Monitoring cattle farms using Cloud Computing-based Internet of Things (IOT) tools using Artificial Intelligence Methods
DOI:
https://doi.org/10.47709/brilliance.v4i1.3736Keywords:
Cattle Farming, Artificial Intelligence Systems, Internet Of Things, Cloud ComputingAbstract
Cows are animals valuable commodity and it one of the economic supports for people in animal husbandry and agriculture, cows it selves able to used for meat, there are currently many cattle farms in Indonesia and spread across several regions, the cattle breeding or livestock proses Currently including in two types, farming in cages and farming outside cages, the cows themselves can easily be infected by diseases which spread quickly to other cows, large numbers of cows diasble to monitor because of the limited equipment and number of farmers, the number of cages is flat being far from settlement areas will make the selection process difficult and disable simultaneously. To handle this problem, it can be deal with using sensor devices that are configured with IoT devices. These devices easily monitored health and room temperature which can be used for 24 hours, the results of the data from the temperature sensor are displayed information that represent like dashboard and displays the cow's temperature data in graphical view. The system sets a temperature range of 38.6 - 38.9. If above this temperature the cow is in distemper condition and needs to be quarantined and won’t spread to another cow. This system provide information and make it easier for farmers to supervise their livestock.
References
Alexander Kappes, Takesure Tozooneyi , Golam Shakil, Ashley F. Railey, K. Marie Mcintyre, Dianne E. Mayberry ,Jonathan Rushton , Dustin L. Pendell And Thomas L. Marsh . (2023). Livestock Health And Disease Economics: A Scoping Review Of Selected Literature. Frontiers In Veterinary Science.
Babatunde O. Alao, Andrew B. Falowo , Amanda Chulayo, Voster Muchenje . (2017). The Potential Of Animal By-Products In Food Systems: Production, Prospects And Challenges. Mdpi.
Benneth Chukwuemeka Uzoma, Isokpehi Bonaventure Okhuoya . (2022). A Research On Cloud Computing. Research Gate.
Cassius E. O. Coombs, Brendan E. Allman, Edward J. Morton, Marina Gimeno, Garth Tarr, Lucianoa.González. (2022). Differentiation Of Livestock Internal Organs Using Visible . Mdpi.
Elsa Lamy, Sofia Van Harten, Elvira Sales-Baptista, Maria Manuela Mendes Guerra And André Martinho De Almeida. (2012). Factors Influencing Livestock Productivity. Research Gate.
Gesa Busch, Elisa Bayer, Achim Spiller, Sarah Ku¨ Hl. (2022). Factory Farming Public Perceptions Of Farm Sizes And Sustainability In Animal. Plos Sustainability And Transformation.
I Gusti Ayu Putu Mahendri, Ratna Ayu Saptati. (2023). The Coverage Rate Of Superior Native Chicken Vaccination And Factors Determining Farmers' Decision In The Vaccination Program. Jurnal Ilmu-Ilmu Peternakan, 136-151.
I. Dittrich, M. Gertz, J. Krieter. (2019). Alterations In Sick Dairy Cows’ Daily Behavioural Patterns. Elsevier.
Muhammadosamaakbar, Muhammad Saad Shahbazkhan, Muhammadjamshaidali , Azfar Hussain, Ghazia Qaiser, Maruf Pasha. (2020). Iot For Development Of Smart Dairy Farming. Wiley Hindawi.
Ngetich W. (2019). Review Of Anthrax: A Disease Of Animals And Humans. Intj Agric Environ Biores.
Nilo M. Arago, Chris, Alvarez, Angelita G. Mabale, Charl G. Legista, Nicole E. Repiso, Timothy M. Amado, Romeo Jr. L. Jorda, August C. Thio-Ac, Lean Karlo S. Tolentino, Jessica S. Velasco . (2022). Smart Dairy Cattle Farming And In-Heat Detection Through The Internet. International Journal Of Integrated Engineering, 157-172.
Downloads
Published
How to Cite
Issue
Section
License
Copyright (c) 2024 Ria Sri Rahayu, Ari Purno Wahyu Wibowo

This work is licensed under a Creative Commons Attribution-NonCommercial 4.0 International License.