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Sadenova, M.A., Beisekenov, N.A., Rakhymberdina, M., Varbanov, P.S., Klemeš, J.J.
Original Title
Mathematical Modelling in Crop Production to Predict Crop Yields
Type
journal article in Scopus
Language
English
Original Abstract
In this study, for remote recognition of crops of agroecosystems in Kazakhstan by methods of comparative and historical analogy with the active use of mathematical modelling, the yield indicator of agricultural crops was determined, their dynamic characteristics were studied to predict productivity. The parameters of the dynamicstatistical biomass model were determined separately for each region of the Republic of Kazakhstan based on training data for 21 y (2000 - 2021). The correlation coefficient between the calculated yield values and the official statistics is 0.84. According to the results of cross-validation, the correlation coefficient between the actual and predicted yield of spring wheat was ∼0.70, which indicates a sufficient resistance of the model to the variability of meteorological conditions for the formation of the crop. © 2021, AIDIC Servizi S.r.l.
Keywords
mathematical; modelling; crop; production; predict; crop yields
Authors
Released
15. 11. 2021
Publisher
Italian Association of Chemical Engineering - AIDIC
ISBN
2283-9216
Periodical
Chemical Engineering Transactions
Number
88
State
Republic of Italy
Pages from
1225
Pages to
1230
Pages count
6
URL
http://www.cetjournal.it/cet/21/88/204.pdf
BibTex
@article{BUT175971, author="Petar Sabev {Varbanov} and Jiří {Klemeš}", title="Mathematical Modelling in Crop Production to Predict Crop Yields", journal="Chemical Engineering Transactions", year="2021", number="88", pages="1225--1230", doi="10.3303/CET2188204", issn="2283-9216", url="http://www.cetjournal.it/cet/21/88/204.pdf" }