Department of Process, Energy and Transport Engineering, Munster Technological University, T12 P928 Cork, Ireland.
Sensors (Basel). 2021 Dec 22;22(1):52. doi: 10.3390/s22010052.
Machine learning applications are becoming more ubiquitous in dairy farming decision support applications in areas such as feeding, animal husbandry, healthcare, animal behavior, milking and resource management. Thus, the objective of this mapping study was to collate and assess studies published in journals and conference proceedings between 1999 and 2021, which applied machine learning algorithms to dairy farming-related problems to identify trends in the geographical origins of data, as well as the algorithms, features and evaluation metrics and methods used. This mapping study was carried out in line with PRISMA guidelines, with six pre-defined research questions (RQ) and a broad and unbiased search strategy that explored five databases. In total, 129 publications passed the pre-defined selection criteria, from which relevant data required to answer each RQ were extracted and analyzed. This study found that Europe (43% of studies) produced the largest number of publications (RQ1), while the largest number of articles were published in the Computers and Electronics in Agriculture journal (21%) (RQ2). The largest number of studies addressed problems related to the physiology and health of dairy cows (32%) (RQ3), while the most frequently employed feature data were derived from sensors (48%) (RQ4). The largest number of studies employed tree-based algorithms (54%) (RQ5), while RMSE (56%) (regression) and accuracy (77%) (classification) were the most frequently employed metrics used, and hold-out cross-validation (39%) was the most frequently employed evaluation method (RQ6). Since 2018, there has been more than a sevenfold increase in the number of studies that focused on the physiology and health of dairy cows, compared to almost a threefold increase in the overall number of publications, suggesting an increased focus on this subdomain. In addition, a fivefold increase in the number of publications that employed neural network algorithms was identified since 2018, in comparison to a threefold increase in the use of both tree-based algorithms and statistical regression algorithms, suggesting an increasing utilization of neural network-based algorithms.
机器学习应用在奶牛养殖决策支持领域(如喂养、畜牧、医疗保健、动物行为、挤奶和资源管理)的应用越来越普遍。因此,本映射研究的目的是整理和评估 1999 年至 2021 年期间发表在期刊和会议论文集中的应用机器学习算法解决与奶牛养殖相关问题的研究,以确定数据地理来源的趋势,以及所使用的算法、特征、评价指标和方法。这项映射研究是根据 PRISMA 指南进行的,有六个预先确定的研究问题(RQ)和一个广泛而无偏见的搜索策略,探索了五个数据库。共有 129 篇出版物通过了预先确定的选择标准,从中提取并分析了回答每个 RQ 所需的相关数据。本研究发现,欧洲(43%的研究)发表的出版物数量最多(RQ1),而发表文章数量最多的期刊是《计算机与农业电子学》(21%)(RQ2)。研究最多的是与奶牛生理学和健康相关的问题(32%)(RQ3),而最常使用的特征数据来自传感器(48%)(RQ4)。最常使用的算法是基于树的算法(54%)(RQ5),而 RMSE(56%)(回归)和准确性(77%)(分类)是最常使用的指标,留一交叉验证(39%)是最常使用的评估方法(RQ6)。自 2018 年以来,专注于奶牛生理学和健康问题的研究数量增加了七倍以上,而出版物总数增加了两倍多,这表明人们越来越关注这个子领域。此外,自 2018 年以来,使用神经网络算法的出版物数量增加了五倍,而基于树的算法和统计回归算法的使用量增加了两倍,这表明越来越多的人使用基于神经网络的算法。