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结合冠层光谱信息和作物生长参数,改善植被覆盖条件下根区土壤盐分的监测。

Improving the monitoring of root zone soil salinity under vegetation cover conditions by combining canopy spectral information and crop growth parameters.

作者信息

Shi Xiaoyan, Song Jianghui, Wang Haijiang, Lv Xin, Tian Tian, Wang Jingang, Li Weidi, Zhong Mingtao, Jiang Menghao

机构信息

College of Agriculture, Shihezi University, Shihezi, China.

Key Laboratory of Oasis Ecological Agriculture of Xinjiang Production and Construction Corps, Shihezi University, Shihezi, Xinjiang, China.

出版信息

Front Plant Sci. 2023 Jul 4;14:1171594. doi: 10.3389/fpls.2023.1171594. eCollection 2023.

Abstract

Soil salinization is one of the main causes of land degradation in arid and semi-arid areas. Timely and accurate monitoring of soil salinity in different areas is a prerequisite for amelioration. Hyperspectral technology has been widely used in soil salinity monitoring due to its high efficiency and rapidity. However, vegetation cover is an inevitable interference in the direct acquisition of soil spectra during crop growth period, which greatly limits the monitoring of soil salinity by remote sensing. Due to high soil salinity could lead to difficulty in plants' water absorption, and inhibit plant dry matter accumulation, a method for monitoring root zone soil salinity by combining vegetation canopy spectral information and crop aboveground growth parameters was proposed in this study. The canopy spectral information was acquired by a spectroradiometer, and then variable importance in projection (VIP), competitive adaptive reweighted sampling (CARS), and random frog algorithm (RFA) were used to extract the salinity spectral features in cotton canopy spectrum. The extracted features were then used to estimate root zone soil salinity in cotton field by combining with cotton plant height, aboveground biomass, and shoot water content. The results showed that there was a negative correlation between plant height/aboveground biomass/shoot water content and soil salinity in 0-20, 0-40, and 0-60 cm soil layers at different growth stages of cotton. Spectral feature selection by the three methods all improved the prediction accuracy of soil salinity, especially CARS. The prediction accuracy based on the combination of spectral features and cotton growth parameters was significantly higher than that based on only spectral features, with R increasing by 10.01%, 18.35%, and 29.90% for the 0-20, 0-40, and 0-60 cm soil layer, respectively. The model constructed based on the first derivative spectral preprocessing, spectral feature selection by CARS, cotton plant height, and shoot water content had the highest accuracy for each soil layer, with R of 0.715,0.769, and 0.742 for the 0-20, 0-40, 0-60 cm soil layer, respectively. Therefore, the method by combining cotton canopy hyperspectral data and plant growth parameters could significantly improve the prediction accuracy of root zone soil salinity under vegetation cover conditions. This is of great significance for the amelioration of saline soil in salinized farmlands arid areas.

摘要

土壤盐渍化是干旱和半干旱地区土地退化的主要原因之一。及时、准确地监测不同地区的土壤盐分是土壤改良的前提条件。高光谱技术因其高效、快速,已被广泛应用于土壤盐分监测。然而,在作物生长期间,植被覆盖不可避免地干扰了土壤光谱的直接获取,这极大地限制了遥感对土壤盐分的监测。由于高土壤盐分可能导致植物吸水困难,并抑制植物干物质积累,本研究提出了一种结合植被冠层光谱信息和作物地上生长参数来监测根区土壤盐分的方法。通过光谱辐射仪获取冠层光谱信息,然后利用投影变量重要性(VIP)、竞争性自适应重加权采样(CARS)和随机蛙跳算法(RFA)提取棉花冠层光谱中的盐分光谱特征。提取的特征再与棉花株高、地上生物量和地上部含水量相结合,用于估算棉田根区土壤盐分。结果表明,在棉花不同生育期,0 - 20 cm、0 - 40 cm和0 - 60 cm土层的株高/地上生物量/地上部含水量与土壤盐分呈负相关。三种方法进行光谱特征选择均提高了土壤盐分的预测精度,尤其是CARS方法。基于光谱特征与棉花生长参数相结合的预测精度显著高于仅基于光谱特征的预测精度,0 - 20 cm、0 - 40 cm和0 - 60 cm土层的决定系数R分别提高了10.01%、18.35%和29.90%。基于一阶导数光谱预处理、CARS光谱特征选择、棉花株高和地上部含水量构建的模型对各土层的精度最高,0 - 20 cm、0 - 40 cm和0 - 60 cm土层的决定系数R分别为0.715、0.769和0.742。因此,结合棉花冠层高光谱数据和植物生长参数的方法能够显著提高植被覆盖条件下根区土壤盐分的预测精度。这对于干旱地区盐渍化农田的盐碱土改良具有重要意义。

https://cdn.ncbi.nlm.nih.gov/pmc/blobs/1553/10352918/96e17c47176c/fpls-14-1171594-g001.jpg

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