Роботизовані технології у тваринництві: сучасні системи та перспективи розвитку

Автор(и)

  • Ю. М. Сиромятников Державний біотехнологічний університет image/svg+xml
  • П. С. Сиромятніков Державний біотехнологічний університет image/svg+xml
  • М. В. Півень Державний біотехнологічний університет image/svg+xml

DOI:

https://doi.org/10.31359/2311.441X.2026.28.205

Ключові слова:

роботизовані технології, автоматизація тваринництва, штучний інтелект, Інтернет речей, економічна ефективність, моніторинг здоров'я, автоматизоване доїння, управління годівлею, мікроклімат, кібербезпека

Анотація

Метою статті є здійснення комплексного огляду сучасних роботизованих і автоматизованих технологій, що впроваджуються у тваринництві з метою підвищення ефективності виробничих процесів, зниження експлуатаційних витрат, покращення добробуту тварин та забезпечення сталого розвитку галузі. Особлива увага приділена інтеграції штучного інтелекту (ШІ), Інтернету речей (IoT) та сенсорних систем у структуру тваринницьких господарств. 
У статті систематизовано та проаналізовано функціональні можливості автоматизованих систем годівлі, доїння, моніторингу здоров’я, керування мікрокліматом і санітарного очищення. Встановлено, що впровадження цифрових рішень сприяє підвищенню продуктивності на 10–20%, зменшенню витрат на 30–50%, зниженню захворюваності тварин на 25–40% та скороченню використання антибіотиків на 20–25%. Показано, що застосування блокчейн-технологій підвищує рівень прозорості та біобезпеки в ланцюгу постачання. Також висвітлено переваги адаптивних систем управління, автоматизованого моніторингу фізіологічних показників тварин та використання алгоритмів глибокого навчання у точному тваринництві. 
Огляд доводить ефективність впровадження роботизованих технологій як інструменту модернізації тваринництва. Встановлено, що цифрова трансформація сприяє зростанню економічної рентабельності, покращенню умов утримання тварин і екологічній стійкості виробництва. Подальші дослідження мають бути зосереджені на розробці адаптивних цифрових систем та вдосконаленні моделей управління для підтримки малих і середніх господарств.

Посилання

Список використаних джерел

1. Bae J., Park S., Jeon K., Choi J. Y. Autonomous system of TMR (total mixed ration) feed feeding robot for smart cattle farm. International Journal of Precision Engineering and Manufacturing. 2023. Vol. 24(3). P. 423–433. doi: 10.1007/s12541-022-00742-y

2. Bisaglia C., Lazzari A., Giovinazzo S., Brambilla M. Automatic feeding systems for cattle in Italy: State of the art and perspectives. AIIA 2022: Biosystems Engineering Towards the Green Deal. 2023. Vol. 337. P. 398–405. doi: 10.1007/978-3-031-30329-6_38

3. Romano E., Brambilla M., Cutini M., Giovinazzo S., Lazzari A., Calcante A., Tangorra F. M., Rossi P., Motta A., Bisaglia C., Bragaglio A. Increased cattle feeding precision from automatic feeding systems: Considerations on technology spread and farm level perceived advantages in Italy. Animals. 2023. Vol. 13(21). P. 3382. doi: 10.3390/ani13213382

4. Blagoeva E., Karkov B., Stoimenov N. Review and analysis of robotized feeding systems. Proceedings of 2021 International Conference Automatics and Informatics (ICAI). 2021. P. 91–94. doi: 10.1109/ICAI52893.2021.9639549

5. Mosquera I. L. Q., Fierro J. E. R., Zacarias J. R. O., Montero J. B., Quijano S. A. C., Huamanchahua D. Design of an automated system for cattle-feed dispensing in cattle-cows. Proceedings of 2021 IEEE 12th Annual Ubiquitous Computing, Electronics & Mobile Communication Conference (UEMCON). 2021. P. 671–675. doi: 10.1109/UEMCON53757.2021.9666491

6. Meng H., Gao Z., Luo X., Qu J., Lin H. Design and experiment on self-propelled precise feeding equipment for dairy cow. Indonesian Journal of Electrical Engineering and Computer Science. 2013. Vol. 11(4). P. 1889–1895. doi: 10.11591/telkomnika.v11i4.2357

7. Fan Z., Zhang M., Xu B., Yang Z. Research advances and prospect of intelligent monitoring systems for the physiological indicators of beef cattle. Smart Agriculture. 2024. Vol. 18(2). P. 97–115. doi: 10.12133/j.smartag.SA202312001

8. Chen Z., Cheng X., Wang X., Han M. Recognition method of dairy cow feeding behavior based on convolutional neural network. Journal of Physics: Conference Series. 2020. Vol. 1693(1). P. 012166. doi: 10.1088/1742-6596/1693/1/012166

9. Liu N., Qi J., An X., Wang Y. A review on information technologies applicable to precision dairy farming: Focus on behavior, health monitoring, and the precise feeding of dairy cows. Agriculture. 2023. Vol. 13(10). P. 1858. doi: 10.3390/agriculture13101858

