College of Geography and Planning, Ningxia University, Yinchuan 750021, China.
Breeding Base for Sate Key Laboratory of Land Degradation and Ecological Restoration in Northwest China/Key Laboratory for Restoration and Reconstruction of Degraded Ecosystems in Northwest China, School of Ecology and Environment, Ningxia University, Yinchuan 750021, China.
Ying Yong Sheng Tai Xue Bao. 2023 Nov;34(11):3045-3052. doi: 10.13287/j.1001-9332.202311.012.
Accurate diagnosis of water and salt information in saline agricultural lands is crucial for long-term soil quality improvement and arable land conservation. In this study, we extracted field-scale vegetation canopy spectral information by UAV hyperspectral information, transforming the reflectance (R) to standard normal variate transformation (SNV), multiplicative scatter correction (MSC), first derivative of reflectance (FDR) and second derivative of reflectance (SDR). We determined the optimal spectral transformation forms of soil water content (SWC), soil pH, and soil salt content (SSC) by the maximum absolute correlation coefficient (MACC), and extracted the feature bands by competitive adaptive reweighted sampling (CARS). We constructed an inversion model of soil water and salt information by partial least squares regression (PLSR), random forest (RF), and extreme gradient boosting (XGBoost). The results showed that R, FDR and MSC were the best spectral transformation types for soil water content, soil pH, and soil salt content, and the corresponding MACC were 0.730, 0.472 and 0.654, respectively. The CARS algorithm effectively eliminated the irrelevant variables, optimally selecting 16-17 feature bands from 150 spectral bands. Both soil water content and soil pH performed best with XGBoost model, achieving determination coefficient of validation () 0.927 and 0.743, and the relative percentage difference (RPD) amounted to 3.93 and 2.45. For soil salt content, the RF model emerged as the best inversion method with and RPD of 0.427 and 1.64, respectively. The study could provide a reference solution for the integrated remote sensing monitoring of soil water and salt information in space and sky, serving as a scientific guide for the amelioration and sustainable management of saline lands.
准确诊断盐渍农田的水盐信息对于长期改善土壤质量和保护耕地至关重要。本研究通过无人机高光谱信息提取田间尺度植被冠层光谱信息,将反射率(R)变换为标准正态变量变换(SNV)、乘性散射校正(MSC)、反射率一阶导数(FDR)和反射率二阶导数(SDR)。通过最大绝对相关系数(MACC)确定土壤含水量(SWC)、土壤 pH 值和土壤盐分含量(SSC)的最佳光谱变换形式,通过竞争自适应重加权采样(CARS)提取特征波段。通过偏最小二乘回归(PLSR)、随机森林(RF)和极端梯度增强(XGBoost)构建土壤水盐信息反演模型。结果表明,R、FDR 和 MSC 是土壤水分、土壤 pH 值和土壤盐分含量的最佳光谱变换类型,相应的 MACC 分别为 0.730、0.472 和 0.654。CARS 算法有效地消除了无关变量,从 150 个光谱波段中最优选择了 16-17 个特征波段。土壤水分和土壤 pH 值均以 XGBoost 模型表现最佳,验证决定系数()分别为 0.927 和 0.743,相对百分比差异(RPD)分别为 3.93 和 2.45。对于土壤盐分含量,RF 模型是最佳反演方法,具有 0.427 和 1.64 的 RPD。该研究可为天地一体化土壤水盐信息的综合遥感监测提供参考解决方案,为盐渍土的改良和可持续管理提供科学指导。