基于深度学习的埃及水牛生产性能预测模型

IF 2.8 2区 农林科学 Q3 FOOD SCIENCE & TECHNOLOGY
Mohamed Abdelrahman, Sali Issa, Ahmed A. Ayad, Fatimah A. Al-Saeed, Min Gao, Montaser Elsayed Ali
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引用次数: 0

摘要

在智能畜牧业中,机器学习(ML)在提高精度、效率和生产力方面显示出了巨大的潜力。目的:利用智能产量预测模型,提高奶牛的管理效率。方法采用深度神经网络(Deep neural networks, DNN),根据8种不同的记录(协议类型、父系类型、妊娠期、泌乳期、产犊间隔、分娩季节、开放日和干期)作为输入,分别预测犊牛性别、体重、泌乳期、总乳量和日产奶量(DMI)。另外两种传统的机器学习模型,前馈神经网络(fnn)和集成学习(EL),也被构建用于性能比较。结果表明:DNN、FNN和EL对犊牛性别的准确率分别为86.83%和53.4%;占总牛奶的78%,70%和79%;收率分别为78、68和58.9%;DMY分别为82%、70%和71.2%。本模型整合了育种、繁殖和生产数据,引入了水牛生产管理的有效模型。
本文章由计算机程序翻译,如有差异,请以英文原文为准。

Production performance predicting model for the Egyptian dairy buffalo using deep learning

Production performance predicting model for the Egyptian dairy buffalo using deep learning

Background

In smart livestock farming, machine learning (ML) has shown promising potential for enhancing precision, efficiency and productivity.

Aim(s)

This study aimed to use a smart production prediction model that can improve the management efficiency of dairy buffalo.

Methods

Deep neural networks (DNN) were applied depending on eight different recordings (protocol type, sire type, gestation length, lactation length, calving interval, parturition season, open days and dry period) as inputs to predict the calf sex, weight, lactation length, total milk and daily milk yield (DMI), respectively. Two additional traditional ML models, feedforward neural networks (FNNs) and ensemble learning (EL), were also constructed for performance comparison.

Major Findings

The results showed that DNN, FNN and EL testing accuracy for the calf sex were 86, 83 and 53.4% for lactation length; 78, 70 and 79% for total milk; yield was 78, 68 and 58.9%; and for DMY, it was 82, 70 and 71.2%, respectively.

Scientific or Industrial Implications

The present model integrates breeding, reproduction and production data to introduce an efficient model for managing buffalo production.

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来源期刊
International Journal of Dairy Technology
International Journal of Dairy Technology 工程技术-食品科技
CiteScore
7.00
自引率
4.50%
发文量
76
审稿时长
12 months
期刊介绍: The International Journal of Dairy Technology ranks highly among the leading dairy journals published worldwide, and is the flagship of the Society. As indicated in its title, the journal is international in scope. Published quarterly, International Journal of Dairy Technology contains original papers and review articles covering topics that are at the interface between fundamental dairy research and the practical technological challenges facing the modern dairy industry worldwide. Topics addressed span the full range of dairy technologies, the production of diverse dairy products across the world and the development of dairy ingredients for food applications.
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