首页> 外文期刊>Journal of Applied Spectroscopy >ARTIFICIAL NEURAL NETWORK APPROACH FOR MODELING COBALT EXTRACTION FROM BIOLOGICAL AND WATER SAMPLES BY MAGNETIC NANOPARTICLES
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ARTIFICIAL NEURAL NETWORK APPROACH FOR MODELING COBALT EXTRACTION FROM BIOLOGICAL AND WATER SAMPLES BY MAGNETIC NANOPARTICLES

机译:用磁性纳米粒子模拟生物和水样中钴的提取的人工神经网络方法

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In this study, an artificial neural network (ANN) model was used to predict the extraction efficiency of cobalt from biological and water samples by magnetic nanoparticles based on batch solid-phase extraction and inductively coupledplasma-optical emission spectrometry (ICP-OES). The effect of operational parameters, including solution pH, amounts of the complexing agent (1-(2-pyridylazo)-2-naphthol) and nanoparticles, and extraction time was studied. The parameters were optimized for the maximum extraction of cobalt ions. The optimum conditions were as follows: initial pH 11.0, contents of complexing agent and nanoparticles 0.75 mg/l and 125 mg, respectively, and extraction time 12.5 min. After backpropagation (BP) training, the ANN model was able to predict the extraction efficiency of cobalt ions with a tangent sigmoid transfer function (tansig) at a hidden layer with 15 neurons and a linear transfer function (purelin) at an output layer. The Levenberg-Marquardt algorithm (LMA) was found as the best of 11 BP algorithms with a minimum mean squared error (MSE) of 0.009895. The linear regression between the corresponding targets and the network outputs was shown to be satisfactory with a correlation coefficient (R~2) of 0.978. Under optimum conditions, the detection limit (LOD) of this method was 7.0 ng/l, and the relative standard deviation (RSD%) was 2.1% (n = 10, c = 10 μg/l). The method of magnetic nanoparticles based on batch solid-phase extraction was applied to the separation, pre-concentration, and determination of cobalt both in biological and water samples and in a certified reference material.
机译:在这项研究中,人工神经网络(ANN)模型被用来预测基于批次固相萃取和电感耦合等离子体发射光谱法(ICP-OES)的磁性纳米粒子从生物和水样品中提取钴的效率。研究了溶液pH值,络合剂(1-(2-吡啶基偶氮)-2-萘酚)和纳米粒子的用量以及萃取时间等操作参数的影响。优化了参数以最大程度地提取钴离子。最佳条件如下:初始pH为11.0,络合剂和纳米颗粒的含量分别为0.75 mg / l和125 mg,萃取时间为12.5 min。经过反向传播(BP)训练后,ANN模型能够预测具有15个神经元的隐层的切线S型传递函数(tansig)和输出层的线性传递函数(purelin)的钴离子的提取效率。 Levenberg-Marquardt算法(LMA)被认为是11种BP算法中的最佳算法,最小均方误差(MSE)为0.009895。相应目标与网络输出之间的线性回归显示令人满意,相关系数(R〜2)为0.978。在最佳条件下,该方法的检出限(LOD)为7.0 ng / l,相对标准偏差(RSD%)为2.1%(n = 10,c = 10μg/ l)。基于分批固相萃取的磁性纳米颗粒方法被用于分离,预浓缩和测定生物样品,水样品和经认证的参考物质中的钴。

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