐浓度。所有标定和测试样品数据均使用紫外-可见分光光度计,以贝叶斯-莱文贝格-马夸特的组合为训练规则,对由三层节点组成的改进型PC-ANN进行训练,在隐藏层和输出层分别使用了S型和线性传递函数,以方便非线性校正。该模型可以准确地估计混合物中各组分的浓度,并且具有可接受的精度和准确度.PC-ANN模型具有同时测定浓度范围0.5x10〜(-4)mol硫氰酸盐和水杨酸盐的良好能力.l〜(-1)最高为5.0 x10〜(-4)mol.l〜(-1),对于硫氰酸盐和盐酸盐,均方根误差分别为(2.22%和2.20%) )和较高的相关系数(R〜2 = 0.998或更高)。将经过修改的训练PC-ANN的结果与逐步线性回归(SMLR)模型进行比较。两个模型的验证显示了对经修改的PC-ANN进行估计的更好的能力与SMLR模型相比,ANN(给出的MSRE为3.12%,6.31%)。

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