简要回顾当前在乳制品行业应用机器学习算法的局限性和挑战

Q3 Engineering
Lucia Trapanese, Miel Hostens, Angela Salzano, Nicola Pasquino
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引用次数: 1

摘要

近年来,畜牧业正朝着更加可持续的畜牧业方向发展,在满足高质量食品需求的同时,减轻畜牧业对环境的影响。为了实现这些目标,农场正在使用更多的技术方法,采用算法来处理来自传感器和日常操作的大量数据。其结果将有助于做出更客观的决策。在这种情况下,机器学习(人工智能的一个分支,应用于研究预测、推理和聚类算法)就可以成功应用。如今,机器学习算法已成功用于解决畜牧业的许多问题,如早期疾病检测,预计未来还将用于福利监测。这篇简短的综述概述了当前乳业科学中最流行的应用技术以及最广泛使用和表现最佳的算法,并强调了这些技术在乳业中被广泛接受所面临的挑战和障碍。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Short review of current limits and challenges of application of machine learning algorithms in the dairy sector
In the last years, the livestock sector is moving towards a more sustainable animal-based industry, mitigating the environmental impact of livestock while meeting the demand for high-quality food. To achieve these goals, farms are using a more technological approach, adopting algorithms to manipulate the vast amount of data from sensors and routine operations. The results will be useful for making more objective decisions. In this context, machine learning - a branch of Artificial Intelligence applied to the study of prediction, inference, and clustering algorithms - can be successfully employed. Nowadays, machine learning algorithms are successfully used to solve many issues in the livestock sector, such as early disease detection, and they are expected to be employed in the future for welfare monitoring. This brief review gives an overview of the current state of the art of the most popular applications for dairy science and the most widely used and best-performing algorithms, highlighting the challenges and obstacles for broad acceptance of these techniques in the dairy sector.
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来源期刊
Acta IMEKO
Acta IMEKO Engineering-Mechanical Engineering
CiteScore
2.50
自引率
0.00%
发文量
75
期刊介绍: The main goal of this journal is the enhancement of academic activities of IMEKO and a wider dissemination of scientific output from IMEKO TC events. High-quality papers presented at IMEKO conferences, workshops or congresses are seleted by the event organizers and the authors are invited to publish an enhanced version of their paper in this journal. The journal also publishes scientific articles on measurement and instrumentation not related to an IMEKO event.
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