Cite

Astill J., Dara R.A., Fraser E.D., Roberts B., Sharif S, (2020). Smart poultry management: Smart sensors, big data, and the internet of things. Comput. Electron. Agric., 170: 105291. Search in Google Scholar

Bao J., Xie Q. (2022). Artificial intelligence in animal farming: A systematic literature review. J. Clean. Prod., 331: 129956. Search in Google Scholar

Bao Y., Lu H., Zhao Q., Yang Z., Xu W., Bao Y. (2021). Detection system of dead and sick chickens in large-scale farms based on artificial intelligence. Math. Biosci. Eng., 18: 6117–6135. Search in Google Scholar

Barsagadea A.G., Rumaleb A.S. (2024). Internet of Things based intelligent monitoring and controlling of poultry system on using artificial intelligence. Int. J. Intell. Syst. Appl. Eng., 12: 456–467. Search in Google Scholar

Ben Sassi N., Averós X., Estevez I. (2016). Technology and poultry welfare. Animals, 6: 62. Search in Google Scholar

Caldwell D.G. (2012). Editor. Robotics and automation in the food industry: current and future technologies. Elsevier. Search in Google Scholar

Corkery G., Ward S., Kenny C., Hemmingway P. (2013). Incorporating smart sensing technologies into the poultry industry. J. World’s Poult. Res., 3: 106–128. Search in Google Scholar

Cuan K., Zhang T., Li Z., Huang J., Ding Y., Fang C. (2022). Automatic Newcastle disease detection using sound technology and deep learning method. Comput. Electron. Agric., 194: 106740. Search in Google Scholar

de SG Barros J., Barros T.A.D.S., Sartor K., Raimundo J.A., Rossi L.A. (2020). The effect of linear lighting systems on the productive performance and egg quality of laying hens. Poultry Sci., 99: 1369–1378. Search in Google Scholar

Debauche O., Mahmoudi S., Mahmoudi S. A., Manneback P., Bindelle J., Lebeau F. (2020). Edge computing and artificial intelligence for real-time poultry monitoring. Procedia Comput. Sci., 175: 534–541. Search in Google Scholar

Depuru B.K., Putsala S., Mishra P. (2024). Automating poultry farm management with artificial intelligence: Real-time detection and tracking of broiler chickens for enhanced and efficient health monitoring. Trop. Anim. Health Prod., 56: 1–11. Search in Google Scholar

Fei J.D., Hao W., Jun W., Wei X. (2023). Real-Time Recognition Study of Egg-Collecting Robot in Free-Range Duck Sheds. Available at SSRN 4396479. Search in Google Scholar

Garcia R.G., Caldara F.R. (2014). Infrared thermal image for assessing animal health and welfare. JABB, 2: 66–72. Search in Google Scholar

Guo Y., Aggrey S.E., Wang P., Oladeinde A., Chai L. (2022). Monitoring behaviors of broiler chickens at different ages with deep learning. Animals, 12: 3390. Search in Google Scholar

Hafez H.M., Attia Y.A. (2020). Challenges to the poultry industry: Current perspectives and strategic future after the COVID-19 outbreak. Front. Vet. Sci., 7: 516. Search in Google Scholar

Jin Y., Liu J., Xu Z., Yuan S., Li P., Wang J. (2021). Development status and trend of agricultural robot technology. Int. J. Agric. Biol. Eng., 14: 1–19. Search in Google Scholar

Jung D.H., Kim N.Y., Moon S.H., Kim H.S., Lee T.S., Yang J.S., Park S.H, (2021). Classification of vocalization recordings of laying hens and cattle using convolutional neural network models. Biosyst. Eng., 46: 217–224. Search in Google Scholar

Küçüktopcu E., Cemek B. (2021 a). Comparative analysis of artificial intelligence and nonlinear models for broiler growth curve. Uluslararası Tarım ve Yaban Hayatı Bilimleri Dergisi, 7: 515–523. Search in Google Scholar

Küçüktopcu E., Cemek B. (2021 b). Comparison of neuro-fuzzy and neural networks techniques for estimating ammonia concentration in poultry farms. J. Environ. Chem. Eng., 9: 105699. Search in Google Scholar

Kumar J., Akhila K., Gaikwad K.K. (2021). Recent developments in intelligent packaging systems for food processing industry: a review. J. Food Proc. Technol., 12: 895. Search in Google Scholar

Kumar Y., Koul A., Singla R., Ijaz M.F. (2022). Artificial intelligence in disease diagnosis: a systematic literature review, synthesizing framework and future research agenda. J. Ambient Intell. Human. Comput., 1–28. Search in Google Scholar

Li Z., Zhang T., Cuan K., Fang C., Zhao H., Guan C., Yang Q., Qu H. (2022). Sex detection of chicks based on audio technology and deep learning methods. Animals, 12: 3106. Search in Google Scholar

Machuve D., Nwankwo E., Mduma N., Mbelwa J. (2022). Poultry diseases diagnostics models using deep learning. Front. Artif. Intell., 5: 733345. Search in Google Scholar

