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The assessment of supplementation requirements of grazing ruminants using nutrition models

机译:使用营养模型评估放牧反刍动物的补充要求

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摘要

This paper was aimed to summarize known concepts needed to comprehend the intricate interface between the ruminant animal and the pasture when predicting animal performance, acknowledge current efforts in the mathematical modeling domain of grazing ruminants, and highlight current thinking and technologies that can guide the development of advanced mathematical modeling tools for grazing ruminants. The scientific knowledge of factors that affect intake of ruminants is broad and rich, and decision-support tools ( ) for modeling energy expenditure and feed intake of grazing animals abound in the literature but the adequate predictability of forage intake is still lacking, remaining a major challenge that has been deceiving at times. Despite the mathematical advancements in translating experimental research of grazing ruminants into DST, numerous shortages have been identified in current models designed to predict intake of forages by grazing ruminants. Many of which are mechanistic models that rely heavily on preceding mathematical constructions that were developed to predict energy and nutrient requirements and feed intake of confined animals. The data collection of grazing (forage selection, grazing behavior, pasture growth/regrowth, pasture quality) and animal (nutrient digestion and absorption, volatile fatty acids production and profile, energy requirement) components remains a critical bottleneck for adequate modeling of forage intake by ruminants. An unresolved question that has impeded DST is how to assess the quantity and quality, ideally simultaneously, of pasture forages given that ruminant animals can be selective. The inadequate assessment of quantity and quality has been a hindrance in assessing energy expenditure of grazing animals for physical activities such as walking, grazing, and forage selection of grazing animals. The advancement of sensors might provide some insights that will likely enhance our understanding and assist in determining key variables that control forage intake and animal activity. Sensors might provide additional insights to improve the quantification of individual animal variation as the sensor data are collected on each subject over time. As a group of scientists, however, despite many obstacles in animal and forage science research, we have thrived, and progress has been made. The scientific community may need to change the angle of which the problem has been attacked, and focus more on holistic approaches.
机译:本文旨在总结一些已知的概念,这些概念在预测动物的表现时应理解反刍动物与牧场之间的错综复杂的界面,承认当前在放牧反刍动物数学建模领域中的努力,并强调可以指导动物发展的当前思维和技术。用于反刍动物放牧的高级数学建模工具。影响反刍动物摄入的因素的科学知识广泛而丰富,文献中充斥着用于对放牧动物的能量消耗和饲料摄入进行建模的决策支持工具(),但仍然缺乏足够的可预测草料摄入量,这仍然是一个主要问题有时一直在欺骗的挑战。尽管将反刍动物放牧的实验研究转化为DST具有数学上的进步,但是在当前的模型中发现了许多不足之处,这些模型旨在通过反刍动物预测草料的摄入。其中许多是机械模型,这些模型在很大程度上依赖于先前的数学构造,这些数学构造被用来预测能量和营养需求以及受限动物的饲料摄入量。放牧(草料选择,放牧行为,牧草生长/再生,牧草质量)和动物(营养物质的吸收和吸收,挥发性脂肪酸的产生和分布,能量需求)组成部分的数据收集仍然是关键的瓶颈,不足以对饲料的采食量进行建模反刍动物。阻碍DST的一个尚未解决的问题是,鉴于反刍动物具有选择性,如何理想地同时评估牧草的数量和质量。对数量和质量的评估不足,已成为评估放牧动物用于诸如步行,放牧和选择放牧动物的体力活动的能量消耗的障碍。传感器的进步可能会提供一些见识,从而有可能加深我们的理解并帮助确定控制饲草摄入量和动物活动的关键变量。传感器可能会提供更多的见解,以改善随时间推移收集到的每个对象的传感器数据的个体动物变异的量化。但是,作为一组科学家,尽管在动物和牧草科学研究方面有许多障碍,我们还是蒸蒸日上,并取得了进步。科学界可能需要改变解决问题的角度,并更多地关注整体方法。

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