Development of Volatile Fatty Acid and Methane Production Prediction Model Using Ruminant Nutrition Comparison of Algorithms

Myungsun Park, Sangbuem Cho, Eunjeong Jeon, Nag-Jin Choi
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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.
利用反刍动物营养开发挥发性脂肪酸和甲烷产量预测模型的算法比较
(1) 背景:本研究探讨了反刍动物体内挥发性脂肪酸(VFA)浓度与甲烷生成之间的相关性,重点是反刍动物日粮的营养成分如何影响这些过程。(2) 方法:我们利用多元线性回归、人工神经网络和 k 近邻算法建立了预测模型。这些模型基于从 31 篇研究论文和 16 个瘤胃体外发酵试验中提取的数据,通过营养摄入量预测 VFA 浓度。通过将这些预测的 VFA 值转换和聚类为摩尔比,得出甲烷产量估计值。(3) 结果:这项研究发现,乙酸盐浓度与中性洗涤纤维摄入量密切相关。相反,丙酸盐和丁酸盐浓度与干物质摄入量密切相关。甲烷产量与乙酸盐和丁酸盐浓度之间存在明显的相关性。中性洗涤纤维摄入量的增加与醋酸盐、丁酸盐和甲烷产量的增加有关。在三种方法中,k 近邻算法的统计拟合效果最好。(4) 结论:确定中性洗涤纤维的最佳摄入量对反刍动物减少甲烷排放和能量损失至关重要。可以通过从不同环境条件下收集的实验数据来提高 VFA 和甲烷模型的预测准确性,这将有助于确定最佳 VFA 和甲烷水平。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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