Possibility to use crop models for indirect prediction of glycemic index in rice

Main Article Content

Phopaijit, S.
Somchit, P.
Phakamas, N.

Abstract

A process for constructing the prediction equations was developed by using simulated biomass and simulated grain yield to be estimating the glycemic index (GI) of two rice varieties, and reference GI was used as a basis for calculation of predicted GI. The CSM-CERES-Rice model was able to construct the best prediction equations, and the equation developed by using simulated biomass and simulated yield were y = 0.0003x + 59.099 and y = 0.0008x + 59.213, respectively. The equations were also used for prediction of GI values of two rice varieties applied with different methods of nitrogen application. The difference of the equations was 0.0% for both simulated biomass and simulated grain yield. The process for indirect prediction of GI is used available simulated data of biomass and grain yield to improve prediction accuracy.

Article Details

How to Cite
Phopaijit, S., Somchit, P., & Phakamas, N. (2024). Possibility to use crop models for indirect prediction of glycemic index in rice. International Journal of Agricultural Technology, 20(1), 299–314. retrieved from https://li04.tci-thaijo.org/index.php/IJAT/article/view/12251
Section
Original Study

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