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Pregled bibliografske jedinice broj: 919759

Diffuse reflectance spectroscopy for field- scale assessment of winter wheat yield


Šestak, Ivana; Mesić, Milan; Zgorelec, Željka, Perčin, Aleksandra
Diffuse reflectance spectroscopy for field- scale assessment of winter wheat yield // Geophysical Research Abstracts Vol. 19, EGU2017-19368, 2017
Beč, Austrija: European Geosciences Union (EGU), 2017. EGU2017-19368, 1 (poster, međunarodna recenzija, sažetak, znanstveni)


CROSBI ID: 919759 Za ispravke kontaktirajte CROSBI podršku putem web obrasca

Naslov
Diffuse reflectance spectroscopy for field- scale assessment of winter wheat yield

Autori
Šestak, Ivana ; Mesić, Milan ; Zgorelec, Željka, Perčin, Aleksandra

Vrsta, podvrsta i kategorija rada
Sažeci sa skupova, sažetak, znanstveni

Izvornik
Geophysical Research Abstracts Vol. 19, EGU2017-19368, 2017 / - : European Geosciences Union (EGU), 2017

Skup
European Geosciences Union General Assembly

Mjesto i datum
Beč, Austrija, 23.04.2017. - 28.04.2017

Vrsta sudjelovanja
Poster

Vrsta recenzije
Međunarodna recenzija

Ključne riječi
leaf reflectance ; grain yield ; nitrogen fertilization ; principal component ; vegetation indices ; linear modelling ; neural networks ; ordinary kriging

Sažetak
The objective was to evaluate the ability of visible and near infrared spectroscopy to predict winter wheat grain yield, and to compare different prediction models according to the spatial variability. Research was conducted on experimental field in Western Pannonian subregion of Croatia. Reflectance measurements (350-1050 nm) were acquired from winter wheat flag leaves grown under nine mineral N fertilization treatments ranging from 0 to 300 kg N ha-1, during the stem extension stage of the year 2010. Linear statistical models (MLR - multiple linear regression, PLSR - partial least squares regression) and non- linear pattern analysis (ANN - artificial neural networks) were generated to estimate grain yield, based on the first derivative of reflectance in form of principal components (PC) and vegetation indices (VI). ANN models were the most efficient in capturing the complex link between yield and leaf reflectance spectra (train and test dataset with r = 0.95 and r = 0.92, RMSEC = 2.57 dt ha-1 and RMSEP = 4.41 dt ha-1, respectively) compared to corresponding VIs, MLR and PLSR models. Performance of the 8 factor PLSR model indicated the highest consistency due to the small difference between RMSEC (4.10 dt ha-1) and RMSEP (4.61 dt ha-1) besides high prediction ability (validation R2 = 0.84). Correlations between measured and predicted data were found to be significantly very strong and complete with the highest correlation coefficient obtained for ANN model (r = 0.94, p < 0.05). This relationship was supported by very similar standard deviations of measured grain yield and ANN predicted data. T-test revealed there were no significant differences between the models. The spatial variability of the winter wheat yield was mapped using ordinary kriging for both measured and predicted values to explore within-field and intra-treatment differences in crop productivity needed for assessing good calibration model. Results indicated similarities between the maps generated from the equations and the one generated from field measurements, which is in agreement with high portion of yield variability explained by spectral data (p < 0.05). Disagreements mostly occurred on treatments with 250 kg ha-1 of nitrogen and added dolomite and phospho-gypsum due to the high variability in the yield data within the same treatments. Uncertainty of winter wheat yield spatial prediction was assessed by comparing the cross-validation statistics. All models achieved standardized mean nearest to 0 and the standardized RMSEP nearest to 1. Yield was in small portion over- estimated by NDVI and ANN model. Small under- estimation was found for RVI prediction. PLSR and ANN predictions were closest to measured winter wheat yield considering spatially comparable estimates and cross-validation statistics. Key spectral features and algorithms defined in this study should help to support site-specific and real-time yield forecasting in winter wheat production using hyperspectral remote sensing.

Izvorni jezik
Engleski



POVEZANOST RADA


Projekti:
178-1780692-0695 - Gnojidba dušikom prihvatljiva za okoliš (Mesić, Milan, MZOS ) ( CroRIS)

Ustanove:
Agronomski fakultet, Zagreb

Profili:

Avatar Url Ivana Šestak (autor)

Avatar Url Željka Zgorelec (autor)

Avatar Url Milan Mesić (autor)


Citiraj ovu publikaciju:

Šestak, Ivana; Mesić, Milan; Zgorelec, Željka, Perčin, Aleksandra
Diffuse reflectance spectroscopy for field- scale assessment of winter wheat yield // Geophysical Research Abstracts Vol. 19, EGU2017-19368, 2017
Beč, Austrija: European Geosciences Union (EGU), 2017. EGU2017-19368, 1 (poster, međunarodna recenzija, sažetak, znanstveni)
Šestak, I., Mesić, M. & Zgorelec, Željka, Perčin, Aleksandra (2017) Diffuse reflectance spectroscopy for field- scale assessment of winter wheat yield. U: Geophysical Research Abstracts Vol. 19, EGU2017-19368, 2017.
@article{article, author = {\v{S}estak, Ivana and Mesi\'{c}, Milan}, year = {2017}, pages = {1}, chapter = {EGU2017-19368}, keywords = {leaf reflectance, grain yield, nitrogen fertilization, principal component, vegetation indices, linear modelling, neural networks, ordinary kriging}, title = {Diffuse reflectance spectroscopy for field- scale assessment of winter wheat yield}, keyword = {leaf reflectance, grain yield, nitrogen fertilization, principal component, vegetation indices, linear modelling, neural networks, ordinary kriging}, publisher = {European Geosciences Union (EGU)}, publisherplace = {Be\v{c}, Austrija}, chapternumber = {EGU2017-19368} }
@article{article, author = {\v{S}estak, Ivana and Mesi\'{c}, Milan}, year = {2017}, pages = {1}, chapter = {EGU2017-19368}, keywords = {leaf reflectance, grain yield, nitrogen fertilization, principal component, vegetation indices, linear modelling, neural networks, ordinary kriging}, title = {Diffuse reflectance spectroscopy for field- scale assessment of winter wheat yield}, keyword = {leaf reflectance, grain yield, nitrogen fertilization, principal component, vegetation indices, linear modelling, neural networks, ordinary kriging}, publisher = {European Geosciences Union (EGU)}, publisherplace = {Be\v{c}, Austrija}, chapternumber = {EGU2017-19368} }




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