10. Lima L. M., Cavalcante V. C., de Sousa M. G., Fleury C. A., Oliveira D., Freitas E. N. A. Artificial intelligence in support of welfare monitoring of dairy cattle: A systematic literature review. Proceedings of 2021 International Conference on Computational Science and Computational Intelligence (CSCI). 2021. P. 1708–1715. doi: 10.1109/CSCI54926.2021.00324

11. Fuentes S., Viejo C. G., Cullen B., Tongson E., Chauhan S., Dunshea F. Artificial intelligence applied to a robotic dairy farm to model milk productivity and quality based on cow data and daily environmental parameters. Sensors. 2020. Vol. 20(10). P. 2975. doi: 10.3390/s20102975

12. Nogoy K. M., Park J., Chon S.-I., Sivamani S., Park M.-J., Cho J.-P., Hong H. K., Lee D.-H., Choi S. H. Precision detection of real-time conditions of dairy cows using an advanced artificial intelligence hub. Applied Sciences. 2021. Vol. 11(24). P. 12043. doi: 10.3390/app112412043

13. Hou H., Shi W., Guo J., Zhang Z., Shen W., Kou S. Cow rump identification based on lightweight convolutional neural networks. Information. 2021. Vol. 12(9). P. 361. doi: 10.3390/info12090361

14. Neethirajan S. Artificial intelligence and sensor innovations: Enhancing livestock welfare with a human-centric approach. Human-Centric Intelligent Systems. 2024. Vol. 4(1). P. 1–15. doi: 10.1007/s44230-023-00050-2

15. El Moutaouakil K., Falih N. A new approach to animal behavior classification using recurrent neural networks. Proceedings of 2024 IEEE International Conference on Artificial Intelligence and IoT (IRASET). 2024. P. 55–72. doi: 10.1109/IRASET60544.2024.10549544

16. Addanki M., Patra P., Kandra P. Recent advances and applications of artificial intelligence and related technologies in the food industry. Applied Food Research. 2022. Vol. 2(2). P. 100126. doi: 10.1016/j.afres.2022.100126

17. Fuentes S., Gonzalez Viejo C., Tongson E., Dunshea F. R. The livestock farming digital transformation: Implementation of new and emerging technologies using artificial intelligence. Animal Health Research Reviews. 2022. Vol. 23(1). P. 59–71. doi: 10.1017/S1466252321000177

18. Singh A., Jadoun Y. S., Brar P. S., Kour G. Smart technologies in livestock farming: The role of RFID and IoT in animal tracking and hygiene monitoring. Smart and Sustainable Food Systems. 2022. Vol. 4(2). P. 121–138. doi: 10.1007/978-981-19-1746-2_2

19. Kaur U. Cyber-physical systems with robots and AI for precision dairy farming. Journal of Animal Science. 2024. Vol. 102(Suppl. 3). P. 297–315. doi: 10.1093/jas/skae234.340

20. Balasubramaniam S., Joe C. V. Computer vision systems in livestock farming, poultry farming, and fish farming: Applications, use cases, and research directions. Computer Vision in Agriculture. 2025. Vol. 19(2). P. 85–105. doi: 10.1002/9781394186686.ch10

21. Guarnido-Lopez P., Pi Y., Tao J., Mendes E. D. M. Computer vision algorithms to help decision-making in cattle production. Animal Frontiers. 2024. Vol. 14(6). P. 11–27. doi: 10.1093/af/vfae028

22. Shamsuddoha M., Nasir T. Smart practices in modern dairy farming in Bangladesh: Integrating technological transformations for sustainable responsibility. Administrative Sciences. 2025. Vol. 15(2). P. 38. doi: 10.3390/admsci15020038

23. De Vries A., Bliznyuk N., Pinedo P. Invited review: Examples and opportunities for artificial intelligence (AI) in dairy farms. Applied Animal Science. 2023. Vol. 39(1). P. 14–22. doi: 10.15232/aas.2022-02345

24. Kutyauripo I., Rushambwa M., Chiwazi L. Artificial intelligence applications in the agrifood sectors. Journal of Agriculture and Food Research. 2023. Vol. 11. P. 100502. doi: 10.1016/j.jafr.2023.100502

25. Attard G. Robots in livestock management. Encyclopedia of Smart Agriculture Technologies. 2023. Vol. 3. P. 245–260. doi: 10.1007/978-3-030-89123-7_245-1

26. Kashyap N., Deshmukh B. Applying sensors and robotics towards smart animal management. Biotechnological Interventions Augmenting Livestock Health and Production. 2023. P. 443–460. doi: 10.1007/978-981-99-2209-3_21

27. Zhang L., Guo W., Lv C., Guo M., Yang M. Advancements in artificial intelligence technology for improving animal welfare: Current applications and research progress. Animal Research and Development. 2024. Vol. 29(3). P. 145–165. doi: 10.1002/aro2.44

28. Singh S. V., Ukey A. K. Climate change trends and their impacts on bovine productivity: Precision livestock farming for sustainable development goals and One Health. Indian Journal of Animal Health. 2024. Vol. 63(1). P. 45–62. doi: 10.36062/ijah.2024.spl.01024

