Artificial Neural Networks on Eggs Production Data Management

被引:3
|
作者
Barreto de Almeida, Luiz Gabriel [1 ]
de Oliveira, Eder Barbosa [1 ]
Furian, Thales Quedi [1 ]
Borges, Karen Apellanis [1 ]
da Rocha, Daniela Tonini [1 ]
Pippi Salle, Carlos Tadeu [1 ]
de Souza Moraes, Hamilton Luiz [1 ]
机构
[1] Univ Fed Rio Grande do Sul UFRGS, Fac Vet, Dept Med Anim, Ctr Diagnost & Pesquisa Patol Aviaria CDPA, Porto Alegre, RS, Brazil
关键词
commercial layers; artificial intelligence; objectivity; data management; LYMPHOID DEPLETION; AGE;
D O I
10.22456/1679-9216.101462
中图分类号
S85 [动物医学(兽医学)];
学科分类号
0906 ;
摘要
Background: Eggs have acquired a greater importance as an inexpensive and high-quality protein. The Brazilian egg industry has been characterized by a constant production expansion in the last decade, increasing the number of housed animals and facilitating the spread of many diseases. In order to reduce the sanitary and financial risks, decisions regarding the production and the health status of the flock must be made based on objective criteria. The use of Artificial Neural Networks (ANN) is a valuable tool to reduce the subjectivity of the analysis. In this context, the aim of this study was at validating the ANNs as viable tool to be employed in the prediction and management of commercial egg production flocks. Materials, Methods & Results: Data from 42 flocks of commercial layer hens from a poultry company were selected. The data refer to the period between 2010 and 2018 and it represents a total of 600,000 layers. Six parameters were selected as "output" data (number of dead birds per week, feed consumption, number of eggs, weekly weight, weekly egg production and flock uniformity) and a total of 13 parameters were selected as "input" data (flock age, flock identification, total hens in the flock, weekly weight, flock uniformity, lineage, weekly mortality, absolute number of dead birds, eggs/hen, weekly egg production, feed consumption, flock location, creation phase). ANNs were elaborated by software programs NeuroShell Predictor and NeuroShell Classifier. The programs identified input variables for the assembly of the networks seeking the prediction of the variables called outgoing that are subsequently validated. This validation goes through the comparison between the predictions and the real data present in the database that was the basis for the work. Validation of each ANN is expressed by the specific statistical parameters multiple determination (R-2) and Mean Squared Error (MSE). For instance, R-2 above 0.70 expresses a good validation. ANN developed for the output variable "number of dead birds per week" presented R-2=0.9533 and MSE=256.88. For "feed consumption", the results were R-2=0.7382 and MSE=274.56. For "number of eggs (eggs/hen)", the results were R-2=0.9901 and MSE=172.26. For "weekly weight", R-2=0.9712 and MSE=11154.41. For "weekly egg production", R-2=0.8015 and MSE=72.60. For "flock uniformity", R-2=-2.9955 and MSE=431.82. Discussion: From the six ANN designed in this study, in five it was possible to validate the predictions by comparing predictions with the real data. In one output parameter ("flock uniformity"), it was not possible to have adequate validation due to insufficient data in our database. For "number of dead birds per week", "feed consumption", "weekly weight" and "uniformity", the most important variable was "flock age" (27.5%, 52.5%, 55.2% and 37.9%, respectively). For "number of eggs (eggs/hen)", "uniformity" (52.1%) was the most relevant variable for prediction. For "weekly egg production", "flock age" and "number of eggs (eggs/hen)" were the most important zootechnical parameters, both with a relative contribution of 38.2%. The results showed that even with the use of a robust tool such as ANNs, it is necessary to have well-noted and clear information that expresses the reality of the flocks. In any case, the results presented allow us to state that ANNs are capable for the management of data generated in a commercial egg production facility. The process of evaluation of these data would be improved if ANNs were routinely used by the professionals linked to this activity.
引用
收藏
页数:7
相关论文
共 50 条
  • [21] Application of artificial neural networks in the forecast of alcohol production
    Soares de Oliveira, Anderson Castro
    de Souza, Ademaria Aparecida
    Lacerda, Wilian Soares
    Goncalves, Luciene Resende
    CIENCIA E AGROTECNOLOGIA, 2010, 34 (02): : 279 - 284
  • [22] SOME APPLICATIONS OF ARTIFICIAL NEURAL NETWORKS IN AGRICULTURAL MANAGEMENT
    Slavici, Titus
    Mnerie, Dumitru
    AKTUALNI ZADACI MEHANIZACIJE POLJOPRIVREDE, 2012, 40 : 363 - 373
  • [23] Use of artificial neural networks in construction management: A review
    Boussabaine, A.H.
    Construction Management and Economics, 1996, 14 (05): : 427 - 436
  • [24] Artificial neural networks for anticoagulant management - Think again!
    Ellis, MH
    ISRAEL MEDICAL ASSOCIATION JOURNAL, 2004, 6 (12): : 770 - 771
  • [25] Artificial neural networks for neurosurgical diagnosis, prognosis, and management
    Harbaugh, Robert E.
    NEUROSURGICAL FOCUS, 2018, 45 (05)
  • [26] Modeling Data Quality Using Artificial Neural Networks
    Laufer, Ralf
    Schwieger, Volker
    1ST INTERNATIONAL WORKSHOP ON THE QUALITY OF GEODETIC OBSERVATION AND MONITORING SYSTEMS (QUGOMS'11), 2015, 140 : 3 - 8
  • [27] Artificial neural networks for data recovery in a Shashlik calorimeter
    Bonesini, M
    Paganoni, M
    Terranova, F
    Gumenyuk, S
    Petrovykh, L
    APPLICATIONS AND SCIENCE OF ARTIFICIAL NEURAL NETWORKS II, 1996, 2760 : 789 - 800
  • [28] Exploratory Data Analysis using Artificial Neural Networks
    Sriram, D.
    Kalaivani, K.
    Ulagapriya, K.
    Saritha, A.
    Sajeevram, A.
    PROCEEDINGS OF 2020 IEEE INTERNATIONAL CONFERENCE ON ADVANCES AND DEVELOPMENTS IN ELECTRICAL AND ELECTRONICS ENGINEERING (ICADEE), 2020, : 186 - 195
  • [29] Artificial neural networks for data mining in animal sciences
    Ambreen Hamadani
    Nazir Ahmad Ganai
    Janibul Bashir
    Bulletin of the National Research Centre, 47 (1)
  • [30] The Use of Artificial Neural Networks in Evaluation of Posturographic Data
    Walther, L. E.
    Repik, I.
    Schnupp, T.
    Sommer, D.
    Hoermann, K.
    Golz, M.
    LARYNGO-RHINO-OTOLOGIE, 2011, 90 (04) : 211 - 217