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Comparing Different Data Preprocessing Methods for Monitoring Soil Heavy Metals Based on Soil Spectral Features

机译:基于土壤光谱特征的土壤重金属监测数据预处理方法比较

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The lands near mining industries in the Czech Republic are subjected to soil pollution with heavy metals. Excessive heavy metal concentrations in soils not only dramatically impact the soil quality, but also due to their persistent nature and indefinite biological half-lives, potentially toxic metals can accumulate in the food chain and can eventually endanger human health. Monitoring and spatial information of these elements require a large number of samples and cumbersome and time-consuming laboratory measurements. A faster method has been developed based on a multivariate calibration procedure using support vector machine regression (SVMR) with cross-validation, to establish a relationship between reflectance spectra in the visible-near infrared (Vis-NIR) region and concentration of Mn, Cu, Cd, Zn, and Pb in soil. Spectral preprocessing methods, first and second derivatives (FD and SD), standard normal variate (SNV), multiplicative scatter correction (MSC), and continuum removal (CR) were employed after smoothing with Savitzky-Golay to improve the robustness and performance of the calibration models. According to the criteria of maximal coefficient of determination (R-cv(2)) and minimal root mean square error of prediction in cross-validation (RMSEPcv), the SVMR algorithm with FD preprocessing was determined as the best method for predicting Cu, Mn, Pb, and Zn concentration, whereas the SVMR model with CR preprocessing was chosen as the final method for predicting Cd. Overall, this study indicated that the Vis-NIR reflectance spectroscopy technique combined with a continuously enriched soil spectral library as well as a suitable preprocessing method could be a nondestructive alternative for monitoring of the soil environment. The future possibilities of multivariate calibration and preprocessing with real-time remote sensing data have to be explored.
机译:捷克共和国采矿业附近的土地遭受重金属污染。土壤中过量的重金属浓度不仅会极大地影响土壤质量,而且由于其持久的性质和不确定的生物半衰期,潜在的有毒金属会在食物链中积累,最终危害人类健康。这些元素的监测和空间信息需要大量样本以及繁琐且耗时的实验室测量。一种基于多变量校准程序的快速方法,该方法使用支持向量机回归(SVMR)和交叉验证,以建立可见-近红外(Vis-NIR)区域的反射光谱与Mn,Cu浓度之间的关系,镉,锌和铅在使用Savitzky-Golay进行平滑处理之后,采用了光谱预处理方法,一阶和二阶导数(FD和SD),标准正态变量(SNV),乘法散射校正(MSC)和连续谱去除(CR),以提高该函数的鲁棒性和性能。校准模型。根据最大确定系数(R-cv(2))和交叉验证中预测的最小均方根误差(RMSEPcv)的标准,将采用FD预处理的SVMR算法确定为预测Cu,Mn的最佳方法,Pb和Zn浓度,而采用CR预处理的SVMR模型被选为预测Cd的最终方法。总体而言,这项研究表明,Vis-NIR反射光谱技术与连续丰富的土壤光谱库以及合适的预处理方法相结合,可以成为监测土壤环境的一种无损选择。必须探索使用实时遥感数据进行多元校准和预处理的未来可能性。

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