29. Zhao Y., Berckmans D., Gan H., Ramirez B., Siegford J. 2nd US Precision Livestock Farming Conference: Innovations in precision livestock monitoring and welfare. MDPI Precision Livestock Science. 2024. Vol. 16(1). P. 112–130. doi: 10.3390/books978-3-7258-1042-0

30. Simitzis P., Tzanidakis C., Tzamaloukas O., Sossidou E. Contribution of precision livestock farming systems to the improvement of welfare status and productivity of dairy animals. Dairy. 2022. Vol. 3(1). P. 12–28. doi: 10.3390/dairy3010002

31. Dayoub M., Shnaigat S., Tarawneh R. A., Al-Yacoub A. N. Enhancing animal production through smart agriculture: Possibilities, hurdles, resolutions, and advantages. Ruminants. 2024. Vol. 4(1). P. 33–52. doi: 10.3390/ruminants4010003

32. Halachmi I., Guarino M., Bewley J., Pastell M. Smart animal agriculture: Application of real-time sensors to improve animal well-being and production. Annual Review of Animal Biosciences. 2019. Vol. 7. P. 403–425. doi: 10.1146/annurev-animal-020518-114851

33. Cavani L., Novo L. C., Reyes F. S., Nascimento B. M. Associations between body temperature and feed efficiency traits in lactating Holstein cows. Journal of Dairy Science Advances. 2024. Vol. 3(2). P. 65–82. doi: 10.3168/jdsc.2024-0701

34. Weinert-Nelson J. R., Werner J., Jacobs A. A. Effects of heat stress on the accuracy of an ear-tag accelerometer for monitoring rumination and eating behavior in dairy-beef cross cattle using an automated system. Journal of Dairy Science. 2025. Vol. 108(3). P. 560–575. doi: 10.3168/jds.2024-24858

35. Neculai-Valeanu A.-S., Ariton A.-M., Radu C., Porosnicu I., Sanduleanu C., Amariții G. From herd health to public health: Digital tools for combating antibiotic resistance in dairy farms. Antibiotics. 2024. Vol. 13(7). P. 634. doi: 10.3390/antibiotics13070634

36. Qiao Y., Kong H., Clark C., Lomax S., Su D., Eiffert S., Sukkarieh S. Intelligent perception-based cattle lameness detection and behaviour recognition: A review. Animals. 2021. Vol. 11(11). P. 3033. doi: 10.3390/ani11113033

37. Cogato A., Brščić M., Guo H., Marinello F., Pezzuolo A. Challenges and tendencies of automatic milking systems (AMS): A 20-years systematic review of literature and patents. Animals. 2021. Vol. 11(2). P. 356. doi: 10.3390/ani11020356

38. Bhoj S., Tarafdar A., Singh M., Gaur G. K. Smart and automatic milking systems: Benefits and prospects. Smart and Sustainable Food Technologies. 2022. P. 67–83. doi: 10.1007/978-981-19-1746-2_4

39. Holloway L., Bear C., Wilkinson K. Robotic milking technologies and renegotiating situated ethical relationships on UK dairy farms. Agriculture and Human Values. 2014. Vol. 31. P. 185–199. doi: 10.1007/s10460-013-9473-3

40. Hassoun A., Garcia-Garcia G., Trollman H., Jagtap S., Parra-López C., Cropotova J., Aït-Kaddour A. Birth of dairy 4.0: Opportunities and challenges in adoption of fourth industrial revolution technologies in the production of milk and its derivatives. Current Research in Food Science. 2023. Vol. 6. P. 100535. doi: 10.1016/j.crfs.2023.100535

41. Vlaicu P. A., Gras M. A., Untea A. E., Lefter N. A., Rotar M. C. Advancing livestock technology: Intelligent systemization for enhanced productivity, welfare, and sustainability. AgriEngineering. 2024. Vol. 6(2). P. 1479–1496. doi: 10.3390/agriengineering6020084

42. Kunz Cechinel A., Soares C. E., Pfleger S. G., De Oliveira L. L. G. A., Américo de Andrade E., Damo Bertoli C., De Rolt C. R., De Pieri E. R., Plentz P. D. M., Röning J. Mobile robot + IoT: Project of sustainable technology for sanitizing broiler poultry litter. Sensors. 2024. Vol. 24(10). P. 3049. doi: 10.3390/s24103049

43. Vincent D. R., Deepa N., Elavarasan D., Srinivasan K., Chauhdary S. H., Iwendi C. Sensors driven AI-based agriculture recommendation model for assessing land suitability. Sensors. 2019. Vol. 19(17). P. 3667. doi: 10.3390/s19173667

44. Wolfert S., Ge L., Verdouw C., Bogaardt M.-J. Big Data in Smart Farming – A review. Agricultural Systems. 2017. Vol. 153. P. 69–80. doi: 10.1016/j.agsy.2017.01.023

45. Neethirajan S. The role of sensors, big data and machine learning in modern animal farming. Sensors and Actuators B: Chemical. 2020. Vol. 304. P. 127423. doi: 10.1016/j.sbsr.2020.100367

