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利用粒子群优化算法识别某些豆科牧草的瘤胃发酵曲线

Identification of Ruminal Fermentation Curves of Some Legume Forages Using Particle Swarm Optimization.

作者信息

Palangi Valiollah

机构信息

Department of Animal Science, Faculty of Agriculture, Ege University, Bornova, Izmir 35100, Türkiye.

出版信息

Animals (Basel). 2023 Apr 13;13(8):1339. doi: 10.3390/ani13081339.

Abstract

The modeling process has a wide range of applications in animal nutrition. The purpose of this work is to determine whether particle swarm optimization (PSO) could be used to explain the fermentation curves of some legume forages. The model suited the fermentation data with minor statistical differences (R > 0.98). In addition, reducing the number of iterations enhanced this method's benefits. Only Models I and II could successfully fit the fermentability data (R > 0.98) in the vetch and white clover fermentation curve because the negative parameters (calculated in Models III and IV) were not biologically acceptable. Model IV could only fit the alfalfa fermentation curve, which had higher R values and demonstrated the model's dependability. In conclusion, it is advised to use PSO to match the fermentation curves. By examining the fermentation curves of feed materials, animal nutritionists can obtain a broader view of what ruminants require in terms of nutrition.

摘要

建模过程在动物营养领域有着广泛的应用。这项工作的目的是确定粒子群优化算法(PSO)是否可用于解释某些豆科牧草的发酵曲线。该模型与发酵数据拟合良好,统计差异较小(R>0.98)。此外,减少迭代次数增强了该方法的优势。只有模型I和模型II能够成功拟合巢菜和白三叶草发酵曲线中的发酵能力数据(R>0.98),因为模型III和模型IV中计算出的负参数在生物学上不可接受。模型IV只能拟合苜蓿发酵曲线,其R值更高,证明了该模型的可靠性。总之,建议使用粒子群优化算法来匹配发酵曲线。通过研究饲料原料的发酵曲线,动物营养学家可以更全面地了解反刍动物在营养方面的需求。

https://cdn.ncbi.nlm.nih.gov/pmc/blobs/072f/10135319/f827b7a94e07/animals-13-01339-g001.jpg

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