Key Laboratory of Modern Precision Agriculture System Integration Research, Ministry of Education of China, China Agricultural University, Beijing 100083, China.
Key Laboratory of Agricultural Information Acquisition Technology, Ministry of Agriculture and Rural Affairs of China, China Agricultural University, Beijing 100083, China.
Sensors (Basel). 2020 Nov 27;20(23):6792. doi: 10.3390/s20236792.
In this study, an effective method for accurately detecting Pb(II) concentration was developed by coupling square wave anodic stripping voltammetry (SWASV) with support vector regression (SVR) based on a bismuth-film modified electrode. The interference of different Cu contents on the SWASV signals of Pb was investigated, and a nonlinear relationship between Pb concentration and the peak currents of Pb and Cu was determined. Thus, an SVR model with two inputs (i.e., peak currents of Pb and Cu) and one output (i.e., Pb concentration) was trained to quantify the above nonlinear relationship. The SWASV measurement conditions and the SVR parameters were optimized. In addition, the SVR mode, multiple linear regression model, and direct calibration mode were compared to verify the detection performance by using the determination coefficient () and root-mean-square error (RMSE). Results showed that the SVR model with and RMSE of the test dataset of 0.9942 and 1.1204 μg/L, respectively, had better detection accuracy than other models. Lastly, real soil samples were applied to validate the practicality and accuracy of the developed method for the detection of Pb with approximately equal detection results to the atomic absorption spectroscopy method and a satisfactory average recovery rate of 98.70%. This paper provided a new method for accurately detecting the concentration of heavy metals (HMs) under the interference of non-target HMs for environmental monitoring.
在这项研究中,通过将方波阳极溶出伏安法(SWASV)与基于铋膜修饰电极的支持向量回归(SVR)相结合,开发了一种准确检测 Pb(II)浓度的有效方法。研究了不同 Cu 含量对 Pb 的 SWASV 信号的干扰,并确定了 Pb 浓度与 Pb 和 Cu 的峰电流之间的非线性关系。因此,训练了一个具有两个输入(即 Pb 和 Cu 的峰电流)和一个输出(即 Pb 浓度)的 SVR 模型来定量描述上述非线性关系。优化了 SWASV 测量条件和 SVR 参数。此外,还比较了 SVR 模型、多元线性回归模型和直接校准模型,通过决定系数()和均方根误差(RMSE)验证了检测性能。结果表明,具有 和 RMSE 的测试数据集分别为 0.9942 和 1.1204 μg/L 的 SVR 模型具有更好的检测精度,优于其他模型。最后,应用实际土壤样品验证了该方法在检测受非目标 HM 干扰的 Pb 方面的实用性和准确性,与原子吸收光谱法的检测结果相当,平均回收率为 98.70%。本文为环境监测中重金属(HM)浓度的准确检测提供了一种新方法,可在非目标 HM 的干扰下进行检测。