文章摘要
规模化奶牛场泌乳牛粪便氮磷含量预测模型研究
Prediction of Fecal Nitrogen and Fecal Phosphorus Content for Lactating Dairy Cows in Large-scale Dairy Farms
投稿时间:2017-02-15  
DOI:10.13254/j.jare.2017.0038
中文关键词: 泌乳牛,粪氮,粪磷,日粮营养成分,预测模型
英文关键词: lactating dairy cows, fecal nitrogen, fecal phosphorus, dietary nutrient composition, prediction models
基金项目:天津市科技支撑计划(重点)项目(12ZCZDNC09600);中国农业科学院科技创新工程项目;农业科研杰出人才及其创新团队项目
作者单位E-mail
渠清博 农业部环境保护科研监测所, 天津 300191  
杨鹏 农业部环境保护科研监测所, 天津 300191  
翟中葳 农业部环境保护科研监测所, 天津 300191  
李爱秀 农业部环境保护科研监测所, 天津 300191  
张克强 农业部环境保护科研监测所, 天津 300191 kqzhang68@126.com 
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中文摘要:
      为了探讨基于泌乳牛日粮营养成分及其基本生产状况预测粪便氮磷含量的可行性,建立粪便总氮(fecal nitrogen,FN)、粪便总磷(fecal phosphorus,FP)含量的预测模型。本试验以中国荷斯坦奶牛为研究对象,选取天津市具有代表性的 7 家规模化奶牛场为采样点,利用问卷调查收集了 20 组泌乳期奶牛日粮营养成分及基本生产状况等基础数据,并采集了 60 份粪便样品,测定其氮磷含量。选取其中 14 组泌乳期奶牛日粮营养成分及基本生产状况等基础数据和 48 份泌乳牛粪便的氮磷含量,利用 SAS 统计分析软件,对其进行相关性分析和回归分析,建立预测模型。结果表明:日粮有机质摄入量(organic matter intake,OMI)和粗脂肪摄入量(crude fat intake,CFi)与泌乳牛粪便总氮含量有显著的正相关性,相关系数分别为 0.836 和 0.705。泌乳牛体重(body weight,BW)与粪便总磷含量呈负相关性,相关系数为-0.525。利用多元线性回归分析建立的预测模型的决定系数 R2 显著高于一元线性回归方程。其中基于泌乳牛产奶量(milk yield,MY),产奶天数(days in milk,DIM),日粮有机质摄入量 OMI 和氮摄入量(nitrogen intake,NI)建立的粪便总氮含量的预测模型的决定系数 R2 可达 0.96(P约0.001),预测方程为:y=0.43+0.29×MY+0.02×DIM+0.92×OMI-13.01×NI。粪便总磷含量的预测模型的决定系数 R2 相对低于总氮含量的预测模型,最高为 0.62(P约0.10),预测方程为:y=22.97-0.026×BW-4.02×NI+14.63×PI(phosphorus intake,PI)。最后利用 6 组泌乳牛日粮营养成分及其基本生产状况的基础数据和对应的 18 份粪便样品的氮磷含量对最优预测模型进行了外部验证。结果表明,粪便总氮含量和总磷含量的预测值与测定值间的相对误差分别为1.62%和 3.81%,预测标准差分别为 0.70 mg·g-1 和 0.68 mg·g-1,模型取得较理想的预测结果。
英文摘要:
      To facilitate efficient and sustainable manure management and reduce potential pollution, it's necessary for precise prediction of fecal nutrient content. The aim of this study is to build prediction models of fecal nitrogen and phosphorus content by the factors of dietary nutrient composition, days in milk, milk yield and body weight of Chinese Holstein lactating dairy cows. 20 kinds of dietary nutrient composition and 60 feces samples were collected from lactating dairy cows from 7 large-scale dairy farms in Tianjin City; The fecal nitrogen and phosphorus content were analyzed. The whole data set was divided into training data set and testing data set. The training data set, including 14 kinds of dietary nutrient composition and 48 feces samples, was used to develop prediction models. The relationship between fecal nitrogen or phosphorus content and dietary nutrient composition was illustrated by means of correlation and regression analysis using SAS software. The results showed that fecal nitrogen(FN) content was highly positively correlated with organic matter intake(OMI) and crude fat intake(CFi), and correlation coefficients were 0. 836 and 0. 705, respectively. Negative correlation coefficient was found between fecal phosphorus(FP) content and body weight(BW), and the correlation coefficient was -0.525. Among different approaches to develop prediction models, the results indicated that determination coefficients of multiple linear regression equations were higher than those of simple linear regression equations. Specially, fecal nitrogen content was excellently predicted by milk yield(MY), days in milk(DIM), organic matter intake(OMI) and nitrogen intake(NI), and the model was as follows:y=0.43+0.29×MY+0.02×DIM+0.92×OMI-13.01×NI (R2=0.96). Accordingly, the highest determination coefficient of prediction equation of FP content was 0.62, when body weight(BW), phosphorus intake(PI) and nitrogen intake(NI) were combined as predictors. The prediction equation was as follows:y=22.97-0.026×BW-4.02 ×NI+14.63 ×PI. Using the testing data set, including 6 kinds of dietary nutrient composition and 18 feces samples for the external validation, the relative error between predicted value and measured value of fecal nitrogen and fecal phosphorus content were 1.62% and 3.81%, respectively; the standard error of prediction were 0.70 mg·g-1 and 0.68 mg·g-1, respectively. The results indicated the equations had good accuracy for predicting fecal nitrogen and fecal phosphorus content.
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