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用于通过自动称重系统增强韩牛体重估计的多阶段数据处理

Multi-Stage Data Processing for Enhancing Korean Cattle (Hanwoo) Weight Estimations by Automated Weighing Systems.

作者信息

Kim Dong-Hyeon, Song Jae-Woo, Cho Hyunjin, Lee Mingyung, Lee Dae-Hyun, Seo Seongwon, Lee Wang-Hee

机构信息

Department of Smart Agriculture Systems, Chungnam National University, Daejeon 34134, Republic of Korea.

Department of Smart Agriculture Systems Machinery Engineering, Chungnam National University, Daejeon 34134, Republic of Korea.

出版信息

Animals (Basel). 2025 Jun 17;15(12):1785. doi: 10.3390/ani15121785.

Abstract

Weight is the most basic and important indicator in cattle management, and automation of its measurement serves as a fundamental step toward modern smart livestock farming. Automated weighing systems (AWS) capable of continuously measuring cattle weight, even during movement, have been explored as key monitoring components in smart livestock farming. However, owing to the high measurement variability caused by environmental factors, the accuracy of AWSs has been questioned. These factors include real-time fluctuations due to animal activities (e.g., feeding and locomotion), as well as measurement errors caused by residual feed or excreta within the AWS. Therefore, this study aimed to develop an algorithm to enhance the reliability of steer weight measurements using an AWS, ensuring close alignment with actual cattle body weight. Accordingly, daily weight data from 36 Hanwoo steers were processed using a three-stage approach consisting of outlier detection and removal, weight estimation, and post-processing for weight adjustment. The best-performing algorithm that combined Tukey's fences for outlier detection, mean-based estimation, and post-processing based on daily weight gain recommended by the National Institute of Animal Science achieved a root mean square error of 12.35 kg, along with an error margin of less than 10% for individual steers. Overall, the study concluded that the AWS measured steer weight with high reliability through the developed algorithm, thereby contributing to data-driven intelligent precision feeding.

摘要

体重是肉牛管理中最基本且重要的指标,其测量自动化是迈向现代智能畜牧业的关键一步。能够在牛移动过程中持续测量体重的自动称重系统(AWS)已被视为智能畜牧业中的关键监测组件。然而,由于环境因素导致测量变异性高,AWS的准确性受到质疑。这些因素包括动物活动(如进食和运动)引起的实时波动,以及AWS内残留饲料或排泄物导致的测量误差。因此,本研究旨在开发一种算法,以提高使用AWS测量阉牛体重的可靠性,确保与牛的实际体重高度一致。相应地,对36头韩牛阉牛的每日体重数据采用了一种三阶段方法进行处理,该方法包括异常值检测与去除、体重估计以及基于体重调整的后处理。结合用于异常值检测的Tukey's fences、基于均值的估计以及韩国动物科学研究所推荐的基于日增重的后处理的最佳算法,其均方根误差为12.35千克,个体阉牛的误差幅度小于10%。总体而言,该研究得出结论,通过所开发的算法,AWS能够高度可靠地测量阉牛体重,从而有助于实现数据驱动的智能精准饲养。

https://cdn.ncbi.nlm.nih.gov/pmc/blobs/7317/12189631/74af798129d8/animals-15-01785-g001.jpg

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