Nitrogen content diagnosis of apple trees canopies using hyperspectral reflectance combined with PLS variable extraction and extreme learning machine
Abstract
Keywords: partial least square, variable extraction method, extreme learning machine, hyperspectral reflectance, apple tree, canopy nitrogen content
DOI: 10.25165/j.ijabe.20211403.6157
Citation: Chen S M, Ma L H, Hu T T, Luo L H, He Q, Zhang S W. Nitrogen content diagnosis of apple trees canopies using hyperspectral reflectance combined with PLS variable extraction and extreme learning machine. Int J Agric & Biol Eng, 2021; 14(3): 181–188.
Keywords
Full Text:
PDFReferences
Statistics Bureau of China. China statistical yearbook 2018. Beijing, China Statistics Press, 2018. (in Chinese)
Wang G Y, Zhang X Z, Wang Y, Xu X F, Han Z H. Key minerals influencing apple quality in Chinese orchard identified by nutritional diagnosis of leaf and soil analysis. Journal of Integrative Agriculture, 2015; 14(5): 864–874.
Zhu X C, Gao L L, Fang X Y, Zhao G X, Wang L. Estimating canopy nitrogen contents of an apple tree using hyperspectral remote sensing. Remote Sensing Science, 2016; 4(2): 42–50.
Gao L L, Zhu X C, Li C, Cheng L Z. Evaluation of the nitrogen content during the new-shoot-growing stage in apple leaves using two-dimensional correlation spectroscopy. PLoS ONE, 2017; 12(10): e0186751. doi: 10.1371/journal.pone.0186751.
Fernandez S, Vidal D, Simon E, Sugranes L S. Radiometric characteristics of Triticum aestivum cv, Astral under water and nitrogen stress. International Journal of Remote Sensing, 1994, 15(9): 1867–1884.
Zhu Y, Li Y X, Zhou D Q, Tian Y C, Yao X, Cao W X. Quantitative relationship between leaf nitrogen concentration and canopy reflectance spectra in rice and wheat. Acta ecologica sinica, 2006; 26(10): 3463–3469.
Xue L H, Cao W X, Luo W H, Zhang X. Correlation between leaf nitrogen status and canopy spectral characteristics in wheat. Chinese Journal of Plant Ecology, 2004; 28(2): 172–177. (in Chinese)
Yu L, Hong Y S, Zhou Y, Zhu Q, Xu L, Li J Y, et al. Wavelength variable selection methods for estimation of soil organic matter content using hyperspectral technique. Transactions of the CSAE, 2016; 32(13): 95–102. (in Chinese)
Zou X H, Hao Z Q, Yi R X, Guo L B, Shen M, Li X Y, et al. Quantitative analysis of soil by laser-induced breakdown spectroscopy using genetic algorithm-partial least squares. Chinese Journal of Analytical Chemistry, 2015; 43(2): 181–186. (in Chinese)
Chen L D, Zhao Y R. Measurement of water content in biodiesel using visible and near infrared spectroscopy combined with Random-Frog algorithm. Transactions of the CSAE, 2014; 30(8): 168–173. (in Chinese)
Zou X B, Zhao J W, Povey M J W, Holmes M, Mao H P. Variables selection methods in near-infrared spectroscopy. Analytica Chimica Acta, 2010; 667(1-2): 14–32.
Zhu Y X, Yu L, Hong Y S, Zhang T, Zhu Q, Li S D, et al. Hyperspectral features and wavelength variables selection methods of soil organic matter. Scientia Agricultura Sinica, 2017; 50(22): 4325–4337. (in Chinese)
Liu F, He Y, Wang L. Comparison of calibrations for the determination of soluble solids content and pH of rice vinegars using visible and short-wave near infrared spectroscopy. Analytica Chimica Acta, 2008; 610(2): 196–204.
Zhang R R, Wen Y, Li L L, Chen L P, Xu G, Huang Y B, et al. Method for UAV spraying pattern measurement with PLS model based spectrum analysis. Int J Agric & Biol Eng, 2020; 13(3): 22–28.
Gao J F, Zhang H L, Kong W W, He Y. Nondestructive discrimination of waxed apples based on hyperspectral imaging technology. Spectroscopy and spectral analysis, 2013; 33(7): 1922–1926. (in Chinese)
Zhang H, Wang S, Li D X, Zhang Y Y, Hu J D, Wang L. Edible gelatin diagnosis using laser-induced breakdown spectroscopy and partial least square assisted support vector machine. Sensors, 2019; 19: 4225. doi: 10.3390/s19194225.
Ye X J, Abe S, Zhang S H. Estimation and mapping of nitrogen content in apple trees at leaf and canopy levels using hyperspectral imaging. Precision Agric, 2020; 21: 198–225.
