College of Ecology and Environmental Science, Ningxia University, Yinchuan 750021, China.
College of Geographical Sciences and Planning, Ningxia University, Yinchuan 750021, China.
Ying Yong Sheng Tai Xue Bao. 2023 Nov;34(11):3011-3020. doi: 10.13287/j.1001-9332.202311.013.
Accurately obtaining soil water and organic matter content is of great significance for improving soil qua-lity in croplands with medium to low yield. We explored the estimation effect of fractional order differentiation (FOD) combined with different spectral indices on soil water and organic matter content in medium and low yield croplands of Ningxia Yellow River Irrigation Area. After root mean square transformation of field measured hyperspectral reflectance, we used 0-2 FOD (with a step length of 0.25) to construct difference index (DI), ratio index (RI), product index (PI), sum index (SI), generalized difference index (GDI), and nitrogen planar domain index (NPDI) and to select the optimal spectral index based on the correlation coefficients between six spectral indices with soil water and organic matter contents. We constructed a model for estimating soil water and organic matter content based on partial least squares regression (PLSR) and support vector machine (SVM). The results showed that the correlation between soil water and organic matter content and spectral information was effectively improved after FOD transformation compared with the original spectrum, with maximum increases of 0.1785 and 0.1713, respectively. The soil water content sensitive bands were mainly in the range of 400-630 and 1350-1940 nm, while the sensitive bands of organic matter content were mainly at 460-850, 1530-1910, and 2060-2310 nm. The accuracy of SVM model was significantly higher than that of PLSR, and the soil water content estimation model based on 1.75-order NPDI-SVM reached the highest precision, with a validation determination coefficient () of 0.970, root mean square error (RMSE) of 1.615, and relative percent deviation (RPD) of 4.211. The organic matter content estimation model based on 0.5 order DI-SVM had the best performance, with , RMSE and RPD of 0.983, 0.701 and 5.307, respectively. Our results could provide data and technological support for soil water and nutrient monitoring, quality improvement, and graphics creating in similar area with medium to low yield fields.
准确获取土壤水分和有机质含量,对提高中低产农田土壤质量具有重要意义。本研究以宁夏引黄灌区中低产农田为研究对象,探讨了分数阶微分(FOD)结合不同光谱指数对土壤水分和有机质含量的估算效果。对野外实测高光谱反射率进行均方根变换后,采用 0-2 阶 FOD(步长为 0.25)构建差分指数(DI)、比值指数(RI)、乘积指数(PI)、和指数(SI)、广义差分指数(GDI)和氮平面域指数(NPDI),并基于 6 个光谱指数与土壤水分和有机质含量的相关系数,选择最优光谱指数。在此基础上,采用偏最小二乘回归(PLSR)和支持向量机(SVM)构建土壤水分和有机质含量估算模型。结果表明,与原始光谱相比,FOD 变换后土壤水分和有机质含量与光谱信息的相关性得到了有效提高,最大相关系数分别提高了 0.1785 和 0.1713。土壤水分含量敏感波段主要集中在 400-630nm 和 1350-1940nm,有机质含量敏感波段主要位于 460-850nm、1530-1910nm 和 2060-2310nm。SVM 模型的精度明显高于 PLSR,基于 1.75 阶 NPDI-SVM 的土壤水分含量估算模型精度最高,验证决定系数()为 0.970,均方根误差(RMSE)为 1.615,相对偏差(RPD)为 4.211。基于 0.5 阶 DI-SVM 的有机质含量估算模型性能最佳,其为 0.983、0.701 和 5.307。本研究结果可为类似中低产农田区土壤水分和养分监测、质量提升、制图等提供数据和技术支持。