46. Nasirahmadi A., Edwards S. A., Sturm B. Implementation of machine vision for detecting behaviour of cattle and pigs. Livestock Science. 2017. Vol. 202. P. 25–38. doi: 10.1016/j.livsci.2017.05.014

47. Porto S. M. C., Arcidiacono C., Anguzza U., Cascone G. The automatic detection of dairy cow feeding and standing behaviours in free-stall barns by a computer vision-based technique. Biosystems Engineering. 2014. Vol. 123. P. 25–35. doi: 10.1016/j.biosystemseng.2015.02.012

48. Alameer A., Buijs S., O'Connell N., Dalton L., Larsen M., Pedersen L., Kyriazakis I. Automated detection and quantification of contact behaviour in pigs using deep learning. Biosystems Engineering. 2022. Vol. 224. P. 118–130. doi: 10.1016/j.biosystemseng.2022.10.002

49. Tullo E., Finzi A., Guarino M. Environmental impact of livestock farming and Precision Livestock Farming as a mitigation strategy. Science of The Total Environment. 2019. Vol. 650(2). P. 2751–2760. doi: 10.1016/j.scitotenv.2018.10.018

50. Lim D. Y., Ryu H.-D., Chung E. G., Shin D., Lee J. K. Sensitivity analysis of a regional nutrient budget model for two regions with intensive livestock farming in Korea. Sustainability. 2019. Vol. 11(13). P. 3676. doi: 10.3390/su11133676

51. Akhmedova Z., Shodiev Z., et al. Smart farm development for sustainable dairy farming in the Republic of Uzbekistan. E3S Web of Conferences. 2024. Vol. 78. P. 02023. doi: 10.1051/e3sconf/202454802023

52. Hayden M. A., Barim M. S., Weaver D. L., Elliott K. C., Flynn M. A., Lincoln J. M. Occupational safety and health with technological developments in livestock farms: A literature review. International Journal of Environmental Research and Public Health. 2022. Vol. 19(24). P. 16440. doi: 10.3390/ijerph192416440

53. Ruban S., Danshyn V. Feed efficiency of dairy cattle as genetic trait. The Animal Biology. 2024. Vol. 26(1). P. 3–17. doi: 10.15407/animbiol26.01.003

54. Delaby L., Faverdin P., Michel G., Disenhaus C., Peyraud J. Effect of different feeding strategies on lactation performance of Holstein and Normande dairy cows. Animal. 2009. Vol. 3(6). P. 891–905. doi: 10.1017/S1751731109004212

55. Wang T., Xu X., Wang C., Li Z., Li D. From smart farming towards unmanned farms: A new mode of agricultural production. Agriculture. 2021. Vol. 11(2). P. 145. doi: 10.3390/agriculture11020145

56. Sharma S., Gahlawat V. K., Rahul K., Mor R. S., Malik M. Sustainable innovations in the food industry through artificial intelligence and big data analytics. Logistics. 2021. Vol. 5(4). P. 66. doi: 10.3390/logistics5040066

57. Kaler J., Ruston A. Technology adoption on farms: Using Normalization Process Theory to understand sheep farmers’ attitudes and behaviours in relation to using precision technology in flock management. Preventive Veterinary Medicine. 2019. Vol. 170. P. 104715. doi: 10.1016/j.prevetmed.2019.104715

58. Van Hertem T., Rooijakkers L., Berckmans D., Fernández A. P., Norton T., Guarino M. Appropriate data visualisation is key to Precision Livestock Farming acceptance. Computers and Electronics in Agriculture. 2018. Vol. 153. P. 13–22. doi: 10.1016/j.compag.2017.04.003

59. Monteiro A., Santos S., Gonçalves P. Precision Agriculture for Crop and Livestock Farming—Brief Review. Animals. 2021. Vol. 11(8). P. 2345. doi: 10.3390/ani11082345

60. Vasdal G., Marchewka J., Newberry R. C., Estevez I., Kittelsen K. Developing a novel welfare assessment tool for loose-housed laying hens–the Aviary Transect method. Poultry Science. 2022. Vol. 101(1). P. 101533. doi: 10.1016/j.psj.2021.101533

61. Michel V., Berk J., Bozakova N., van der Eijk J., Estevez I., Mircheva T., Relic R., Rodenburg T. B., Sossidou E. N., Guinebretière M. The relationships between damaging behaviours and health in laying hens. Animals. 2022. Vol. 12(8). P. 986. doi: 10.3390/ani12080986

62. Rutten C. J., Velthuis A. G. J., Steeneveld W., Hogeveen H. Invited review: Sensors to support health management on dairy farms. Journal of Dairy Science. 2013. Vol. 96(4). P. 1928–1952. doi: 10.3168/jds.2012-6107

63. McManus C., Bianchini E., Paim T. D. P., De Lima F. G., Neto J. B., Castanheira M., Esteves G. I. F., Cardoso C. C., Dalcin V. C. Infrared thermography to evaluate heat tolerance in different genetic groups of lambs. Sensors. 2015. Vol. 15(7). P. 17258–17273. doi: 10.3390/s150717258

