Integrating hyperspectral radiative transfer modeling and Machine learning for enhanced nitrogen sensing in almond leaves

被引:0
作者
Chakraborty, Momtanu [1 ]
Pourreza, Alireza [1 ]
Peanusaha, Sirapoom [1 ]
Farajpoor, Parastoo [1 ]
Khalsa, Sat Darshan S. [2 ]
Brown, Patrick H. [2 ]
机构
[1] Univ Calif Davis, Dept Biol & Agr Syst Engn, Digital Agr Lab, Davis, CA 95616 USA
[2] Univ Calif Davis, Coll Agr & Environm Sci, Dept Plant Sci, Davis, CA USA
关键词
Nitrogen; Radiative Transfer Model; PROSPECT; Almond; SWIR; Gaussian process regression; Hybrid Spectral Modeling; OPTICAL-PROPERTIES; VEGETATION INDEX; LEAF NITROGEN; REFLECTANCE; PREDICTION; PROSPECT;
D O I
10.1016/j.compag.2025.110195
中图分类号
S [农业科学];
学科分类号
09 ;
摘要
Precisely quantifying crop nitrogen content is critical for adopting sustainable nutrient management practices. This study offers a comprehensive analysis of using hyperspectral data to accurately measure area-based nitrogen content (N) in almond trees at the leaf level. We collected spectral data ranging from 400 to 2500 nm of multiple leaves from 190 samples across two orchards spanning two years. Our methodology involves building a hybrid model that merges a physically based model (PROSPECT-PRO) and a data-driven model (multi-output Gaussian process regression), demonstrating exceptional performance in area-based nitrogen prediction, achieving R2 values of 0.54 and an RMSE of 0.03 mg/cm2 for area-based nitrogen sensing. The hybrid method incorporates synthetic spectra produced through principal component analysis (PCA) and labeled with biochemical traits retrieved by PROSPECT-PRO for training and validation, while the real data was kept unseen for testing. We compared the performance of physically based, hybrid, and data-driven models using R2 and NRMSE as metrics. The Partial Least Squares Regression (PLSR) model showed a strong relationship between leaf N and spectral reflectance (R2 = 0.75); however, PLSR is prone to bias from the training set and may perform poorly on unseen data. The findings also highlight the importance of the Short-Wave Infrared region in nitrogen determination, particularly the bands from 2100 to 2200 nm. Additionally, protein content was found to be a more reliable proxy for nitrogen than chlorophyll. By comparing the retrieved leaf traits with ground truth data, we realized that PROSPECT PRO consistently underestimates almond leaf traits such equivalent water thickness (EWT), carbon-based compounds (CBC), and overestimates Nitrogen. Therefore, adjustment factors were determined for these traits that are estimated with PROSPECT-PRO.
引用
收藏
页数:14
相关论文
共 50 条
  • [31] Monitoring the photosynthetic performance of grape leaves using a hyperspectral-based machine learning model
    Yang, Zhenfeng
    Tian, Juncang
    Wang, Zhi
    Feng, Kepeng
    EUROPEAN JOURNAL OF AGRONOMY, 2022, 140
  • [32] Monitoring soil nutrients using machine learning based on UAV hyperspectral remote sensing
    Liu, Kai
    Wang, Yufeng
    Peng, Zhiqing
    Xu, Xinxin
    Liu, Jingjing
    Song, Yuehui
    Di, Huige
    Hua, Dengxin
    INTERNATIONAL JOURNAL OF REMOTE SENSING, 2024, 45 (14) : 4897 - 4921
  • [33] Nitrogen Balance Index Prediction of Winter Wheat by Canopy Hyperspectral Transformation and Machine Learning
    Fan, Kai
    Li, Fenling
    Chen, Xiaokai
    Li, Zhenfa
    Mulla, David J.
    REMOTE SENSING, 2022, 14 (14)
  • [34] Corn Nitrogen Nutrition Index Prediction Improved by Integrating Genetic, Environmental, and Management Factors with Active Canopy Sensing Using Machine Learning
    Li, Dan
    Miao, Yuxin
    Ransom, Curtis J.
    Bean, Gregory Mac
    Kitchen, Newell R.
    Fernandez, Fabian G.
    Sawyer, John E.
    Camberato, James J.
    Carter, Paul R.
    Ferguson, Richard B.
    Franzen, David W.
    Laboski, Carrie A. M.
    Nafziger, Emerson D.
    Shanahan, John F.
    REMOTE SENSING, 2022, 14 (02)
  • [35] Research of Method for Inverting Nitrogen Content in Canopy Leaves of Japonica Rice in Northeastern China Based on Hyperspectral Remote Sensing of Unmanned Aerial Vehicle
    Feng Shuai
    Xu Tong-yu
    Yu Feng-hua
    Chen Chun-ling
    Yang Xue
    Wang Nian-yi
    SPECTROSCOPY AND SPECTRAL ANALYSIS, 2019, 39 (10) : 3281 - 3287
  • [36] Evaluating Machine Learning as an Alternative to CFD for Heat Transfer Modeling
    Godasiaei, Seyed Hamed
    Kamali, Hossein Ali
    MICROGRAVITY SCIENCE AND TECHNOLOGY, 2025, 37 (01)
  • [37] Surrogate Models in Rock and Soil Mechanics: Integrating Numerical Modeling and Machine Learning
    Furtney, J. K.
    Thielsen, C.
    Fu, W.
    Le Goc, R.
    ROCK MECHANICS AND ROCK ENGINEERING, 2022, 55 (05) : 2845 - 2859
  • [38] Surrogate Models in Rock and Soil Mechanics: Integrating Numerical Modeling and Machine Learning
    J. K. Furtney
    C. Thielsen
    W. Fu
    R. Le Goc
    Rock Mechanics and Rock Engineering, 2022, 55 : 2845 - 2859
  • [39] Modeling soil respiration in summer maize cropland based on hyperspectral imagery and machine learning
    Zeng, Fanchao
    Sun, Jinwei
    Zhang, Huihui
    Yang, Lizhen
    Zhao, Xiaoxue
    Zhao, Jing
    Bo, Xiaodong
    Cao, Yuxin
    Yao, Fuqi
    Yuan, Fenghui
    FRONTIERS IN ENVIRONMENTAL SCIENCE, 2025, 12
  • [40] Integrating machine learning and Bayesian nonparametrics for flexible modeling of point pattern data
    Heaton, Matthew J.
    Dahl, Benjamin K.
    Dayley, Caleb
    Warr, Richard L.
    White, Philip
    COMPUTATIONAL STATISTICS & DATA ANALYSIS, 2024, 191