Transforming animal tracking frameworks using wireless sensors and machine learning algorithms

Kingsley Anyaso 1, * Oluwatosin Peters 2 and Solomon Akinboro 2

1 Saint Louis University, Information Systems, School of Professional Studies, Saint Louis, Missouri, United States.
2 Department of Computer Science, School of Post Graduate Studies, University of Lagos, Yaba, Lagos, Nigeria.
 
Research Article
World Journal of Advanced Research and Reviews, 2024, 24(01), 996–1008
Article DOI: 10.30574/wjarr.2024.24.1.3111
 
Publication history: 
Received on 31 August 2024; revised on 06 October 2024; accepted on 09 October 2024
 
Abstract: 
Conventional animal tracking systems such as physical human observation, animal ear tagging or notching raises serious concerns over the observation and animal handling techniques that may sometimes cause stress and disruptions to animal ecology. Wireless sensor networks on the other hand hold real promise for animal tracking due to their accuracy, scalability, and ethical consideration frameworks involved. To test machine learning algorithms in a wireless sensor framework, a simulation was carried out to illustrate the behavior of a Wireless sensor network to draw conclusions. Advanced data algorithms and Python features was adopted to emulate the behavior of a wireless sensor network from cattle datasets sourced from the repository of Ireland’s government Department of Agriculture, Food and Marine which contains 3,503 records of cattle in various areas in Europe. The capacities of different algorithms for location estimation and assessment of performance were also analyzed and the results demonstrates great potentials of a WSN for efficiency in farm monitoring, where parameters such as location and sensor accuracy can be monitored in real time.
 
Keywords: 
Animal tracking; Wireless sensor networks (WSNs); Machine learning; Sensor; Cattle; Algorithms
 
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