Dineva Kristina, Atanasova Tatiana
Institute of Information and Communication Technologies, Bulgarian Academy of Sciences, Acad. G. Bonchev Str., Bl. 2, 1113 Sofia, Bulgaria.
Animals (Basel). 2023 Oct 18;13(20):3254. doi: 10.3390/ani13203254.
The health and welfare of livestock are significant for ensuring the sustainability and profitability of the agricultural industry. Addressing efficient ways to monitor and report the health status of individual cows is critical to prevent outbreaks and maintain herd productivity. The purpose of the study is to develop a machine learning (ML) model to classify the health status of milk cows into three categories. In this research, data are collected from existing non-invasive IoT devices and tools in a dairy farm, monitoring the micro- and macroenvironment of the cow in combination with particular information on age, days in milk, lactation, and more. A workflow of various data-processing methods is systematized and presented to create a complete, efficient, and reusable roadmap for data processing, modeling, and real-world integration. Following the proposed workflow, the data were treated, and five different ML algorithms were trained and tested to select the most descriptive one to monitor the health status of individual cows. The highest result for health status assessment is obtained by random forest classifier (RFC) with an accuracy of 0.959, recall of 0.954, and precision of 0.97. To increase the security, speed, and reliability of the work process, a cloud architecture of services is presented to integrate the trained model as an additional functionality in the Amazon Web Services (AWS) environment. The classification results of the ML model are visualized in a newly created interface in the client application.
牲畜的健康和福利对于确保农业产业的可持续性和盈利能力至关重要。探索监测和报告个体奶牛健康状况的有效方法对于预防疫情爆发和维持牛群生产力至关重要。本研究的目的是开发一种机器学习(ML)模型,将奶牛的健康状况分为三类。在这项研究中,数据来自奶牛场现有的非侵入式物联网设备和工具,结合奶牛的年龄、产奶天数、泌乳情况等特定信息,监测奶牛的微观和宏观环境。系统化地展示了各种数据处理方法的工作流程,以创建一个完整、高效且可重复使用的数据处理、建模和实际应用集成路线图。按照提议的工作流程对数据进行处理,训练并测试了五种不同的ML算法,以选择最具描述性的算法来监测个体奶牛的健康状况。随机森林分类器(RFC)在健康状况评估中取得了最高结果,准确率为0.959,召回率为0.954,精确率为0.97。为了提高工作流程的安全性、速度和可靠性,提出了一种云服务架构,将训练好的模型作为一项附加功能集成到亚马逊网络服务(AWS)环境中。ML模型的分类结果在客户端应用程序中新创建的界面中可视化。