利用机器学习算法预测水貂的生长和饲料效率。

IF 4.2 2区 农林科学 Q1 AGRICULTURE, DAIRY & ANIMAL SCIENCE Animal Pub Date : 2025-02-01 Epub Date: 2024-09-16 DOI:10.1016/j.animal.2024.101330
A. Shirzadifar , G. Manafiazar , P. Davoudi , D. Do , G. Hu , Y. Miar
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引用次数: 0

摘要

饲料效率(FE)表示单位体重增重所需的饲料量。饲料成本是水貂行业的主要投入成本,饲料成本评价是水貂行业竞争力的关键环节。然而,由于定期测量体重和日采食量的成本较高,饲料质量测量尚未广泛应用于水貂。测量个体日采食量和体重对动物和水貂养殖者来说既耗时又费力,而且压力很大。本研究的主要目的是:(1)评估机器学习(ML)算法在整个生长期(8月1日至11月14日15周)预测平均日增重(ADG)、饲料系数(FCR)和剩余采食量(RFI)值方面的应用,使用性别、色型、年龄、体重和体长等成本较低的特征;(2)寻找生长期和生育期对ADG、FCR和RFI贡献最大的特征。在8月1日至11月14日每3周测量一次水貂的年龄、体重和体长(P1-P5),记录1 088只水貂的颜色和性别特征。然后使用从P1到P5的观察和测量特征的多种组合,通过选择的ML算法预测ADG、FCR和RFI。通过将计算的ADG、FCR和RFI值与预测值进行比较,确定最准确的特征组合是包括8月1日(P1开始时)的性别、肤色、年龄、体重、体长等所有特征。在选择的ML算法中,极端梯度增强(XGB)算法对ADG (R2 = 0.71, RMSE = 0.10)、FCR (R2 = 0.74, RMSE = 0.14)和RFI (R2 = 0.76, RMSE = 0.10)的预测最准确可靠。XGB算法可以在不测量昂贵的日采食量的情况下准确预测ADG、FCR和RFI值。此外,性别被认为是预测ADG、FCR和RFI值的最重要特征,重要性得分分别为0.85、0.67和0.79。
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Prediction of growth and feed efficiency in mink using machine learning algorithms
The feed efficiency (FE) expresses as the amount of feed required per unit of BW gain. Since feed cost is the major input cost in the mink industry, evaluating of FE is a crucial step for competitiveness of the mink industry. However, the FE measures have not been widely adopted for the mink due to the high cost of periodically measuring BW and daily feed intake. Measuring individual daily feed intake and BW is time-consuming, labor-intensive, and stressful for the animals and mink producers. The main objectives of this study were to (1) evaluate the application of machine learning (ML) algorithms to predict the average daily gain (ADG), feed conversion ratio (FCR), and residual feed intake (RFI) values during the whole growing and furring period (15 weeks from August 1st to November 14th) using less expensive features such as sex, color type, age, BW and length; (2) find the most significant contributing feature within the growth and furring period to predict the ADG, FCR and RFI. The color and sex features were recorded on 1 088 mink and mink’s age, BW and length were measured every 3 weeks from August 1st to November 14th which is called P1–P5. The ADG, FCR, and RFI were then predicted by the selected ML algorithms using multiple combinations of the observed and measured features from P1 to P5. By comparing the calculated ADG, FCR, and RFI values with the predicted values, it was determined that the most accurate combination of features was to include all features such as sex, color, age, BW and body length on August 1st (at the beginning of the P1). Among selected ML algorithms, the extreme gradient boosting (XGB) algorithm provided the most accurate and reliable prediction for the ADG (R2 = 0.71, RMSE = 0.10), FCR (R2 = 0.74, RMSE = 0.14), and RFI (R2 = 0.76, RMSE = 0.10). The XGB algorithm can be an accurate algorithm to predict the ADG, FCR, and RFI values without measuring costly daily feed intake. In addition, sex was identified as the most significant feature to predict the ADG, FCR, and RFI values with the importance scores of 0.85, 0.67, and 0.79, respectively.
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来源期刊
Animal
Animal 农林科学-奶制品与动物科学
CiteScore
7.50
自引率
2.80%
发文量
246
审稿时长
3 months
期刊介绍: Editorial board animal attracts the best research in animal biology and animal systems from across the spectrum of the agricultural, biomedical, and environmental sciences. It is the central element in an exciting collaboration between the British Society of Animal Science (BSAS), Institut National de la Recherche Agronomique (INRA) and the European Federation of Animal Science (EAAP) and represents a merging of three scientific journals: Animal Science; Animal Research; Reproduction, Nutrition, Development. animal publishes original cutting-edge research, ''hot'' topics and horizon-scanning reviews on animal-related aspects of the life sciences at the molecular, cellular, organ, whole animal and production system levels. The main subject areas include: breeding and genetics; nutrition; physiology and functional biology of systems; behaviour, health and welfare; farming systems, environmental impact and climate change; product quality, human health and well-being. Animal models and papers dealing with the integration of research between these topics and their impact on the environment and people are particularly welcome.
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