457 通过人工神经网络利用反刍时间和牛奶中红外光谱数据预测甲烷排放量

IF 2.7 2区 农林科学 Q1 AGRICULTURE, DAIRY & ANIMAL SCIENCE Journal of animal science Pub Date : 2024-09-14 DOI:10.1093/jas/skae234.364
Lucas S F Lopes, Saeed Shadpour, Filippo Miglior, Dan Tulpan, Flávio S Schenkel, Christine F Baes
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引用次数: 0

摘要

牛的甲烷排放量(ME)约占全球人为温室气体排放量的 6%。鉴于直接测量单个动物的甲烷排放量存在挑战,因此需要开发新的间接方法。反刍时间(RT)和牛奶中红外光谱数据(MIR)显示了间接评估奶牛ME的前景。这两个性状已被用作繁殖、生产和气体排放性状的指标。结合使用 MIR 和机器学习算法(如人工神经网络 (ANN))来预测 ME 的方法已经取得了成功;但将 RT 纳入其中的方法尚未得到评估。本研究旨在评估 RT 对使用人工神经网络预测 ME 的基于牛奶 MIR 的模型的影响。研究人员计算了加拿大荷斯坦奶牛第一泌乳期(n = 412)的 RT、ME 和 MIR 的一周平均值。使用多层感知器 ANN 评估了六组数据。所有数据集都将产犊年龄、产犊季节和产奶天数作为模型因子,但在使用牛奶 MIR 数据点(1,060 或 235)以及包括或不包括 RT 方面有所不同。ANN 结构包括一个输入层、一个带有一个或多个神经元的隐藏层和一个输出层。结果表明,同时使用 RT 和牛奶 MIR 数据的数据集在预测的 ME 值和观察到的 ME 值之间实现了 0.5 到 0.6 的相关性。值得注意的是,加入 RT 并没有提高模型的性能。通过使用更大的数据集、使用每日记录以及纳入跨牧群和泌乳期的数据,预测结果可能会得到改善。优化 ANN 的参数也能提高预测效果。要全面评估 RT 作为奶牛 ME 预测指标的潜力,还需要进一步的研究。
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457 Prediction of methane emissions using rumination time and milk mid-infrared spectral data via artificial neural networks
Cattle methane emissions (ME) account for approximately 6% of global anthropogenic greenhouse gas emissions. Given the challenges in measuring ME directly from individual animals, there is a need for the development of novel indirect methods. Rumination time (RT) and milk mid-infrared spectral data (MIR) show promise for the indirect assessment of ME in dairy cows. Both traits have been used as indicators of reproduction, production, and gas emission traits. Methodologies combining the use of MIR and machine learning algorithms such as artificial neural networks (ANN) for the prediction of ME have been successful; however, the inclusion of RT has not been assessed. This study aimed to evaluate the impact of RT on milk MIR-based models using ANN for the prediction of ME. One-week averages for RT, ME, and MIR from first-lactation Canadian Holstein cows (n = 412) were calculated. Six data sets were evaluated using a multilayer perceptron ANN. All sets included age at calving, season of calving and days in milk as model factors, but varied in using milk MIR data points (1,060 or 235) and including or not including RT. The ANN architecture consisted of one input layer, one hidden layer with one or more neurons, and one output layer. Results showed that sets using both RT and milk MIR data achieved correlations from 0.5 to 0.6 between predicted and observed ME. Notably, the inclusion of RT did not improve the performance of the models. Predictions may be improved through the use of larger data sets, the use of daily records, and inclusion of data across herds and lactations. Optimizing parameters of the ANN could also improve predictions. Further research is needed to fully assess the potential of RT as a predictor of ME in dairy cows.
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来源期刊
Journal of animal science
Journal of animal science 农林科学-奶制品与动物科学
CiteScore
4.80
自引率
12.10%
发文量
1589
审稿时长
3 months
期刊介绍: The Journal of Animal Science (JAS) is the premier journal for animal science and serves as the leading source of new knowledge and perspective in this area. JAS publishes more than 500 fully reviewed research articles, invited reviews, technical notes, and letters to the editor each year. Articles published in JAS encompass a broad range of research topics in animal production and fundamental aspects of genetics, nutrition, physiology, and preparation and utilization of animal products. Articles typically report research with beef cattle, companion animals, goats, horses, pigs, and sheep; however, studies involving other farm animals, aquatic and wildlife species, and laboratory animal species that address fundamental questions related to livestock and companion animal biology will be considered for publication.
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