National Engineering Laboratory for Efficient Utilization of Soil and Fertilizer Resources, College of Resources and Environment, Shandong Agricultural University, Tai'an, China.
Qingdao Hengyuande Real Estate Appraisal Limited Company, Qingdao, China.
PLoS One. 2020 Jan 8;15(1):e0227594. doi: 10.1371/journal.pone.0227594. eCollection 2020.
The ecological environment of the Yellow River Delta is fragile, and the soil degradation in the region is serious. Therefore it is important to discern the status of the soil degradation in a timely manner for soil conservation and utilization. The study area of this study was Kenli County in the Yellow River Delta of China. First, physical and chemical data of the soil were obtained by field investigations and soil sample analyses, and the hyper-spectra of air-dried soil samples were obtained via spectrometer. Then, the soil degradation index (SDI) was constructed by the key indicators of soil degradation, including pH, SSC, OM, AN, AP, AK, and soil texture. Next, according to a cluster analysis, soil degradation was divided into the following three grades: light degradation, moderate degradation, and heavy degradation. Moreover, the spectral characteristics of soil degradation were analyzed, and an estimation model of SDI was established by multiple stepwise regression. The results showed that the overall level of reflectance spectra increased with increased degree of soil degradation, that both derivative transformation and waveband reorganization could enhance the spectral information of soil degradation, and that the correlation between SDI and the spectral parameter of (Rλ2+Rλ1)/(Rλ2-Rλ1) was the highest among all the spectral parameters studied. On this basis, the optimum estimation model of SDI was established with the correlation coefficient of 0.811. This study fully embodies the potential of hyper-spectral technology in the study of soil degradation and provides a technical reference for the rapid extraction of information from soil degradation. Additionally, the study area is typical and representative, and thus can indirectly reflect the soil degradation situation of the whole Yellow River Delta.
黄河三角洲生态环境脆弱,区域土壤退化严重。因此,及时识别土壤退化状况对于土壤保护和利用至关重要。本研究的研究区域为中国黄河三角洲的垦利县。首先,通过野外调查和土壤样本分析获得土壤理化数据,并通过光谱仪获得风干土壤样本的高光谱数据。然后,利用土壤退化的关键指标(包括 pH 值、SSC、OM、AN、AP、AK 和土壤质地)构建土壤退化指数(SDI)。接下来,根据聚类分析,将土壤退化分为轻度退化、中度退化和重度退化三个等级。此外,分析了土壤退化的光谱特征,并通过逐步回归建立了 SDI 的估算模型。结果表明,随着土壤退化程度的增加,反射光谱的整体水平升高,导数变换和波段重组都可以增强土壤退化的光谱信息,且 SDI 与(Rλ2+Rλ1)/(Rλ2-Rλ1)光谱参数之间的相关性在所有研究的光谱参数中最高。在此基础上,建立了 SDI 的最优估算模型,其相关系数为 0.811。本研究充分体现了高光谱技术在土壤退化研究中的潜力,为快速提取土壤退化信息提供了技术参考。此外,研究区域具有典型性和代表性,可间接反映整个黄河三角洲的土壤退化情况。