64. Shablia V. P., Tkachova I. V. Machine and manual working actions for different manure removing technologies. Boletim de Indústria Animal. 2020. Vol. 77. P. e1482. doi: 10.17523/bia.2020.v77.e1482

65. Ibrahim S., Al-Sharif M., Younis F., Ateya A., Abdo M., Fericean L. Analysis of potential genes and economic parameters associated with growth and heat tolerance in sheep (Ovis aries). Animals. 2023. Vol. 13(3). P. 353. doi: 10.3390/ani13030353

66. Chung Y., Oh S., Lee J., Park D., Chang H.-H., Kim S. Automatic detection and recognition of pig wasting diseases using sound data in audio surveillance systems. Sensors. 2013. Vol. 13(10). P. 12929–12942. doi: 10.3390/s131012929

References

1. Bae, J., Park, S., Jeon, K., & Choi, J. Y. (2023). Autonomous system of TMR (total mixed ration) feed feeding robot for smart cattle farm. International Journal of Precision Engineering and Manufacturing, 24(3), 423–433. doi: 10.1007/s12541-022-00742-y

2. Bisaglia, C., Lazzari, A., Giovinazzo, S., & Brambilla, M. (2023). Automatic feeding systems for cattle in Italy: State of the art and perspectives. AIIA 2022: Biosystems Engineering Towards the Green Deal, 337, 398–405. doi: 10.1007/978-3-031-30329-6_38

3. Romano, E., Brambilla, M., Cutini, M., Giovinazzo, S., Lazzari, A., Calcante, A., Tangorra, F. M., Rossi, P., Motta, A., Bisaglia, C., & Bragaglio, A. (2023). Increased cattle feeding precision from automatic feeding systems: Considerations on technology spread and farm level perceived advantages in Italy. Animals, 13(21), 3382. doi: 10.3390/ani13213382

4. Blagoeva, E., Karkov, B., & Stoimenov, N. (2021). Review and analysis of robotized feeding systems. Proceedings of 2021 International Conference Automatics and Informatics (ICAI), 91–94. doi: 10.1109/ICAI52893.2021.9639549

5. Mosquera, I. L. Q., Fierro, J. E. R., Zacarias, J. R. O., Montero, J. B., Quijano, S. A. C., & Huamanchahua, D. (2021). Design of an automated system for cattle-feed dispensing in cattle-cows. Proceedings of 2021 IEEE 12th Annual Ubiquitous Computing, Electronics & Mobile Communication Conference (UEMCON), 671–675. doi: 10.1109/UEMCON53757.2021.9666491

6. Meng, H., Gao, Z., Luo, X., Qu, J., & Lin, H. (2013). Design and experiment on self-propelled precise feeding equipment for dairy cow. Indonesian Journal of Electrical Engineering and Computer Science, 11(4), 1889–1895. doi: 10.11591/telkomnika.v11i4.2357

7. Fan, Z., Zhang, M., Xu, B., & Yang, Z. (2024). Research advances and prospect of intelligent monitoring systems for the physiological indicators of beef cattle. Smart Agriculture, 18(2), 97–115. doi: 10.12133/j.smartag.SA202312001

8. Chen, Z., Cheng, X., Wang, X., & Han, M. (2020). Recognition method of dairy cow feeding behavior based on convolutional neural network. Journal of Physics: Conference Series, 1693(1), 012166. doi: 10.1088/1742-6596/1693/1/012166

9. Liu, N., Qi, J., An, X., & Wang, Y. (2023). A review on information technologies applicable to precision dairy farming: Focus on behavior, health monitoring, and the precise feeding of dairy cows. Agriculture, 13(10), 1858. doi: 10.3390/agriculture13101858

10. Lima, L. M., Cavalcante, V. C., de Sousa, M. G., Fleury, C. A., Oliveira, D., & Freitas, E. N. A. (2021). Artificial intelligence in support of welfare monitoring of dairy cattle: A systematic literature review. Proceedings of 2021 International Conference on Computational Science and Computational Intelligence (CSCI), 1708–1715. doi: 10.1109/CSCI54926.2021.00324

11. Fuentes, S., Viejo, C. G., Cullen, B., Tongson, E., Chauhan, S., & Dunshea, F. (2020). Artificial intelligence applied to a robotic dairy farm to model milk productivity and quality based on cow data and daily environmental parameters. Sensors, 20(10), 2975. doi: 10.3390/s20102975

12. Nogoy, K. M., Park, J., Chon, S.-I., Sivamani, S., Park, M.-J., Cho, J.-P., Hong, H. K., Lee, D.-H., & Choi, S. H. (2021). Precision detection of real-time conditions of dairy cows using an advanced artificial intelligence hub. Applied Sciences, 11(24), 12043. doi: 10.3390/app112412043

13. Hou, H., Shi, W., Guo, J., Zhang, Z., Shen, W., & Kou, S. (2021). Cow rump identification based on lightweight convolutional neural networks. Information, 12(9), 361. doi: 10.3390/info12090361

