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Mathematical models to adjust the parameters of in vitro cumulative gas production of diets containing preserved Gliricidia

Authors :
Antonio Leandro Chaves Gurgel
Jucileia Aparecida da Silva Morais
Juliana Caroline Santos Santana
Gelson dos Santos Difante
João Virgínio Emerenciano Neto
Luís Carlos Vinhas Ítavo
Camila Celeste Brandão Ferreira Ítavo
Vinícius da Silva Oliveira
Maria Juciara Silva Teles Rodrigues
Source :
Ciência Rural, Vol 51, Iss 11 (2021)
Publication Year :
2021
Publisher :
Universidade Federal de Santa Maria, 2021.

Abstract

ABSTRACT: This study examined the use of the Gompertz, Groot, monomolecular, Richards and two-compartment-logistic mathematical models to investigate the kinetics of in vitro gas production of diets composed of combinations of Gliricidia hay or silage. In addition, the effects of Gliricidia hay or silage inclusion on the in vitro cumulative gas production of these diets were evaluated. Rumen fermentation kinetics were analyzed by the in vitro cumulative gas production methodology. The model parameters were estimated using the Gauss Newton method, with the exception of the Richards model, which was used by Marquardt’s algorithm. Model fit was assessed using the determination coefficient, F test for parameters identity, concordance correlation coefficient, root mean square error of prediction, and decomposition of mean square error of prediction into mean error, systematic bias and random error. The models were compared for accuracy (pairwise mean square error of prediction) and precision (delta Akaike’s information criterion). All model evaluation and comparison statistics were calculated using Model Evaluation System software version 3.2.2. The Groot and Richards models did not differ from each other (P>0.05) and were the most precise and accurate (P

Details

Language :
English, Portuguese
ISSN :
16784596 and 01038478
Volume :
51
Issue :
11
Database :
Directory of Open Access Journals
Journal :
Ciência Rural
Publication Type :
Academic Journal
Accession number :
edsdoj.3b55cd65be324f9b97831c1f07682f38
Document Type :
article
Full Text :
https://doi.org/10.1590/0103-8478cr20200993