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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) |
Development of Volatile Fatty Acid and Methane Production Prediction Model Using Ruminant Nutrition Comparison of Algorithms |
성과주관부서 |
국립축산과학원 한우연구소 |
품목코드 |
|
학술지명 |
Fermentation-Basel |
주저자 |
박명선 |
성과년도 |
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성과적용일 |
2024년08월 |
Abstract: (1) Background: This study explores the correlation between volatile fatty acid (VFA)
concentrations and methanogenesis in ruminants, focusing on how the nutritional composition of
their diets affects these processes. (2) Methods: We developed predictive models using multiple
linear regression, artificial neural networks, and k-nearest neighbor algorithms. The models are based
on data extracted from 31 research papers and 16 ruminal in vitro fermentation tests to predict VFA
concentrations from nutrient intake. Methane production estimates were derived by converting and
clustering these predicted VFA values into molar ratios. (3) Results: This study found that acetate
concentrations correlate significantly with neutral detergent fiber intake. Conversely, propionate and
butyrate concentrations are highly dependent on dry matter intake. There was a notable correlation
between methane production and the concentrations of acetate and butyrate. Increases in neutral
detergent fiber intake were associated with higher levels of acetate, butyrate, and methane production.
Among the three methods, the k-nearest neighbor algorithm performed best in terms of statistical
fitting. (4) Conclusions: It is vital to determine the optimal intake levels of neutral detergent fiber
to minimize methane emissions and reduce energy loss in ruminants. The predictive accuracy
of VFA and methane models can be enhanced through experimental data collected from diverse
environmental conditions, which will aid in determining optimal VFA and methane levels