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논문명(한글), 논문명(영문), 성과주관부서, 품목코드, 학술지명, 주저자, 연도, 성과적용일, 첨부파일, 내용으로 구성된 글 상세입니다.
논문명(한글) |
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논문명(영문) |
Case Study: Improving The Quality of Dairy Cow Reconstruction with A Deep Learning-based Framework |
성과주관부서 |
농촌진흥청 국립축산과학원 축산자원개발부 가축개량평가과 |
품목코드 |
동물 유전자원 / 가축 유전자원 / 대가축 |
학술지명 |
SENSORS |
주저자 |
당창권 |
성과년도 |
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성과적용일 |
2022년11월 |
Abstract: Live weight monitoring is an important step in Hanwoo (Korean cow) livestock farming.
Direct and indirect methods are two available approaches for measuring live weight of cows in
husbandry. Recently, thanks to the advances of sensor technology, data processing, and Machine
Learning algorithms, the indirect weight measurement has been become more popular. This study
was conducted to explore and evaluate the feasibility of machine learning algorithms in estimating
the body live weight of Hanwoo cow using ten body measurements as input features. Various
supervised Machine Learning algorithms, including Multilayer Perceptron, k-Nearest Neighbor,
Light Gradient Boosting Machine, TabNet, and FT-Transformer, are employed to develop the models
that estimate the body live weight using body measurement data. Data analysis is exploited to
explore the correlation between the body size measurements (the features) and the weights (target
values that need to be estimated) of cows. Data analysis results show that ten body measurements
have a high correlation with the body live weight. High performance of all applied Machine Learning
models was obtained. It can be concluded that estimating the body live weight of Hanwoo cow is
feasible by utilizing Machine Learning algorithms. Among all of the tested algorithms, LightGBM
regression demonstrates not only the best model in terms of performance, model complexity and
development time.