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http://dx.doi.org/10.6109/jkiice.2021.25.5.628

Prediction Service of Wild Animal Intrusions to the Farm Field based on VAR Model  

Kadam, Ashwini L. (Department of Information & Communication Engineering, Changwon National University)
Hwang, Mintae (Department of Information & Communication Engineering, Changwon National University)
Abstract
This paper contains the implementation and performance evaluation results of a system that collects environmental data at the time when the wild animal intrusion occurred at farms and then predicts future wild animal intrusions through a machine learning-based Vector Autoregression(VAR) model. To collect the data for intrusion prediction, an IoT-based hardware prototype was developed, which was installed on a small farm located near the school and simulated over a long period to generate intrusion events. The intrusion prediction service based on the implemented VAR model provides the date and time when intrusion is likely to occur over the next 30 days. In addition, the proposed system includes the function of providing real-time notifications to the farmers mobile device when wild animals intrusion occurs in the farm, and performance evaluation was conducted to confirm that the average response time was 7.89 seconds.
Keywords
Wild animal; Intrusion prediction; Vector Autoregression(VAR) model; Mobile application; Smart farm;
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