Prediction of Potassium Content in Rice Leaves Based on Spectral Features and Random Forests

IF 3.3 2区 农林科学 Q1 AGRONOMY Agronomy-Basel Pub Date : 2023-09-07 DOI:10.3390/agronomy13092337
Yue Yu, Haiye Yu, Xiaokai Li, Lei Zhang, Yuanyuan Sui
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Abstract

The information acquisition about potassium, which affects the quality and yield of crops, is of great significance for crop nutrient management and intelligent decision making in smart agriculture. This article proposes a method for predicting the rice leaf potassium content (LKC) using spectral characteristics and random forests (RF). The method screens spectral characteristic variables based on the linear correlation analysis results of rice LKC and four transformed spectra (original reflectance (R), first derivative reflectance (FDR), continuum-removed reflectance (CRR), and normalized reflectance (NR)) of leaves and the PCA dimensionality reduction results of vegetation indices. Following a second screening of the correlated single band and vegetation index variables of the four transformed spectra, the RF is used to obtain the mixed variable (MV), and regression models are developed to achieve an accurate prediction of rice LKC. Additionally, the effect of potassium spectral sensitivity bands, indices, spectral transformation form, and different modeling methods on rice LKC prediction accuracy is assessed. The results showed that the mixed variable obtained with the second screening using the random forest feature selection method could effectively improve the prediction accuracy of rice LKC. The regression models based on the single band variables (BV) and the vegetation index variables (IV), FDR–RF and IV–RF, with R2 values of 0.62301 and 0.7387 and RMSE values of 0.24174 and 0.15045, respectively, are the best models. In comparison to the previous two models, the MV–RF validation had a higher R2 and a lower RMSE, reaching 0.77817 and 0.14913, respectively. It can be seen that the RF has a better processing ability for the MV that contains vegetation indices and IV than for the BV. Furthermore, the results of different variable screening and regression analyses also revealed that the single band’s range of 1402–1428 nm and 1871–1907 nm, as well as the vegetation indices constituted of reflectance 1799–1881 nm and 2276–2350 nm, are of great significance for predicting rice LKC. This conclusion can provide a reference for establishing a universal vegetation index related to potassium.
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基于光谱特征和随机森林的水稻叶片钾含量预测
钾的信息获取对作物的品质和产量有重要影响,对智慧农业中的作物养分管理和智能决策具有重要意义。本文提出了一种利用光谱特征和随机森林预测水稻叶片钾含量的方法。该方法基于水稻LKC的线性相关分析结果和叶片的原始反射率(R)、一阶导数反射率(FDR)、连续去除反射率(CRR)、归一化反射率(NR) 4种变换光谱以及植被指数的PCA降维结果筛选光谱特征变量。通过对4个转换光谱的相关单波段和植被指数变量进行二次筛选,利用RF获得混合变量(MV),并建立回归模型,实现水稻LKC的准确预测。此外,还评估了钾光谱敏感性波段、指标、光谱变换形式和不同建模方法对水稻LKC预测精度的影响。结果表明,采用随机森林特征选择方法进行二次筛选得到的混合变量能够有效提高水稻LKC的预测精度。基于单波段变量(BV)和植被指数变量(IV)、FDR-RF和IV - rf的回归模型的R2值分别为0.62301和0.7387,RMSE值分别为0.24174和0.15045,是最佳模型。与前两种模型相比,MV-RF验证具有更高的R2和更低的RMSE,分别达到0.77817和0.14913。可以看出,RF对包含植被指数和IV的MV的处理能力优于对BV的处理能力。此外,不同变量筛选和回归分析结果也表明,1402 ~ 1428 nm和1871 ~ 1907 nm的单波段范围以及反射率1799 ~ 1881 nm和2276 ~ 2350 nm的植被指数对水稻LKC的预测具有重要意义。该结论可为建立与钾有关的通用植被指数提供参考。
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来源期刊
Agronomy-Basel
Agronomy-Basel Agricultural and Biological Sciences-Agronomy and Crop Science
CiteScore
6.20
自引率
13.50%
发文量
2665
审稿时长
20.32 days
期刊介绍: Agronomy (ISSN 2073-4395) is an international and cross-disciplinary scholarly journal on agronomy and agroecology. It publishes reviews, regular research papers, communications and short notes, and there is no restriction on the length of the papers. Our aim is to encourage scientists to publish their experimental and theoretical research in as much detail as possible. Full experimental and/or methodical details must be provided for research articles.
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