Exploring machine learning techniques for symptom-based detection of livestock diseases
Abstract
Effective livestock monitoring ensures food security and sustainability in our rapidly
growing world. However, proper cattle disease is still not taken seriously in our
country. Even in the livestock industry, it has not become important yet. Very
few livestock farms in Bangladesh collect data on their cattle, so gaining enough
data is very tough. Most farm owners are not interested in collecting data; they
fear the cost of IoT-based digital farms. Cost is a major concern for small farms as
well. The proposed research aims to analyse the application of ML models in this
specific sector of livestock management which is disease detection, by analysing various
symptoms. Traditionally, Bangladeshi farms provide initial treatment to cattle
based on symptoms. Most veterinary doctors in the village used these techniques as
a tool for disease detection. We have worked with a dataset of about 43800 instances
where almost 28 symptoms were used to detect a disease accurately. Advanced machine
learning models such as Neural Network, Gradient boosting classifier, Decision
tree classifier, Random forest, XGBoost, KNN etc. were used to determine possible
diseases based on the collected symptoms. Overall, this research seeks to provide
valuable insights and proper mitigation techniques into the livestock industry by
analysing the impact of disease, as this will reduce mortality rates, fulfil the market
demand for protein, and bring benefits to the dairy industry.