14. Neethirajan, S. (2024). Artificial intelligence and sensor innovations: Enhancing livestock welfare with a human-centric approach. Human-Centric Intelligent Systems, 4(1), 1–15. doi: 10.1007/s44230-023-00050-2

15. El Moutaouakil, K., & Falih, N. (2024). A new approach to animal behavior classification using recurrent neural networks. Proceedings of 2024 IEEE International Conference on Artificial Intelligence and IoT (IRASET), 55–72. doi: 10.1109/IRASET60544.2024.10549544

16. Addanki, M., Patra, P., & Kandra, P. (2022). Recent advances and applications of artificial intelligence and related technologies in the food industry. Applied Food Research, 2(2), 100126. doi: 10.1016/j.afres.2022.100126

17. Fuentes, S., Gonzalez Viejo, C., Tongson, E., & Dunshea, F. R. (2022). The livestock farming digital transformation: Implementation of new and emerging technologies using artificial intelligence. Animal Health Research Reviews, 23(1), 59–71. doi: 10.1017/S1466252321000177

18. Singh, A., Jadoun, Y. S., Brar, P. S., & Kour, G. (2022). Smart technologies in livestock farming: The role of RFID and IoT in animal tracking and hygiene monitoring. Smart and Sustainable Food Systems, 4(2), 121–138. doi: 10.1007/978-981-19-1746-2_2

19. Kaur, U. (2024). Cyber-physical systems with robots and AI for precision dairy farming. Journal of Animal Science, 102(Supplement 3), 297–315. doi: 10.1093/jas/skae234.340

20. Balasubramaniam, S., & Joe, C. V. (2025). Computer vision systems in livestock farming, poultry farming, and fish farming: Applications, use cases, and research directions. Computer Vision in Agriculture, 19(2), 85–105. doi: 10.1002/9781394186686.ch10

21. Guarnido-Lopez, P., Pi, Y., Tao, J., & Mendes, E. D. M. (2024). Computer vision algorithms to help decision-making in cattle production. Animal Frontiers, 14(6), 11–27. doi: 10.1093/af/vfae028

22. Shamsuddoha, M., & Nasir, T. (2025). Smart practices in modern dairy farming in Bangladesh: Integrating technological transformations for sustainable responsibility. Administrative Sciences, 15(2), 38. doi: 10.3390/admsci15020038

23. De Vries, A., Bliznyuk, N., & Pinedo, P. (2023). Invited review: Examples and opportunities for artificial intelligence (AI) in dairy farms. Applied Animal Science, 39(1), 14–22. doi: 10.15232/aas.2022-02345

24. Kutyauripo, I., Rushambwa, M., & Chiwazi, L. (2023). Artificial intelligence applications in the agrifood sectors. Journal of Agriculture and Food Research, 11, 100502. doi: 10.1016/j.jafr.2023.100502

25. Attard, G. (2023). Robots in livestock management. Encyclopedia of Smart Agriculture Technologies, 3, 245–260. doi: 10.1007/978-3-030-89123-7_245-1

26. Kashyap, N., & Deshmukh, B. (2023). Applying sensors and robotics towards smart animal management. Biotechnological Interventions Augmenting Livestock Health and Production, 443–460. doi: 10.1007/978-981-99-2209-3_21

27. Zhang, L., Guo, W., Lv, C., Guo, M., & Yang, M. (2024). Advancements in artificial intelligence technology for improving animal welfare: Current applications and research progress. Animal Research and Development, 29(3), 145–165. doi: 10.1002/aro2.44

28. Singh, S. V., & Ukey, A. K. (2024). Climate change trends and their impacts on bovine productivity: Precision livestock farming for sustainable development goals and One Health. Indian Journal of Animal Health, 63(1), 45–62. doi: 10.36062/ijah.2024.spl.01024

29. Zhao, Y., Berckmans, D., Gan, H., Ramirez, B., & Siegford, J. (2024). 2nd US Precision Livestock Farming Conference: Innovations in precision livestock monitoring and welfare. MDPI Precision Livestock Science, 16(1), 112–130. doi: 10.3390/books978-3-7258-1042-0

30. Simitzis, P., Tzanidakis, C., Tzamaloukas, O., & Sossidou, E. (2022). Contribution of precision livestock farming systems to the improvement of welfare status and productivity of dairy animals. Dairy, 3(1), 12–28. doi: 10.3390/dairy3010002

31. Dayoub, M., Shnaigat, S., Tarawneh, R. A., & Al-Yacoub, A. N. (2024). Enhancing animal production through smart agriculture: Possibilities, hurdles, resolutions, and advantages. Ruminants, 4(1), 33–52. doi: 10.3390/ruminants4010003

32. Halachmi, I., Guarino, M., Bewley, J., & Pastell, M. (2019). Smart animal agriculture: Application of real-time sensors to improve animal well-being and production. Annual Review of Animal Biosciences, 7, 403–425. doi: 10.1146/annurev-animal-020518-114851

