首页> 外文期刊>Transactions of the ASABE >PREDICTION OF N, P, AND K CONTENTS IN SUGARCANE LEAVES BY VIS-NIR SPECTROSCOPY AND MODELING OF NPK INTERACTION EFFECTS
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PREDICTION OF N, P, AND K CONTENTS IN SUGARCANE LEAVES BY VIS-NIR SPECTROSCOPY AND MODELING OF NPK INTERACTION EFFECTS

机译:Vis-nir光谱法通过Vis-nir光谱预测甘蔗叶中的N,P和K含量及NPK互动效应的建模

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摘要

Methods were studied to predict the N, P, and K contents in sugarcane leaves quickly and accurately at the seedling, tillering, and elongation stages from leaf spectral reflectance. A total of 117 valid leaf samples were used to obtain leaf spectral reflectance with an indoor VIS-NIR spectrophotometer. Using the spectral data processed by CARS-PCA as an independent variable, a six-fold cross-validated PLS model for N, P, and K contents was established. The R-2 values of the CARS-PCA-PLS models for N, P, and K prediction were 0.859, 0.677, and 0.932, respectively. Correlation analysis of the predicted N, P, and K contents was performed to explore the interaction effects between N, P, and K. To simulate the interaction effects among the three nutrients, 19 factors were assumed, including possible linear, quadratic, and cubic relationships between N, P, and K, and multi-factor cubic polynomial PLS and MLR regression models were established from those factors. In the modified MLR models, the determinants of N, P, and K were 0.891, 0.802, and 0.944, respectively, which improved the performance of the models by 3.7%, 18.5%, and 1.3%, respectively, compared with the CARS-PCA-PLS models, which were based on the spectral reflectance data. The results showed that application of VIS-NIR spectra combined with interaction effects between the nutrients could effectively predict the N, P, and K contents in the early and middle growth stages of sugarcane.
机译:研究了在叶谱反射率的幼苗,分蘖和伸长阶段在幼苗,分蘖和伸长阶段预测甘蔗叶中N,P和K含量的方法。共117个有效的叶样品用于通过室内Vis-Nir分光光度计获得叶谱反射率。使用Cars-PCA处理的光谱数据作为独立变量,建立了N,P和K内容的六倍交叉验证的PLS模型。用于N,P和K预测的CARS-PCA-PLS模型的R-2值分别为0.859,0.677和0.932。进行预测的N,P和K含量的相关性分析,以探讨n,p和k之间的相互作用效应。为了模拟三种营养素中的相互作用效应,包括19个因素,包括可能的线性,二次和立方体从那些因子建立了n,p和k和k和k和多因素立方体多项式PLS和MLR回归模型之间的关系。在改性的MLR模型中,N,P和K的决定簇分别为0.891,0.802和0.944,与汽车相比,分别将模型的性能提高了3.7%,18.5%和1.3% PCA-PLS型号,基于光谱反射数据。结果表明,在甘蔗的早期和中间生长阶段,可有效地预测营养素与营养素之间的相互作用效应的施用。

著录项

  • 来源
    《Transactions of the ASABE》 |2019年第6期|共7页
  • 作者单位

    Guangxi Univ Guangxi Key Lab Sugarcane Biol Sch Elect Engn Nanning Peoples R China;

    Guangxi Univ Guangxi Key Lab Sugarcane Biol Sch Elect Engn Nanning Peoples R China;

    Guangxi Univ Guangxi Key Lab Sugarcane Biol Sch Elect Engn Nanning Peoples R China;

    Univ Minnesota Dept Bioprod &

    Biosyst Engn St Paul MN 55108 USA;

    Guangxi Univ Sch Elect Engn Nanning Peoples R China;

    China Agr Univ Minist Educ Key Lab Modern Precis Agr Syst Integrat Res Beijing Peoples R China;

    Guangxi Univ Sch Elect Engn Nanning Peoples R China;

  • 收录信息
  • 原文格式 PDF
  • 正文语种 eng
  • 中图分类 农业科学;
  • 关键词

    CARS-PCA; Interaction effect; NPK; Sugarcane; VIS-NIR spectroscopy;

    机译:汽车PCA;相互作用;NPK;甘蔗;VIR-NIR光谱;

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