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• 方法与技术 • 上一篇    

基于高光谱和Landsat-8 OLI影像的盐渍化土壤水盐估算模型构建

贾萍萍1,2,3,孙媛1,2,3,尚天浩1,2,3,张俊华1,2,3*   

  1. 1宁夏大学资源环境学院, 银川 750021;2宁夏大学环境工程研究院, 银川 750021;3宁夏旱区资源评价与环境调控重点实验室, 银川 750021)
  • 出版日期:2020-07-10 发布日期:2021-01-09

Estimation models of soil water-salt based on hyperspectral and Landsat-8 OLI image.

JIA Ping-ping1,2,3, SUN Yuan1,2,3, SHANG Tian-hao1,2,3, ZHANG Jun-hua1,2,3*   

  1. (1College of Resources and Environmental Science, Ningxia University, Yinchuan 750021, China; 2Institute of Environmental Engineering, Ningxia University, Yinchuan 750021, China; 3Ningxia Key Laboratory of Resource Assessment and Environment Regulation in Arid Region, Ningxia University, Yinchuan 750021, China).
  • Online:2020-07-10 Published:2021-01-09

摘要: 水盐信息的迅速获取是盐碱地改良利用的重要基础数据。以宁夏银北平罗县盐渍化土壤为研究对象,基于实测土壤水分、盐分含量和高光谱数据反射率及其同期Landsat-8 OLI多光谱影像数据,利用重采样技术进行实测高光谱数据与OLI影像波段匹配,采用11个线性和非线性函数筛选出敏感波段和11个盐分指数,基于多元线性回归(MLR)、偏最小二乘回归(PLSR)和支持向量机(SVM)分别构建土壤含水率(SMC)和含盐量(SSC)的估算模型。结果表明:重采样处理后的实测高光谱波段反射率与OLI影像波段反射率具有极显著相关性,基于线性和非线性函数筛选出的重采样敏感波段及影像盐分指数为自变量构建MLR、PLSR和SVM的SSC估算模型决定系数R2分别为0.626、0.510和0.829,SMC估算模型R2分别为0.455、0.204和0.731,土壤盐分和水分的SVM估算模型的稳定性和预测能力均优于MLR和PLSR模型,适用于研究区SSC和SMC估算。结果可以为研究区及同类地区不同时期土壤水盐信息估算提供科学依据。

关键词: 覆盖, 毛竹, 土壤渗透性, 根长密度, 土壤动物

Abstract: Monitoring and evaluation of soil salinity and water content quickly and timely is important for agricultural production and land restoration in saline areas. Based on data of measured soil water and salt content, and hyperspectral reflectance and contemporaneous Landsat-8 OLI image in Pingluo, northern Yinchuan of Ningxia, we used resampling technology to match the measured hyperspectral data with OLI image bands, screened out sensitive bands and 11 salinity indices by 11 linear and nonlinear multiple function models. We established the regression models between soil salt content (SSC) and water content (SMC) with multiple linear regression (MLR), partial least squares regression (PLSR), and support vector machine regression (SVM). The results showed that the reflectance of resampling measured hyperspectral bands had a significant correlation with that of the OLI image bands under different soil salinity and water content. The R2 of SSC inversion models was 0.626, 0.510 and 0.829 for MLR, PLSR and SVM, respectively, and was 0.455, 0.204 and 0.731 in SMC inversion models. Results from the accuracy evaluation of the models through the validation set showed that the SVM model had better performance in predicting SSC and SMC than MLR and PLSR. Our results provide reference for the prediction of soil salinity and water content in different periods in the study region and similar regions.

Key words: Phyllostachys heterocycla, soil infiltration characteristics, mulching, root length density, soil fauna.