Cheng P Y, Fan W L, Xu Y. Quality grade discrimination of Chinese
strong aroma type liquors using mass spectrometry and multivariate analysis. Food Research International, 2013; 54(2): 1753–1760.
Zhang H L. Soil nutrition content and type measurement based on NIR spectrum and hyper spectra image technology and design portable instrument. Doctoral dissertation. Hangzhou: Zhejiang University, 2015; 145p. (in Chinese)
Wang Y, Gao Y, Yu X, Wang Y Y, Deng S, Gao J M. Rapid determination of Lycium barbarum polysaccharide with effective wavelength selection using near-infrared diffuse reflectance spectroscopy. Food Analytical Methods, 2016; 9: 131–138.
Zhang C, Liu J G, Shang J L, Cai H J. Capability of crop water content for revealing variability of winter wheat grain yield and soil moisture under limited irrigation. Science of the Total Environment, 2018; 631–632: 677–687.
Zhu W J, Li J Y, Li L, Wang A C, Wei X H, Mao H P. Nondestructive diagnostics of soluble sugar, total nitrogen and their ratio of tomato leaves in greenhouse by polarized spectra–hyperspectral data fusion. Int J Agric & Biol Eng, 2020; 13(2): 189–197.
Li X X, Zhou J, Tang H, Sun L Q, Cao X M, Zhang X S. Rapid determination of total nitrogen in aquaculture water based on ultraviolet spectroscopy. Spectroscopy and spectral analysis, 2020; 40(1): 195–201. (in Chinese)
Ollinger S V. Sources of variability in canopy reflectance and the convergent properties of plants. New Phytologist, 2011; 189: 375–394.
Shi Z, Liang Z Z, Yang Y Y, Guo Y. Status and prospect of agricultural remote sensing. Transactions of CSAM, 2015; 46(2): 247–260. (in Chinese)
Huang G B, Zhu Q Y, Siew C K. Extreme learning machine: Theory and applications. Neurocomputing, 2006; 70: 489–501.
Ouyang Q, Chen Q S, Zhao J W, Lin H. Determination of amino acid nitrogen in soy sauce using near infrared spectroscopy combined with characteristic variables selection and extreme learning machine. Food Bioprocess Technol, 2013; 6: 2486–2493.
Huang G B, Zhou H M, Ding X J, Zhang R. Extreme learning machine for regression and multiclass classification. IEEE Transactions on Systems Man & Cybernetics Part B, 2012; 42(2): 513–529.
Czarnecki W M. Weighted tanimoto extreme learning machine with case study in drug discovery. IEEE Computational Intelligence Magazine, 2015; 10(3): 19–29.
Kamruzzaman M, Elmasry G, Sun D W, Allen P. Prediction of some quality attributes of lamb meat using near-infrared hyperspectral imaging and multivariate analysis. Analytica Chimica Acta, 2012; 714: 57–67.
Cao D S, Liang Y Z, Xu Q S, Li H D, Chen X. A new strategy of outlier detection for QSAR/QSPR. Journal of Computational Chemistry, 2010; 31(3): 592–602.
Galvão R K H, Araujo M C U, José G E, Pontes M J C, Silva E C, Saldanha T C B. A method for calibration and validation subset partitioning. Talanta, 2005; 67(4): 736–740.
Shan P, Zhao Y H, Wang Q Y, Sha X P, Lyu X Y, Peng S L, et al. Stacked ensemble extreme learning machine coupled with Partial Least Squares-based weighting strategy for nonlinear multivariate calibration. Spectrochimica Acta Part A: Molecular and Biomolecular Spectroscopy, 2019; 215: 97–111.
Ramadan Z, Hopke P K, Johnson M J, Scow K M. Application of PLS and back-propagation neural networks for the estimation of soil properties. Chemometrics & Intelligent Laboratory Systems, 2005; 75(1): 23–30.
Chong I G, Jun C H. Performance of some variable selection methods when multicollinearity is present. Chemometrics & Intelligent Laboratory Systems, 2005; 78(1-2): 103–112.
Wen P F. Monitoring the vertical distribution of nitrogen status at leaf and canopy scales with remote sensing data in maize. Doctoral dissertation. Yangling: Northwest A& F University, 2019; 124p. (in Chinese)
Guo P T, Su Y, Cha Z Z, Lin Q H, Luo W, Lin Z M. Prediction of leaf phosphorus contents for rubber seedlings based on hyperspectral sensitive bands and back propagation artificial neural network. Transactions of the CSAE, 2016; 32(Supp. 1): 177–183. (in Chinese)
Copyright (c) 2021 International Journal of Agricultural and Biological Engineering
This work is licensed under a Creative Commons Attribution 4.0 International License.