School of Resource and Environmental Sciences, Wuhan University, Wuhan 430079, China; State Key Laboratory of Soil and Sustainable Agriculture, Chinese Academy of Sciences, Nanjing 210008, China.
Hubei Academy of Environmental Sciences, Wuhan 430072, China.
Sci Total Environ. 2019 Feb 15;651(Pt 2):1969-1982. doi: 10.1016/j.scitotenv.2018.09.391. Epub 2018 Oct 1.
Heavy metal contamination of peri-urban agricultural soil is detrimental to soil environmental quality and human health. A rapid assessment of soil pollution status is fundamental for soil remediation. Heavy metals can be monitored by visible and near-infrared spectroscopy coupled with chemometric models. First and second derivatives are two commonly used spectral preprocessing methods for resolving overlapping peaks. However, these methods may lose the detailed spectral information of heavy metals. Here, we proposed a fractional-order derivative (FOD) algorithm for preprocessing reflectance spectra. A total of 170 soil samples were collected from a typical peri-urban agricultural area in Wuhan City, Hubei Province. The reflectance spectra and lead (Pb) and zinc (Zn) concentrations of the samples were obtained in the laboratory. Two calibration methods, namely, partial least square regression and random forest (RF), were used to establish the relation between the spectral data and the two heavy metals. In addition, we aimed to explore the use of spectral estimation mechanism to predict the Pb and Zn concentrations. Three model evaluation parameters, namely, coefficient of determination (R), root mean squared error, and ratio of performance to inter-quartile range (RPIQ), were used. Overall, the spectral reflectance decreased with the increase in Pb and Zn contents. The FOD algorithm gradually removed spectral baseline drifts and overlapping peaks. However, the spectral strength slowly decreased with the increase in fractional order. High fractional-order spectra underwent more spectral noises than low fractional-order spectra. The optimal prediction accuracies were achieved by the 0.25- and 0.5-order reflectance RF models for Pb (validation R = 0.82, RPIQ = 2.49) and Zn (validation R = 0.83, RPIQ = 2.93), respectively. A spectral detection of Pb and Zn mainly relied on their covariation with soil organic matter, followed by Fe. In summary, our results provided theoretical bases for the rapid investigation of Pb and Zn pollution areas in peri-urban agricultural soils.
城市周边农业土壤重金属污染对土壤环境质量和人类健康有害。对土壤污染状况进行快速评估是土壤修复的基础。可见近红外光谱结合化学计量模型可用于监测重金属。一阶导数和二阶导数是两种常用于解析重叠峰的光谱预处理方法。然而,这些方法可能会丢失重金属的详细光谱信息。在此,我们提出了一种分数阶导数(FOD)算法用于预处理反射光谱。共采集湖北省武汉市典型城市周边农业区 170 个土壤样品,实验室获取样品反射光谱和 Pb、Zn 浓度。采用偏最小二乘回归和随机森林(RF)两种校准方法,建立光谱数据与两种重金属之间的关系。此外,还探索了使用光谱估计机制预测 Pb、Zn 浓度的方法。采用决定系数(R)、均方根误差和四分位极差内性能比(RPIQ)三个模型评价参数。总体而言,光谱反射率随 Pb、Zn 含量的增加而降低。FOD 算法逐渐消除了光谱基线漂移和重叠峰。然而,随着分数阶的增加,光谱强度缓慢下降。高分数阶光谱比低分数阶光谱经历更多的光谱噪声。0.25 阶和 0.5 阶 RF 模型对 Pb(验证 R=0.82,RPIQ=2.49)和 Zn(验证 R=0.83,RPIQ=2.93)的预测精度最高。Pb、Zn 主要通过与土壤有机质的协变来进行光谱检测,其次是 Fe。综上所述,本研究结果为快速调查城市周边农业土壤中 Pb、Zn 污染区提供了理论依据。