Hu Tingting, Zhang Jinmen, Zhang Xinrui, Chen Yidan, Zhang Renlong, Guo Kaijun
College of Animal Science and Technology, Beijing University of Agriculture, Beijing 102206, China.
Department of Computer and Information Engineering, Beijing University of Agriculture, Beijing 102206, China.
Animals (Basel). 2023 Feb 23;13(5):804. doi: 10.3390/ani13050804.
In order to study the smart management of dairy farms, this study combined Internet of Things (IoT) technology and dairy farm daily management to form an intelligent dairy farm sensor network and set up a smart dairy farm system (SDFS), which could provide timely guidance for dairy production. To illustrate the concept and benefits of the SDFS, two application scenarios were sampled: (1) Nutritional grouping (NG): grouping cows according to the nutritional requirements by considering parities, days in lactation, dry matter intake (DMI), metabolic protein (MP), net energy of lactation (NEL), etc. By supplying feed corresponding to nutritional needs, milk production, methane and carbon dioxide emissions were compared with those of the original farm grouping (OG), which was grouped according to lactation stage. (2) Mastitis risk prediction: using the dairy herd improvement (DHI) data of the previous 4 lactation months of the dairy cows, logistic regression analysis was applied to predict dairy cows at risk of mastitis in successive months in order to make suitable measurements in advance. The results showed that compared with OG, NG significantly increased milk production and reduced methane and carbon dioxide emissions of dairy cows ( < 0.05). The predictive value of the mastitis risk assessment model was 0.773, with an accuracy of 89.91%, a specificity of 70.2%, and a sensitivity of 76.3%. By applying the intelligent dairy farm sensor network and establishing an SDFS, through intelligent analysis, full use of dairy farm data would be made to achieve higher milk production of dairy cows, lower greenhouse gas emissions, and predict in advance the occurrence of mastitis of dairy cows.
为研究奶牛场的智能化管理,本研究将物联网(IoT)技术与奶牛场日常管理相结合,构建了智能奶牛场传感器网络,并搭建了智能奶牛场系统(SDFS),可为奶牛生产提供及时指导。为阐述SDFS的概念和优势,选取了两个应用场景:(1)营养分组(NG):根据胎次、泌乳天数、干物质摄入量(DMI)、代谢蛋白(MP)、泌乳净能(NEL)等营养需求对奶牛进行分组。通过供应与营养需求相应的饲料,将牛奶产量、甲烷和二氧化碳排放量与原农场按泌乳阶段分组(OG)的情况进行比较。(2)乳腺炎风险预测:利用奶牛前4个泌乳月的奶牛群体改良(DHI)数据,应用逻辑回归分析预测连续数月有乳腺炎风险的奶牛,以便提前采取适当措施。结果表明,与OG相比,NG显著提高了奶牛的牛奶产量,降低了甲烷和二氧化碳排放量(<0.05)。乳腺炎风险评估模型的预测值为0.773,准确率为89.91%,特异性为70.2%,敏感性为76.3%。通过应用智能奶牛场传感器网络并建立SDFS,经智能分析,可充分利用奶牛场数据,实现奶牛更高的产奶量、更低的温室气体排放,并提前预测奶牛乳腺炎的发生。