Bayesian modelling of phosphorus content in wheat grain using hyperspectral reflectance data

Author:

Pacheco-Gil Rosa Angela,Velasco-Cruz Ciro,Pérez-Rodríguez Paulino,Burgueño Juan,Pérez-Elizalde Sergio,Rodrigues Francelino,Ortiz-Monasterio Ivan,del Valle-Paniagua David Hebert,Toledo Fernando

Abstract

AbstractBackgroundAs a result of the technological progress, the use of sensors for crop survey has substantially increased, generating valuable information for modelling agricultural data. Plant spectroscopy jointly with statistical modeling can potentially help to assess certain chemical components of interest present in plants, which may be laborious and expensive to obtain by direct measurements. In this research, the phosphorus content in wheat grain is modeled using reflectance information measured by a hyperspectral sensor at different wavelengths. A Bayesian procedure for selecting variables was used to identify the set of the most important spectral bands. Additionally, three different models were evaluated: the first model assumes that the observations are independent, the other two models assume that the observations are spatially correlated: one of the proposed models, assumes spatial dependence using a Conditionally Autoregressive Model (CAR), and the other through an exponential correlogram. The goodness of fit of the models was evaluated by means of the Deviance Information Criterion, and the predictive power is evaluated using cross validation.ResultsWe have found that CAR was the model that best fits and predicts the data. Additionally, the selection variable procedure in the CAR model reveals which wavelengths in the range of 500–690 nm are the most important. Comparing the vegetative indices with the CAR model, it was observed that the average correlation of the CAR model exceeded that of the vegetative indices by 23.26%, − 1.2% and 22.78% for the year 2010, 2011 and 2012 respectively; therefore, the use of the proposed methodology outperformed the vegetative indices in prediction.ConclusionsThe proposal to predict the phosphorus content in wheat grain using Bayesian approach, reflect with the results as a good alternative.

Funder

Bill and Melinda Gates Foundation

United States Agency for International Development

CIMMYT CRP maize and wheat

Publisher

Springer Science and Business Media LLC

Subject

Plant Science,Genetics,Biotechnology

Reference20 articles.

1. Acevedo, E., Silva, P., and Silva, H. (2002). Bread Wheat: Improvement and Production, Wheat growth and physiology. FAO Plant Production and Protection Series. Food and Agriculture Organization of the United Nations.

2. Banerjee S, Carlin PB, Gelfand AE. Hierarchical Modeling and Analysis for Spatial Data. Boca Raton: CRC Press Taylor and Francis Group; 2015.

3. Barbieri M, Berger O. Optimal predictive model selection. Ann Stat. 2004;32:870–97.

4. Birth GS, McVey GR. Measuring the color of growing turf with a reflectance spectrophotometer. Agron J. 1968;60:640–3.

5. Blackburn GA. Quantifying chlorophylls and caroteniods at leaf and canopy scales: an evaluation of some hyperspectral approaches. Remote Sens Environ. 1998;66:273–85.

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