Weekly milk prediction on dairy goats using neural networks

被引:20
|
作者
Fernandez, C. [1 ]
Soria, E.
Sanchez-Seiquer, P.
Gomez-Chova, L.
Magdalena, R.
Martin-Guerrero, J. D.
Navarro, M. J.
Serrano, A. J.
机构
[1] Univ Cardenal Herrera CEU, Fac Ciencias Expt & Salud, Dep Prod Anim & Ciencia Alimentos, Valencia 46113, Spain
[2] Univ Valencia, ETSE, Dept Ingn Elect, E-46100 Valencia, Spain
[3] Univ Miguel Hernandez, ETSI Agron, Dep Tecnol Agroalimentaria, Alicante 03312, Spain
来源
NEURAL COMPUTING & APPLICATIONS | 2007年 / 16卷 / 4-5期
关键词
neural network; dairy goat; milk yield prediction;
D O I
10.1007/s00521-006-0061-y
中图分类号
TP18 [人工智能理论];
学科分类号
081104 ; 0812 ; 0835 ; 1405 ;
摘要
Artificial neural networks (NN) have been widely used for both prediction and classification tasks in many fields of knowledge;, however, few studies are available on dairy science. In this work, we use NN models to predict next week's goat milk based on the current and previous milk production. A total of 35 Murciano-Granadina dairy goats were selected from a commercial farm according to number of lactation, litter size and body weight. Input variables taken into account were diet, milk production, stage of lactation and days between partum and first control. From the 35 goats, 22 goats were used to build the neural model and 13 goats were used to validate. the model. It is important to emphasize that these 13 goats were not used to build the model in order to demonstrate the generalization capability of the network. Afterwards, the neural models that provided better prediction results were analysed in order to determine the relative importance of the input variables of the model. We found that the most important inputs are present and previous milk production, followed by days between parturition, and first milk control, and type of diet. Besides, we benchmark NN to other widely used prediction models, such as autoregressive system modelling or naive prediction. The results obtained with the neural models are better than with the rest of models. The best neural model in terms of accuracy provided a root mean square error equal to 0.57 kg/day and a low bias mean error equal to - 0.05 kg/day. Dairy goat farmers could make management decisions during current lactation from one week to the next (present time), based on present and/or previous milk production and dairy goat factors, without waiting until the end of lactation.
引用
下载
收藏
页码:373 / 381
页数:9
相关论文
共 50 条
  • [21] DAIRY GOATS, NUTRITIOUS AND TECHNOLOGICAL VALUE OF GOAT MILK
    Mekic, C.
    Trifunovic, G.
    Hristov, S.
    Novakovic, Zorica
    EKONOMIKA POLJOPRIVREDA-ECONOMICS OF AGRICULTURE, 2011, 58 : 340 - 348
  • [22] The effect of subclinical mastitis on milk yield in dairy goats
    Koop, G.
    van Werven, T.
    Schuiling, H. J.
    Nielen, M.
    JOURNAL OF DAIRY SCIENCE, 2010, 93 (12) : 5809 - 5817
  • [23] Milk Lipid Regulation in Dairy Goats: A Comprehensive Review
    Li, Bingzhi
    Li, Yu
    Tian, Wanqiang
    Abebe, Belete Kuraz
    Raza, Sayed Haidar Abbas
    Yu, Hengwei
    MOLECULAR BIOTECHNOLOGY, 2024,
  • [24] Milk composition and synthesis in dairy goats and sheep.
    Rovai, M.
    Caja, G.
    JOURNAL OF ANIMAL SCIENCE, 2016, 94 : 22 - 22
  • [25] Constraints affecting dairy goats milk production in Kenya
    Mbindyo, C. M.
    Gitao, C. G.
    Peter, S. G.
    TROPICAL ANIMAL HEALTH AND PRODUCTION, 2018, 50 (01) : 37 - 41
  • [26] MILK CELL COUNT IN MACHINE MILKED DAIRY GOATS
    GROOTENHUIS, G
    VETERINARY QUARTERLY, 1980, 2 (02) : 121 - 123
  • [27] COMPONENTS OF VARIANCE FOR MILK AND FAT YIELDS IN DAIRY GOATS
    ILOEJE, MU
    VANVLECK, LD
    WIGGANS, GR
    JOURNAL OF DAIRY SCIENCE, 1981, 64 (11) : 2290 - 2293
  • [28] Constraints affecting dairy goats milk production in Kenya
    C. M. Mbindyo
    C. G. Gitao
    S. G. Peter
    Tropical Animal Health and Production, 2018, 50 : 37 - 41
  • [29] Orf Virus Detection in the Saliva and Milk of Dairy Goats
    Ma, Wentao
    Pang, Ming
    Lei, Xinyu
    Wang, Zishuo
    Feng, Hao
    Li, Shaofei
    Chen, Dekun
    FRONTIERS IN MICROBIOLOGY, 2022, 13
  • [30] THE PREDICTION OF HARDENABILITY USING NEURAL NETWORKS
    Knap, M.
    Falkus, J.
    Rozman, A.
    Konopka, K.
    Lamut, J.
    ARCHIVES OF METALLURGY AND MATERIALS, 2014, 59 (01) : 133 - 136