牲畜监测设备和机器学习算法在动物生产和繁殖中的应用:概述。

IF 1.6 4区 农林科学 Q2 AGRICULTURE, DAIRY & ANIMAL SCIENCE Animal Reproduction Pub Date : 2023-01-01 DOI:10.1590/1984-3143-AR2023-0077
Paula de Freitas Curti, Alana Selli, Diógenes Lodi Pinto, Alexandre Merlos-Ruiz, Julio Cesar de Carvalho Balieiro, Ricardo Vieira Ventura
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引用次数: 0

摘要

由于诸如精密畜牧业(PLF)等研究领域的发展,动物生产和繁殖的一些部门已经显示出巨大的技术进步。PLF是一种创新的方法,通过采用尖端技术,将传感器与先进算法相结合,不断收集实时数据,为农民提供决策工具,从而实现对动物的监测。人工智能(AI)是一个将计算机科学和大型数据集结合在一起的领域,旨在创建能够产生类似于人类智能的预测和分类的专家系统。简单地说,机器学习(ML)是人工智能的一个分支,可以被认为是一个更广泛的领域,包括深度学习(DL,至少由三层组成的神经网络),分别生成由AI, ML和DL组成的子集层次结构。ML和DL都为分析数据提供了创新的方法,特别是对牲畜相关活动中常见的大型数据集有益。这些方法能够提取有价值的见解,以解决与行为、健康、生殖、生产和环境有关的问题,促进知情决策。为了创造所提及的技术,研究通常要经历涉及数据处理的五个步骤:获取、传输、存储、分析和交付结果。虽然数据收集和分析步骤通常由科学界彻底报告,但要获得良好和可信的结果,每个步骤的良好执行是必不可少的,这影响了在现实生活中实际情况下所提出的技术的接受程度。在此背景下,本研究旨在概述当前ML/DL在牲畜繁殖和生产中的实施情况,并确定上述五个步骤中每个步骤的潜在挑战和关键点,这些挑战和关键点可能会影响农民在实际情况下对AI技术的结果和应用。
本文章由计算机程序翻译,如有差异,请以英文原文为准。

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Applications of livestock monitoring devices and machine learning algorithms in animal production and reproduction: an overview.

Some sectors of animal production and reproduction have shown great technological advances due to the development of research areas such as Precision Livestock Farming (PLF). PLF is an innovative approach that allows animals to be monitored, through the adoption of cutting-edge technologies that continuously collect real-time data by combining the use of sensors with advanced algorithms to provide decision tools for farmers. Artificial Intelligence (AI) is a field that merges computer science and large datasets to create expert systems that are able to generate predictions and classifications similarly to human intelligence. In a simplified manner, Machine Learning (ML) is a branch of AI, and can be considered as a broader field that encompasses Deep Learning (DL, a Neural Network formed by at least three layers), generating a hierarchy of subsets formed by AI, ML and DL, respectively. Both ML and DL provide innovative methods for analyzing data, especially beneficial for large datasets commonly found in livestock-related activities. These approaches enable the extraction of valuable insights to address issues related to behavior, health, reproduction, production, and the environment, facilitating informed decision-making. In order to create the referred technologies, studies generally go through five steps involving data processing: acquisition, transferring, storage, analysis and delivery of results. Although the data collection and analysis steps are usually thoroughly reported by the scientific community, a good execution of each step is essential to achieve good and credible results, which impacts the degree of acceptance of the proposed technologies in real life practical circumstances. In this context, the present work aims to describe an overview of the current implementations of ML/DL in livestock reproduction and production, as well to identify potential challenges and critical points in each of the five steps mentioned, which can affect results and application of AI techniques by farmers in practical situations.

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来源期刊
Animal Reproduction
Animal Reproduction AGRICULTURE, DAIRY & ANIMAL SCIENCE-
CiteScore
2.30
自引率
11.80%
发文量
49
审稿时长
70 days
期刊介绍: Animal Reproduction (AR) publishes original scientific papers and invited literature reviews, in the form of Basic Research, Biotechnology, Applied Research and Review Articles, with the goal of contributing to a better understanding of phenomena related to animal reproduction. The scope of the journal applies to students, researchers and practitioners in the fields of veterinary, biology and animal science, also being of interest to practitioners of human medicine. Animal Reproduction Journal is the official organ of the Brazilian College of Animal Reproduction in Brazil.
期刊最新文献
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