Zhao Guo, Wang Hui, Liu Gang
Key Lab of Modern Precision Agriculture System Integration Research, Ministry of Education of China, China Agricultural University, Beijing 100083, China.
Key Lab of Agricultural Information Acquisition Technology, Ministry of Agricultural of China, China Agricultural University, Beijing 100083, China.
Sensors (Basel). 2017 Jul 3;17(7):1558. doi: 10.3390/s17071558.
In this study, a novel method based on a Bi/glassy carbon electrode (Bi/GCE) for quantitatively and directly detecting Cd in the presence of Cu without further electrode modifications by combining square-wave anodic stripping voltammetry (SWASV) and a back-propagation artificial neural network (BP-ANN) has been proposed. The influence of the Cu concentration on the stripping response to Cd was studied. In addition, the effect of the ferrocyanide concentration on the SWASV detection of Cd in the presence of Cu was investigated. A BP-ANN with two inputs and one output was used to establish the nonlinear relationship between the concentration of Cd and the stripping peak currents of Cu and Cd. The factors affecting the SWASV detection of Cd and the key parameters of the BP-ANN were optimized. Moreover, the direct calibration model (i.e., adding 0.1 mM ferrocyanide before detection), the BP-ANN model and other prediction models were compared to verify the prediction performance of these models in terms of their mean absolute errors (MAEs), root mean square errors (RMSEs) and correlation coefficients. The BP-ANN model exhibited higher prediction accuracy than the direct calibration model and the other prediction models. Finally, the proposed method was used to detect Cd in soil samples with satisfactory results.
在本研究中,提出了一种基于铋/玻碳电极(Bi/GCE)的新型方法,通过结合方波阳极溶出伏安法(SWASV)和反向传播人工神经网络(BP-ANN),在无需进一步修饰电极的情况下,定量直接检测存在铜时的镉。研究了铜浓度对镉溶出响应的影响。此外,还研究了亚铁氰化物浓度对在存在铜的情况下SWASV检测镉的影响。使用具有两个输入和一个输出的BP-ANN建立镉浓度与铜和镉的溶出峰电流之间的非线性关系。优化了影响镉SWASV检测的因素以及BP-ANN的关键参数。此外,比较了直接校准模型(即在检测前添加0.1 mM亚铁氰化物)、BP-ANN模型和其他预测模型,以根据它们的平均绝对误差(MAE)、均方根误差(RMSE)和相关系数来验证这些模型的预测性能。BP-ANN模型表现出比直接校准模型和其他预测模型更高的预测准确性。最后,将所提出的方法用于检测土壤样品中的镉,结果令人满意。