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Advancements in sensor technology and decision support intelligent tools to assist smart livestock farming

机译:传感器技术和决策的进步支持智能工具以帮助智能牲畜养殖

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摘要

Remote monitoring, modern data collection through sensors, rapid data transfer, and vast data storage through the Internet of Things (IoT) have advanced precision livestock farming (PLF) in the last 20 yr. PLF is relevant to many fields of livestock production, including aerial- and satellite-based measurement of pasture’s forage quantity and quality; body weight and composition and physiological assessments; on-animal devices to monitor location, activity, and behaviors in grazing and foraging environments; early detection of lameness and other diseases; milk yield and composition; reproductive measurements and calving diseases; and feed intake and greenhouse gas emissions, to name just a few. There are many possibilities to improve animal production through PLF, but the combination of PLF and computer modeling is necessary to facilitate on-farm applicability. Concept- or knowledge-driven (mechanistic) models are established on scientific knowledge, and they are based on the conceptualization of hypotheses about variable interrelationships. Artificial intelligence (AI), on the other hand, is a data-driven approach that can manipulate and represent the big data accumulated by sensors and IoT. Still, it cannot explicitly explain the underlying assumptions of the intrinsic relationships in the data core because it lacks the wisdom that confers understanding and principles. The lack of wisdom in AI is because everything revolves around numbers. The associations among the numbers are obtained through the “automatized” learning process of mathematical correlations and covariances, not through “human causation” and abstract conceptualization of physiological or production principles. AI starts with comparative analogies to establish concepts and provides memory for future comparisons. Then, the learning process evolves from seeking wisdom through the systematic use of reasoning. AI is a relatively novel concept in many science fields. It may well be “the missing link” to expedite the transition of the traditional maximizing output mentality to a more mindful purpose of optimizing production efficiency while alleviating resource allocation for production. The integration between concept- and data-driven modeling through parallel hybridization of mechanistic and AI models will yield a hybrid intelligent mechanistic model that, along with data collection through PLF, is paramount to transcend the current status of livestock production in achieving sustainability.
机译:通过传感器的远程监控,现代数据收集通过传感器,快速数据传输和通过物联网(物联网)的巨大数据存储(IOT)在过去20年中具有高级精密牲畜养殖(PLF)。 PLF与畜牧业生产领域有关,包括基于空中和卫星的牧场的饲料量和质量的测量;体重和组成和生理评估;在动物设备上监测放牧和觅食环境中的位置,活动和行为;早期发现跛足和其他疾病;牛奶产量和组成;生殖测量和产犊疾病;并饲养摄入量和温室气体排放,只有几个。通过PLF改善动物生产有许多可能性,但PLF和计算机建模的组合是必要的,以促进农业适用性。概念或知识驱动的(机械)模型是在科学知识上建立的,并且它们基于假设关于可变相互关系的概念化。另一方面,人工智能(AI)是一种数据驱动方法,可以操纵并表示由传感器和物联网累积的大数据。尽管如此,它无法明确解释数据核心内在关系的基本假设,因为它缺乏赋予理解和原则的智慧。 AI中缺乏智慧是因为一切都围绕着数字。这些数字之间的协会是通过数学相关性和协方差的“自动化”学习过程获得,而不是通过“人类因果关系”和生理或生产原则的摘要概念化。 AI从比较类比开始建立概念并为未来的比较提供记忆。然后,通过系统使用推理,学习过程从寻求智慧演变。 AI是许多科学领域的一个相对小说的概念。它可能是“缺失的环节”,以加快传统的最大化输出心态的转变,以便更加优化生产效率的同时减轻资源分配进行生产。通过机械和AI模型的平行杂交概念和数据驱动建模之间的集成将产生一个混合智能机制模型,以及通过PLF的数据收集,这是超越牲畜生产在实现可持续性方面的现状。

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