Department of Soil Science Erosion and Land Protection, Institute of Soil Science and Plant Cultivation-State Research Institute, Czartoryskich 8, 24-100 Puławy, Poland.
Institute of Environmental Engineering, Water Center, Warsaw University of Life Sciences, Nowoursynowska 159, 02-776 Warsaw, Poland.
Molecules. 2022 Oct 28;27(21):7334. doi: 10.3390/molecules27217334.
Visible and near-infrared spectroscopy (VIS-NIRS) is a fast and simple method increasingly used in soil science. This study aimed to investigate VIS-NIRS applicability to predict soil black carbon (BC) content and the method's suitability for rapid BC-level screening. Forty-three soil samples were collected in an agricultural area remaining under strong industrial impact. Soil texture, pH, total nitrogen (N) and total carbon (C), soil organic carbon (SOC), soil organic matter (SOM), and BC were analyzed. Samples were divided into three classes according to BC content (low, medium, and high BC content) and scanned in the 350-2500 nm range. A support vector machine (SVM) was used to develop prediction models of soil properties. Partial least-square with SVM (PLS-SVM) was used to classify samples for screening purposes. Prediction models of soil properties were at best satisfactory (N: R = 0.76, RMSE = 0.59 g kg, RPIQ = 0.65), due to large kurtosis and data skewness. The RMSE were large (16.86 g kg for SOC), presumably due to the limited number of samples available and the wide data spread. Given our results, the VIS-NIRS method seems efficient for classifying soil samples from an industrialized area according to BC content level (training accuracy of 77% and validation accuracy of 81%).
可见近红外光谱(VIS-NIRS)是一种快速而简单的方法,在土壤科学中越来越多地被使用。本研究旨在探讨 VIS-NIRS 预测土壤黑碳(BC)含量的适用性以及该方法用于快速筛选 BC 水平的适宜性。在一个仍然受到强烈工业影响的农业区采集了 43 个土壤样本。分析了土壤质地、pH 值、总氮(N)和总碳(C)、土壤有机碳(SOC)、土壤有机质(SOM)和 BC。根据 BC 含量(低、中、高 BC 含量)将样品分为三类,并在 350-2500nm 范围内进行扫描。支持向量机(SVM)用于开发土壤性质预测模型。偏最小二乘支持向量机(PLS-SVM)用于分类样本以进行筛选目的。由于峰度和数据偏度较大,土壤性质的预测模型仅为中等(N:R = 0.76,RMSE = 0.59 g kg,RPIQ = 0.65)。RMSE 较大(SOC 的 RMSE 为 16.86 g kg),可能是由于样本数量有限且数据分布广泛。根据我们的结果,VIS-NIRS 方法似乎可以有效地根据 BC 含量水平对来自工业化地区的土壤样品进行分类(训练准确性为 77%,验证准确性为 81%)。