Machine Learning Algorithms to Predict Forage Nutritive Value of In Situ Perennial Ryegrass Plants Using Hyperspectral Canopy Reflectance Data

被引:17
|
作者
Smith, Chaya [1 ,2 ]
Karunaratne, Senani [3 ]
Badenhorst, Pieter [2 ]
Cogan, Noel [1 ,4 ]
Spangenberg, German [1 ,4 ]
Smith, Kevin [2 ,5 ]
机构
[1] La Trobe Univ, Sch Appl Syst Biol, Bundoora, Vic 3086, Australia
[2] Hamilton Ctr, Agr Victoria, Hamilton, Vic 3300, Australia
[3] Ellinbank Ctr, Agr Victoria, 1301 Hazeldean Rd, Ellinbank, Vic 3821, Australia
[4] Ctr AgriBiosci, Agr Victoria, AgriBio, Bundoora, Vic 3083, Australia
[5] Univ Melbourne, Fac Vet & Agr Sci, Melbourne, Vic 3010, Australia
关键词
data mining; forage; high through-put phenotyping; near infrared spectroscopy; non-destructive sampling; predictive models; lolium perenne; NEAR-INFRARED SPECTROSCOPY; LEAST-SQUARES; QUALITY; PASTURE; BIOMASS; SYSTEMS; TRAITS; MODELS; LEGUME; SILAGE;
D O I
10.3390/rs12060928
中图分类号
X [环境科学、安全科学];
学科分类号
08 ; 0830 ;
摘要
Nutritive value (NV) of forage is too time consuming and expensive to measure routinely in targeted breeding programs. Non-destructive spectroscopy has the potential to quickly and cheaply measure NV but requires an intermediate modelling step to interpret the spectral data. A novel machine learning technique for forage analysis, Cubist, was used to analyse canopy spectra to predict seven NV parameters, including dry matter (DM), acid detergent fibre (ADF), ash, neutral detergent fibre (NDF), in vivo dry matter digestibility (IVDMD), water soluble carbohydrates (WSC), and crude protein (CP). Perennial ryegrass (Lolium perenne) was used as the test crop. Independent validation of the developed models revealed prediction capabilities with R2 values and Lin's concordance values reported between 0.49 and 0.82, and 0.68 and 0.89, respectively. Informative wavelengths for the creation of predictive models were identified for the seven NV parameters. These wavelengths included regions of the electromagnetic spectrum that are usually excluded due to high background variation, however, they contain important information and utilising them to obtain meaningful signals within the background variation is an advantage for accurate models. Non-destructive field spectroscopy along with the predictive models was deployed infield to measure NV of individual ryegrass plants. A significant reduction in labour was observed. The associated increase in speed and reduction of cost makes targeting NV in commercial breeding programs now feasible.
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页数:15
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