Yıl: 2023 Cilt: 47 Sayı: 3 Sayfa Aralığı: 229 - 235 Metin Dili: İngilizce DOI: 10.55730/1300-0128.4290 İndeks Tarihi: 02-08-2023

Modeling of individual egg weights of Lohmann-Brown layer hens

Öz:
This study was carried out to determine the most suitable model for egg weights of the Cubic, Gompertz, Logistics, Gamma, Richard, Piecewise Quadratic, Orscov, and Sigmoaidal models, which are widely used in estimation. Lohmann-Brown Classic laying hens raised in Ondokuz Mayıs University Research and Application farm were used as animal material. In the modeling of egg weights of 351 layer hens raised in 3-storey cages, individual egg weight data measured at weekly intervals, 32 on the 1st floor, 17 on the 2nd floor, and 27 on the 3rd floor, were taken into account, and a total of 76 hens’ individual egg weight modeling was carried out. Coefficient of determination, mean square error, Durbin-Watson, and Akaike Information Criteria values were taken into account in modeling egg weights and comparing the compatibility of models with point distribution. According to the comparison criteria, it was determined that the best estimation model was Richard. It was determined that the closest predictions to the Richard prediction model were obtai- ned from the Logistics and Gompertz models. In addition, it was concluded that Orskov, Sigmoidal, and Quadratic piecewise regression models had the worst fit.
Anahtar Kelime: Egg weight growth curve modeling

Belge Türü: Makale Makale Türü: Araştırma Makalesi Erişim Türü: Erişime Açık
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APA YAVUZ E, ABACI S, Erensoy K, şahin M (2023). Modeling of individual egg weights of Lohmann-Brown layer hens. , 229 - 235. 10.55730/1300-0128.4290
Chicago YAVUZ Esra,ABACI SAMET HASAN,Erensoy Kadir,şahin Mustafa Modeling of individual egg weights of Lohmann-Brown layer hens. (2023): 229 - 235. 10.55730/1300-0128.4290
MLA YAVUZ Esra,ABACI SAMET HASAN,Erensoy Kadir,şahin Mustafa Modeling of individual egg weights of Lohmann-Brown layer hens. , 2023, ss.229 - 235. 10.55730/1300-0128.4290
AMA YAVUZ E,ABACI S,Erensoy K,şahin M Modeling of individual egg weights of Lohmann-Brown layer hens. . 2023; 229 - 235. 10.55730/1300-0128.4290
Vancouver YAVUZ E,ABACI S,Erensoy K,şahin M Modeling of individual egg weights of Lohmann-Brown layer hens. . 2023; 229 - 235. 10.55730/1300-0128.4290
IEEE YAVUZ E,ABACI S,Erensoy K,şahin M "Modeling of individual egg weights of Lohmann-Brown layer hens." , ss.229 - 235, 2023. 10.55730/1300-0128.4290
ISNAD YAVUZ, Esra vd. "Modeling of individual egg weights of Lohmann-Brown layer hens". (2023), 229-235. https://doi.org/10.55730/1300-0128.4290
APA YAVUZ E, ABACI S, Erensoy K, şahin M (2023). Modeling of individual egg weights of Lohmann-Brown layer hens. Turkish Journal of Veterinary and Animal Sciences, 47(3), 229 - 235. 10.55730/1300-0128.4290
Chicago YAVUZ Esra,ABACI SAMET HASAN,Erensoy Kadir,şahin Mustafa Modeling of individual egg weights of Lohmann-Brown layer hens. Turkish Journal of Veterinary and Animal Sciences 47, no.3 (2023): 229 - 235. 10.55730/1300-0128.4290
MLA YAVUZ Esra,ABACI SAMET HASAN,Erensoy Kadir,şahin Mustafa Modeling of individual egg weights of Lohmann-Brown layer hens. Turkish Journal of Veterinary and Animal Sciences, vol.47, no.3, 2023, ss.229 - 235. 10.55730/1300-0128.4290
AMA YAVUZ E,ABACI S,Erensoy K,şahin M Modeling of individual egg weights of Lohmann-Brown layer hens. Turkish Journal of Veterinary and Animal Sciences. 2023; 47(3): 229 - 235. 10.55730/1300-0128.4290
Vancouver YAVUZ E,ABACI S,Erensoy K,şahin M Modeling of individual egg weights of Lohmann-Brown layer hens. Turkish Journal of Veterinary and Animal Sciences. 2023; 47(3): 229 - 235. 10.55730/1300-0128.4290
IEEE YAVUZ E,ABACI S,Erensoy K,şahin M "Modeling of individual egg weights of Lohmann-Brown layer hens." Turkish Journal of Veterinary and Animal Sciences, 47, ss.229 - 235, 2023. 10.55730/1300-0128.4290
ISNAD YAVUZ, Esra vd. "Modeling of individual egg weights of Lohmann-Brown layer hens". Turkish Journal of Veterinary and Animal Sciences 47/3 (2023), 229-235. https://doi.org/10.55730/1300-0128.4290