Hyperspectral reflectance and machine learning to monitor legume biomass and nitrogen accumulation

•Hyperspectral models to predict N concentration, biomass, and N accumulation.•Comparison/testing of four methods of machine learning for hyperspectral models.•Exploration of a future hyperspectral platform by convolving wavelengths to fit bands of a satellite.•Inclusion of legume type did not signi...

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Veröffentlicht in:Computers and electronics in agriculture 2023-08, Vol.211, p.107991-107991, Article 107991
Hauptverfasser: Flynn, K. Colton, Baath, Gurjinder, Lee, Trey O., Gowda, Prasanna, Northup, Brian
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container_title Computers and electronics in agriculture
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creator Flynn, K. Colton
Baath, Gurjinder
Lee, Trey O.
Gowda, Prasanna
Northup, Brian
description •Hyperspectral models to predict N concentration, biomass, and N accumulation.•Comparison/testing of four methods of machine learning for hyperspectral models.•Exploration of a future hyperspectral platform by convolving wavelengths to fit bands of a satellite.•Inclusion of legume type did not significantly aid model development. Hyperspectral remote sensing provides opportunity for a nondestructive tool for estimating biochemical or biophysical characteristics of agricultural crops. Importantly, among rotational legume production, timely identification of the extent of nitrogen accumulation (N accum) by the legumes is vital for optimization of N fertilizer application and simultaneous reduction of environmental impacts (i.e. excess runoff). We developed in-situ hyperspectral data-based models to predict nitrogen concentration (N conc), biomass, and N accum for three legumes (soybean, tepary bean, mothbean) through application and testing of four methods of machine learning (k-Nearest Neighbors [KNN], partial least squares regression [PLS], support vector machine [SVM], and random forest [RF]). An exploration of potential applications of a future hyperspectral satellite (i.e. CHIME) was also conducted by convolving hyperspectral wavelengths to fit hyperspectral bands of the satellite to conduct a similar analysis to that of the in-situ hyperspectral data. Other analytics such as legume type incorporation and direct versus derived N accum from hyperspectral data were explored. Results suggest hyperspectral remote sensing has great promise across both the in-situ and convolved satellite (i.e. CHIME) bands. Moreover, models based on SVM and RF machine learning algorithms had the greatest outcomes across the tested algorithms, with SVM being less computationally expensive than RF. Moreover, legume type was not significantly important to model development, and N accum is best modeled directly rather than being derived independently from the modeling of N concentrations and biomass. These findings enable the modeling of biophysical and biochemical characteristics of legumes using combinations of hyperspectral remote sensing and machine learning methodologies.
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Colton</creatorcontrib><creatorcontrib>Baath, Gurjinder</creatorcontrib><creatorcontrib>Lee, Trey O.</creatorcontrib><creatorcontrib>Gowda, Prasanna</creatorcontrib><creatorcontrib>Northup, Brian</creatorcontrib><collection>ScienceDirect Open Access Titles</collection><collection>Elsevier:ScienceDirect:Open Access</collection><collection>CrossRef</collection><collection>AGRICOLA</collection><collection>AGRICOLA - Academic</collection><jtitle>Computers and electronics in agriculture</jtitle></facets><delivery><delcategory>Remote Search Resource</delcategory><fulltext>fulltext</fulltext></delivery><addata><au>Flynn, K. Colton</au><au>Baath, Gurjinder</au><au>Lee, Trey O.</au><au>Gowda, Prasanna</au><au>Northup, Brian</au><format>journal</format><genre>article</genre><ristype>JOUR</ristype><atitle>Hyperspectral reflectance and machine learning to monitor legume biomass and nitrogen accumulation</atitle><jtitle>Computers and electronics in agriculture</jtitle><date>2023-08</date><risdate>2023</risdate><volume>211</volume><spage>107991</spage><epage>107991</epage><pages>107991-107991</pages><artnum>107991</artnum><issn>0168-1699</issn><eissn>1872-7107</eissn><abstract>•Hyperspectral models to predict N concentration, biomass, and N accumulation.•Comparison/testing of four methods of machine learning for hyperspectral models.•Exploration of a future hyperspectral platform by convolving wavelengths to fit bands of a satellite.•Inclusion of legume type did not significantly aid model development. 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An exploration of potential applications of a future hyperspectral satellite (i.e. CHIME) was also conducted by convolving hyperspectral wavelengths to fit hyperspectral bands of the satellite to conduct a similar analysis to that of the in-situ hyperspectral data. Other analytics such as legume type incorporation and direct versus derived N accum from hyperspectral data were explored. Results suggest hyperspectral remote sensing has great promise across both the in-situ and convolved satellite (i.e. CHIME) bands. Moreover, models based on SVM and RF machine learning algorithms had the greatest outcomes across the tested algorithms, with SVM being less computationally expensive than RF. Moreover, legume type was not significantly important to model development, and N accum is best modeled directly rather than being derived independently from the modeling of N concentrations and biomass. 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subjects agriculture
biomass
electronics
fertilizer application
Imaging spectroscopy
Mothbean
nitrogen
nitrogen content
nitrogen fertilizers
Phaseolus acutifolius var. acutifolius
PLSR
reflectance
runoff
satellites
Soybean
soybeans
SVM
Tepary bean
title Hyperspectral reflectance and machine learning to monitor legume biomass and nitrogen accumulation
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