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首页> 外文期刊>Analytica chimica acta >Resolution of highly overlapping differential pulse anodic stripping voltammetric signals using multicomponent analysis and neural networks
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Resolution of highly overlapping differential pulse anodic stripping voltammetric signals using multicomponent analysis and neural networks

机译:使用多分量分析和神经网络解析高度重叠的差分脉冲阳极溶出伏安信号

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摘要

This paper reports and discusses the results obtained by using multicomponent analysis methods based on multiple linear regression and neural network procedures to resolve highly overlapping signals obtained by differential pulse anodic stripping voltammetry by using a static drop electrode. The former procedures were applied to the well-known chemical model composed of Pb(II), TI(I), In(III) and Cd(II) in binary, ternary and quaternary mixtures. Different network architectures are investigated using the back propagation algorithm. Versatile software for data processing was developed. The proposed methodology was used to determine these four metals in tap water.
机译:本文报告并讨论了使用基于多元线性回归和神经网络程序的多组分分析方法,通过使用静态液滴电极来解析差分脉冲阳极溶出伏安法获得的高度重叠信号而获得的结果。将先前的程序应用于由二元,三元和四元混合物组成的Pb(II),TI(I),In(III)和Cd(II)组成的众所周知的化学模型。使用反向传播算法研究了不同的网络体系结构。开发了用于数据处理的多功能软件。建议的方法用于确定自来水中的这四种金属。

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