Manjeet D.S., Jakhar V., Ramkaran C.S., Sharma S. (2019). Prediction of 40 weeks egg production on the basis of part egg production and part cumulative egg production Traitsin Synthetic White Leghorn strain. Int. J. Pure App. Biosci., 7: 162–165. Search in Google Scholar

Mavani N.R., Ali J.M., Othman S., Hussain M.A., Hashim H., Rahman N.A. (2022). Application of artificial intelligence in food industry – a guideline. Food Eng. Rev., 14: 134–175. Search in Google Scholar

Mbelwa H., Machuve D., Mbelwa J. (2021). Deep convolutional neural network for chicken diseases detection. https://dx.doi.org/10.14569/IJACSA.2021.0120295 Search in Google Scholar

Mijwil M.M., Adelaja O., Badr A., Ali G., Buruga B.A., Pudasaini P. (2023). Innovative livestock: a survey of artificial intelligence techniques in livestock farming management. Wasit J. Comp. Math. Sci., 2: 99–106. Search in Google Scholar

Mitchell M.A., Kettlewell P.J. (2009). Welfare of poultry during transport – a review. Proc. Poultry Welfare Symposium. Cervia: Association Proceeding, pp. 90–100. Search in Google Scholar

Mortensen A.K., Lisouski P., Ahrendt P. (2016). Weight prediction of broiler chickens using 3D computer vision. Comput. Electron. Agric., 123: 319–326. Search in Google Scholar

Neethirajan S. (2022). ChickTrack – a quantitative tracking tool for measuring chicken activity. Measurement, 191: 110819. Search in Google Scholar

Ojo R.O., Ajayi A.O., Owolabi H.A., Oyedele L.O., Akanbi L.A. (2022). Internet of Things and Machine Learning techniques in poultry health and welfare management: A systematic literature review. Comput. Electron. Agric., 200: 107266. Search in Google Scholar

Okinda C., Lu M., Liu L., Nyalala I., Muneri C., Wang J., Zhang H., Shen M. (2019). A machine vision system for early detection and prediction of sick birds: A broiler chicken model. Biosyst. Eng., 188: 229–242. Search in Google Scholar

Patel H., Samad A., Hamza M., Muazzam A., Harahap M.K. (2022). Role of artificial intelligence in livestock and poultry farming. Sinkron: J. Ilm. Tek. Inform., 7: 2425–2429. Search in Google Scholar

Quach L.D., Pham-Quoc N., Tran D.C., Fadzil Hassan M. (2020). Identification of chicken diseases using VGGNet and ResNet models. Proc. 6th EAI International Conference, INISCOM 2020, 27–28.08.2020, Hanoi, Vietnam, Industrial Networks and Intelligent Systems, pp. 259–269. Search in Google Scholar

Ren G., Lin T., Ying Y., Chowdhary G., Ting K.C. (2020). Agricultural robotics research applicable to poultry production: A review. Comput. Electron. Agric., 169: 105216. Search in Google Scholar

Rico-Contreras J.O., Aguilar-Lasserre A.A., Méndez-Contreras J.M., López-Andrés J.J., Cid-Chama G. (2017). Moisture content prediction in poultry litter using artificial intelligence techniques and Monte Carlo simulation to determine the economic yield from energy use. Environ. Manag., 202: 254–267. Search in Google Scholar

Sadeghi M., Banakar A., Khazaee M., Soleimani M.R. (2015). An intelligent procedure for the detection and classification of chickens infected by Clostridium perfringens based on their vocalization. Braz. J. Poult. Sci., 17: 537–544. Search in Google Scholar

Sadeghi M., Banakar A., Minaei S., Orooji M., Shoushtari A., Li G. (2023). Early detection of avian diseases based on thermography and artificial intelligence. Animals, 13: 2348. Search in Google Scholar

Vroegindeweij B.A., Blaauw S.K., IJsselmuiden J.M., van Henten E.J. (2018). Evaluation of the performance of Poultry Bot, an autonomous mobile robotic platform for poultry houses. Biosyst. Eng., 174: 295–315. Search in Google Scholar

Walsh D.P., Ma T.F., Ip H.S., Zhu J. (2019). Artificial intelligence and avian influenza: using machine learning to enhance active surveillance for avian influenza viruses. Transboundary and emerging diseases, 66: 2537–2545. Search in Google Scholar

Wang K., Shen D., Dai P., Li C. (2023). Particulate matter in poultry house on poultry respiratory disease: A systematic review. Poultry Sci., 102556. Search in Google Scholar

Xie B.X., Chang C.L. (2022). Behavior recognition of a broiler chicken using long short-term memory with convolution neural networks. Proc. International Automatic Control Conference (CACS), IEEE, pp. 1–5. Search in Google Scholar

Zhuang X., Bi M., Guo J., Wu S., Zhang T. (2018). Development of an early warning algorithm to detect sick broilers. Comput. Electron. Agric., 144: 102–113. Search in Google Scholar

eISSN:
2300-8733
Language:
English
Publication timeframe:
4 times per year
Journal Subjects:
Life Sciences, Biotechnology, Zoology, Medicine, Veterinary Medicine