Development of a performance model for classifying broiler farms

IF 0.3 Q4 AGRICULTURE, DAIRY & ANIMAL SCIENCE
E. Franco, I. de Alencar Nääs
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引用次数: 0

Abstract

Broiler meat is the second world's most consumed meat, and the increase in consumption by 2027 is forecasted to be near 35 kg/capita/year. Brazil ranks third in broiler production globally and is the world's largest exporter of chicken meat. To reach proper rearing conditions, broiler farms need to meet good practices of husbandry and welfare. The present study aimed to develop a performance classification model using data mining to evaluate broiler farmers based on detailed flock housing and performance information. The input dataset from 49 broiler farms from a cooperative in Northeastern Brazil was organized with details on the housing characteristics, rearing environment, management, and performance data from flocks. We also added the cooperative technical classification retrieved from the housing conditions and the production index. The input classification had weights attributed to each housing feature. The output variable (target) was defined as the performance classification (PC) index. The dataset was processed using Rapidminer® software using 80% of training and 20% for implementing the random forest algorithm. The prominent variables in classifying the performance were the feed conversion, the daily weight gain, the productivity index, and the cooperative classification criteria. The developed model pointed out a way to auto-classify farms and allow the cooperative to evaluate the farmers' production based on the broiler production and management practices. It was possible to create 'If-Then' rules that enable appropriate decisionmaking by broiler farmers to comply with good practices' norms.
肉鸡养殖场分类性能模型的建立
肉鸡肉是世界上消费量第二大的肉类,预计到2027年的消费量增长将接近35公斤/人/年。巴西的肉鸡产量在全球排名第三,是世界上最大的鸡肉出口国。为了达到适当的饲养条件,肉鸡养殖场需要满足良好的饲养和福利规范。本研究旨在基于详细的鸡舍和性能信息,建立一种基于数据挖掘的肉鸡养殖户性能分类模型。输入数据集来自巴西东北部一家合作社的49个肉鸡养殖场,其中包含鸡舍特征、饲养环境、管理和鸡群性能数据的详细信息。我们还增加了从住房条件和生产指数中检索的合作技术分类。输入分类具有赋予每个房屋特征的权重。将输出变量(目标)定义为性能分类(PC)指标。使用Rapidminer®软件处理数据集,其中80%用于训练,20%用于实现随机森林算法。饲料系数、日增重、生产力指数和合作分类标准是影响性能分类的主要变量。该模型提出了一种基于肉鸡生产管理实践的农场自动分类方法,并允许合作社对农民的生产进行评估。有可能创建“如果-那么”规则,使肉鸡养殖户能够做出符合良好做法规范的适当决策。
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来源期刊
Journal of the Indonesian Tropical Animal Agriculture
Journal of the Indonesian Tropical Animal Agriculture AGRICULTURE, DAIRY & ANIMAL SCIENCE-
CiteScore
1.10
自引率
0.00%
发文量
5
审稿时长
8 weeks
期刊介绍: Journal of the Indonesian Tropical Animal Agriculture (JITAA) is a double blind peer-reviewed publication devoted to disseminate all information contributing to the understanding and development of animal agriculture in the tropics by publication of original research papers. The journal covers all aspect relating to Animal Agriculture, including: -Animal breeding and genetics -Animal feeding and nutrition -Animal reproduction -Animal biotechnology -Animal physiology -Animal production and technology -Animal products technology -Animal management and economics -Animal products processing and animal by-products -Animal microbiology -Livestock farming systems -Other related topics in relation to animal science. The topics of research are not only on Indonesian tropical animal agriculture, but also on other tropical regions of the world.
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