Yumi Oh, Peng Lyu, Sunwoo Ko, Jeongik Min, Juwhan Song
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The Gaussian kernel density estimation model proposed in this paper aims to estimate the representative value of the daily average weight of a single broiler using statistical estimation methods, allowing for self-adjustment of bandwidth values. When applied to the dataset collected through scales, the proposed Gaussian kernel density estimation model with self-adjustable bandwidth values confirmed that the estimated daily weight did not deviate beyond the error range of ±50 g compared with the actual measured values. The next step of this study is to systematically understand the impact of the broiler environment on weight for sustainable management strategies for broiler demand, derive optimal rearing conditions for each farm by combining location and weight data, and develop a model for predicting daily average weight values. The ultimate goal is to develop an artificial intelligence model suitable for weight management systems by utilizing the estimated daily average weight of a single broiler even in the presence of error data collected from multiple weight measurements, enabling more efficient automatic measurement of broiler weight and supporting both farms and broiler demand.","PeriodicalId":503580,"journal":{"name":"Agriculture","volume":"58 5","pages":""},"PeriodicalIF":0.0000,"publicationDate":"2024-05-23","publicationTypes":"Journal Article","fieldsOfStudy":null,"isOpenAccess":false,"openAccessPdf":"","citationCount":"0","resultStr":"{\"title\":\"Enhancing Broiler Weight Estimation through Gaussian Kernel Density Estimation Modeling\",\"authors\":\"Yumi Oh, Peng Lyu, Sunwoo Ko, Jeongik Min, Juwhan Song\",\"doi\":\"10.3390/agriculture14060809\",\"DOIUrl\":null,\"url\":null,\"abstract\":\"The management of individual weights in broiler farming is not only crucial for increasing farm income but also directly linked to the revenue growth of integrated broiler companies, necessitating prompt resolution. 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引用次数: 0
摘要
肉鸡养殖中的个体体重管理不仅对增加农场收入至关重要,而且直接关系到综合肉鸡公司的收入增长,因此必须及时解决。本文提出了一种利用时间和体重秤收集的体重数据估算肉鸡日平均体重的模型。在提出的模型中,采用了带宽计算公式中的权重自调整方法,并使用 KDE 估算日均体重代表值。本研究的重点是通过深入研究肉鸡平均体重的日波动,为肉鸡的个体体重管理做出贡献。为此,我们收集了体重和时间数据,并通过天平进行了预处理。本文提出的高斯核密度估计模型旨在利用统计估算方法估算单只肉鸡日平均体重的代表值,允许带宽值的自我调整。将本文提出的高斯核密度估计模型应用于通过秤采集的数据集时,带宽值可自行调整,结果表明,与实际测量值相比,估计的日重偏差不超过±50 克的误差范围。本研究的下一步工作是系统地了解肉鸡饲养环境对体重的影响,以制定肉鸡需求的可持续管理策略,通过结合饲养地点和体重数据得出每个鸡场的最佳饲养条件,并开发一个预测日平均体重值的模型。最终目标是开发一种适用于体重管理系统的人工智能模型,即使在多次体重测量数据存在误差的情况下,也能利用单只肉鸡的估计日平均体重,实现更高效的肉鸡体重自动测量,为养殖场和肉鸡需求提供支持。
Enhancing Broiler Weight Estimation through Gaussian Kernel Density Estimation Modeling
The management of individual weights in broiler farming is not only crucial for increasing farm income but also directly linked to the revenue growth of integrated broiler companies, necessitating prompt resolution. This paper proposes a model to estimate daily average broiler weights using time and weight data collected through scales. In the proposed model, a method of self-adjusting weights in the bandwidth calculation formula is employed, and the daily average weight representative value is estimated using KDE. The focus of this study is to contribute to the individual weight management of broilers by intensively researching daily fluctuations in average broiler weight. To address this, weight and time data are collected and preprocessed through scales. The Gaussian kernel density estimation model proposed in this paper aims to estimate the representative value of the daily average weight of a single broiler using statistical estimation methods, allowing for self-adjustment of bandwidth values. When applied to the dataset collected through scales, the proposed Gaussian kernel density estimation model with self-adjustable bandwidth values confirmed that the estimated daily weight did not deviate beyond the error range of ±50 g compared with the actual measured values. The next step of this study is to systematically understand the impact of the broiler environment on weight for sustainable management strategies for broiler demand, derive optimal rearing conditions for each farm by combining location and weight data, and develop a model for predicting daily average weight values. The ultimate goal is to develop an artificial intelligence model suitable for weight management systems by utilizing the estimated daily average weight of a single broiler even in the presence of error data collected from multiple weight measurements, enabling more efficient automatic measurement of broiler weight and supporting both farms and broiler demand.