33. Cavani, L., Novo, L. C., Reyes, F. S., & Nascimento, B. M. (2024). Associations between body temperature and feed efficiency traits in lactating Holstein cows. Journal of Dairy Science Advances, 3(2), 65–82. doi: 10.3168/jdsc.2024-0701

34. Weinert-Nelson, J. R., Werner, J., & Jacobs, A. A. (2025). Effects of heat stress on the accuracy of an ear-tag accelerometer for monitoring rumination and eating behavior in dairy-beef cross cattle using an automated system. Journal of Dairy Science, 108(3), 560–575. doi: 10.3168/jds.2024-24858

35. Neculai-Valeanu, A.-S., Ariton, A.-M., Radu, C., Porosnicu, I., Sanduleanu, C., & Amariții, G. (2024). From herd health to public health: Digital tools for combating antibiotic resistance in dairy farms. Antibiotics, 13(7), 634. doi: 10.3390/antibiotics13070634

36. Qiao, Y., Kong, H., Clark, C., Lomax, S., Su, D., Eiffert, S., & Sukkarieh, S. (2021). Intelligent perception-based cattle lameness detection and behaviour recognition: A review. Animals, 11(11), 3033. doi: 10.3390/ani11113033

37. Cogato, A., Brščić, M., Guo, H., Marinello, F., & Pezzuolo, A. (2021). Challenges and tendencies of automatic milking systems (AMS): A 20-years systematic review of literature and patents. Animals, 11(2), 356. doi: 10.3390/ani11020356

38. Bhoj, S., Tarafdar, A., Singh, M., & Gaur, G. K. (2022). Smart and automatic milking systems: Benefits and prospects. Smart and Sustainable Food Technologies, 67–83. doi: 10.1007/978-981-19-1746-2_4

39. Holloway, L., Bear, C., & Wilkinson, K. (2014). Robotic milking technologies and renegotiating situated ethical relationships on UK dairy farms. Agriculture and Human Values, 31, 185–199. doi: 10.1007/s10460-013-9473-3

40. Hassoun, A., Garcia-Garcia, G., Trollman, H., Jagtap, S., Parra-López, C., Cropotova, J., & Aït-Kaddour, A. (2023). Birth of dairy 4.0: Opportunities and challenges in adoption of fourth industrial revolution technologies in the production of milk and its derivatives. Current Research in Food Science, 6, 100535. doi: 10.1016/j.crfs.2023.100535

41. Vlaicu, P. A., Gras, M. A., Untea, A. E., Lefter, N. A., & Rotar, M. C. (2024). Advancing livestock technology: Intelligent systemization for enhanced productivity, welfare, and sustainability. AgriEngineering, 6(2), 1479–1496. doi: 10.3390/agriengineering6020084

42. Kunz Cechinel, A., Soares, C. E., Pfleger, S. G., De Oliveira, L. L. G. A., Américo de Andrade, E., Damo Bertoli, C., De Rolt, C. R., De Pieri, E. R., Plentz, P. D. M., & Röning, J. (2024). Mobile robot + IoT: Project of sustainable technology for sanitizing broiler poultry litter. Sensors, 24(10), 3049. doi: 10.3390/s24103049

43. Vincent, D. R., Deepa, N., Elavarasan, D., Srinivasan, K., Chauhdary, S. H., & Iwendi, C. (2019). Sensors driven AI-based agriculture recommendation model for assessing land suitability. Sensors, 19(17), 3667. doi: 10.3390/s19173667

44. Wolfert, S., Ge, L., Verdouw, C., & Bogaardt, M.-J. (2017). Big Data in Smart Farming – A review. Agricultural Systems, 153, 69–80. doi: 10.1016/j.agsy.2017.01.023

45. Neethirajan, S. (2020). The role of sensors, big data and machine learning in modern animal farming. Sensors and Actuators B: Chemical, 304, 127423. doi: 10.1016/j.sbsr.2020.100367

46. Nasirahmadi, A., Edwards, S. A., & Sturm, B. (2017). Implementation of machine vision for detecting behaviour of cattle and pigs. Livestock Science, 202, 25–38. doi: 10.1016/j.livsci.2017.05.014

47. Porto, S. M. C., Arcidiacono, C., Anguzza, U., & Cascone, G. (2014). The automatic detection of dairy cow feeding and standing behaviours in free-stall barns by a computer vision-based technique. Biosystems Engineering, 123, 25–35. doi: 10.1016/j.biosystemseng.2015.02.012

48. Alameer, A., Buijs, S., O'Connell, N., Dalton, L., Larsen, M., Pedersen, L., & Kyriazakis, I. (2022). Automated detection and quantification of contact behaviour in pigs using deep learning. Biosystems Engineering, 224, 118–130. doi: 10.1016/j.biosystemseng.2022.10.002

49. Tullo, E., Finzi, A., & Guarino, M. (2019). Environmental impact of livestock farming and Precision Livestock Farming as a mitigation strategy. Science of The Total Environment, 650(2), 2751–2760. doi: 10.1016/j.scitotenv.2018.10.018

