[Estimation of soil moisture and organic matter content in saline alkali farmland by using CARS algorithm combined with covariates].

Q3 Environmental Science 应用生态学报 Pub Date : 2024-05-01 DOI:10.13287/j.1001-9332.202405.021
Qi-Dong Ding, Yi-Jing Wang, Jun-Hua Zhang, Ke-Li Jia, Hua-Yu Huang
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Abstract

Rapid acquisition of the data of soil moisture content (SMC) and soil organic matter (SOM) content is crucial for the improvement and utilization of saline alkali farmland soil. Based on field measurements of hyperspectral reflectance and soil properties of farmland soil in the Hetao Plain, we used a competitive adaptive reweighted sampling algorithm (CARS) to screen sensitive bands after transforming the original spectral reflectance (Ref) into a standard normal variable (SNV). Strategies Ⅰ, Ⅱ, and Ⅲ were used to model the input variables of Ref, Ref SNV, Ref-SNV+ soil covariate (SC), and digital elevation model (DEM). We constructed SMC and SOM estimation models based on random forest (RF) and light gradient boosting machine (LightGBM), and then verified and compared the accuracy of the models. The results showed that after CARS screening, the sensitive bands of SMC and SOM were compressed to below 3.3% of the entire band, which effectively optimized band selection and reduced redundant spectral information. Compared with the LightGBM model, the RF model had higher accuracy in SMC and SOM estimation, and the input variable strategy Ⅲ was better than Ⅱ and Ⅰ. The introduction of auxiliary variables effectively improved the estimation ability of the model. Based on comprehensive analysis, the coefficient of determination (Rp2), root mean square error (RMSE), and relative analysis error (RPD) of the SMC estimation model validation based on strategy Ⅲ-RF were 0.63, 3.16, and 2.01, respectively. The SOM estimation models based on strategy Ⅲ-RF had Rp2, RMSE, and RPD of 0.93, 1.15, and 3.52, respectively. The strategy Ⅲ-RF model was an effective method for estimating SMC and SOM. Our results could provide a new method for the rapid estimation of soil moisture and organic matter content in saline alkali farmland.

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[利用 CARS 算法结合协变量估算盐碱地土壤水分和有机质含量]。
快速获取土壤含水量(SMC)和土壤有机质(SOM)含量数据对盐碱地土壤改良和利用至关重要。基于河套平原农田土壤高光谱反射率和土壤性质的野外实测,将原始光谱反射率(Ref)转化为标准正态变量(SNV)后,采用竞争性自适应加权采样算法(CARS)筛选敏感波段。采用策略Ⅰ、Ⅱ和Ⅲ对输入变量Ref、Ref-SNV、Ref-SNV+土壤协变量(SC)和数字高程模型(DEM)进行建模。我们构建了基于随机森林(RF)和光梯度提升机(LightGBM)的 SMC 和 SOM 估算模型,并对模型的精度进行了验证和比较。结果表明,经过CARS筛选后,SMC和SOM的敏感带被压缩到整个波段的3.3%以下,有效优化了波段选择,减少了冗余光谱信息。与 LightGBM 模型相比,RF 模型的 SMC 和 SOM 估计精度更高,输入变量策略Ⅲ优于Ⅱ和Ⅰ。辅助变量的引入有效提高了模型的估计能力。经综合分析,基于策略Ⅲ-RF的SMC估计模型验证的判定系数(Rp2)、均方根误差(RMSE)和相对分析误差(RPD)分别为0.63、3.16和2.01。基于策略Ⅲ-RF 的 SOM 估计模型的 Rp2、RMSE 和 RPD 分别为 0.93、1.15 和 3.52。策略Ⅲ-RF模型是估计SMC和SOM的有效方法。我们的研究结果为盐碱地土壤水分和有机质含量的快速估算提供了一种新方法。
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来源期刊
应用生态学报
应用生态学报 Environmental Science-Ecology
CiteScore
2.50
自引率
0.00%
发文量
11393
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