50. Lim, D. Y., Ryu, H.-D., Chung, E. G., Shin, D., & Lee, J. K. (2019). Sensitivity analysis of a regional nutrient budget model for two regions with intensive livestock farming in Korea. Sustainability, 11(13), 3676. doi: 10.3390/su11133676

51. Akhmedova, Z., Shodiev, Z., et al. (2024). Smart farm development for sustainable dairy farming in the Republic of Uzbekistan. E3S Web of Conferences, 78, 02023. doi: 10.1051/e3sconf/202454802023

52. Hayden, M. A., Barim, M. S., Weaver, D. L., Elliott, K. C., Flynn, M. A., & Lincoln, J. M. (2022). Occupational safety and health with technological developments in livestock farms: A literature review. International Journal of Environmental Research and Public Health, 19(24), 16440. doi: 10.3390/ijerph192416440

53. Ruban, S., & Danshyn, V. (2024). Feed efficiency of dairy cattle as genetic trait. The Animal Biology, 26(1), 3–17. doi: 10.15407/animbiol26.01.003

54. Delaby, L., Faverdin, P., Michel, G., Disenhaus, C., & Peyraud, J. (2009). Effect of different feeding strategies on lactation performance of Holstein and Normande dairy cows. Animal, 3(6), 891–905. doi: 10.1017/S1751731109004212

55. Wang, T., Xu, X., Wang, C., Li, Z., & Li, D. (2021). From smart farming towards unmanned farms: A new mode of agricultural production. Agriculture, 11(2), 145. doi: 10.3390/agriculture11020145

56. Sharma, S., Gahlawat, V. K., Rahul, K., Mor, R. S., & Malik, M. (2021). Sustainable innovations in the food industry through artificial intelligence and big data analytics. Logistics, 5(4), 66. doi: 10.3390/logistics5040066

57. Kaler, J., & Ruston, A. (2019). Technology adoption on farms: Using Normalization Process Theory to understand sheep farmers’ attitudes and behaviours in relation to using precision technology in flock management. Preventive Veterinary Medicine, 170, 104715. doi: 10.1016/j.prevetmed.2019.104715

58. Van Hertem, T., Rooijakkers, L., Berckmans, D., Fernández, A. P., Norton, T., & Guarino, M. (2018). Appropriate data visualisation is key to Precision Livestock Farming acceptance. Computers and Electronics in Agriculture, 153, 13–22. doi: 10.1016/j.compag.2017.04.003

59. Monteiro, A., Santos, S., & Gonçalves, P. (2021). Precision Agriculture for Crop and Livestock Farming—Brief Review. Animals, 11(8), 2345. doi: 10.3390/ani11082345

60. Vasdal, G., Marchewka, J., Newberry, R. C., Estevez, I., & Kittelsen, K. (2022). Developing a novel welfare assessment tool for loose-housed laying hens–the Aviary Transect method. Poultry Science, 101(1), 101533. doi: 10.1016/j.psj.2021.101533

61. Michel, V., Berk, J., Bozakova, N., van der Eijk, J., Estevez, I., Mircheva, T., Relic, R., Rodenburg, T. B., Sossidou, E. N., & Guinebretière, M. (2022). The relationships between damaging behaviours and health in laying hens. Animals, 12(8), 986. doi: 10.3390/ani12080986

62. Rutten, C. J., Velthuis, A. G. J., Steeneveld, W., & Hogeveen, H. (2013). Invited review: Sensors to support health management on dairy farms. Journal of Dairy Science, 96(4), 1928–1952. doi: 10.3168/jds.2012-6107

63. McManus, C., Bianchini, E., Paim, T. D. P., De Lima, F. G., Neto, J. B., Castanheira, M., Esteves, G. I. F., Cardoso, C. C., & Dalcin, V. C. (2015). Infrared thermography to evaluate heat tolerance in different genetic groups of lambs. Sensors, 15(7), 17258–17273. doi: 10.3390/s150717258

64. Shablia, V. P., & Tkachova, I. V. (2020). Machine and manual working actions for different manure removing technologies. Boletim de Indústria Animal, 77, e1482. doi: 10.17523/bia.2020.v77.e1482

65. Ibrahim, S., Al-Sharif, M., Younis, F., Ateya, A., Abdo, M., & Fericean, L. (2023). Analysis of potential genes and economic parameters associated with growth and heat t

66. Chung, Y., Oh, S., Lee, J., Park, D., Chang, H.-H., & Kim, S. (2013). Automatic detection and recognition of pig wasting diseases using sound data in audio surveillance systems. Sensors, 13(10), 12929–12942. doi: 10.3390/s131012929olerance in sheep (Ovis aries). Animals, 13(3), 353. doi: 10.3390/ani13030353

Завантаження

Опубліковано

2026-06-24

Номер

Розділ

Статті

Як цитувати

Роботизовані технології у тваринництві: сучасні системи та перспективи розвитку. (2026). Науковий журнал «Технічний сервіс агропромислового, лісового та транспортного комплексів», 28, 205-244. https://doi.org/10.31359/2311.441X.2026.28.205

Схожі статті

91-97 з 97

Ви також можете розпочати розширений пошук схожих статей для цієї статті.