利用精确饲养系统模拟数据检测猪的多重扰动

X. Nguyen, L. Pham
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摘要

工业4.0将给包括农业在内的所有行业带来变革。智能畜牧业正在取代传统畜牧业,成为世界农业发展的趋势。精准饲养是智能畜牧业的一个领域,它结合了人工智能、物联网、大数据等众多现代多学科技术。为了实现猪的这一目标,需要实施精确喂养系统。该系统的组成部分包括连接到计算机系统的自动喂食器,用于收集和处理鱼类和动物每日采食量的数据,以及/或来自环境传感器的数据。热应激或卫生问题等扰动对群养猪的营养状况有重大影响。然而,扰动往往是在它发生之后才被发现,并且在动物身上留下的后果很晚才被认识到。虽然扰动的原因可能是未知的,但对动物的影响可以在自愿采食量的数据中早期观察到。通过精密进料系统,根据数学模型对数据进行处理和分析,采用两步方法:(1)利用线性和二次函数估计累积采食量的目标轨迹,(2)检测基于偏离目标累积采食量的扰动。然而,实施这样一个系统需要巨大的成本,而且往往超出了农场、生产家庭和中小型实验室的能力。在本文中,我们引入了一种基于智能体的建模方法来模拟猪的精确饲养系统,其数据可用于早期检测可能出现的多重扰动。在GAMA仿真平台上进行了实验,验证了该方法对群养猪多重扰动检测的有效性,也验证了精确饲养系统仿真的实用性。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Detecting Multiple Perturbations on Swine using Data from Simulation of Precision Feeding Systems
Industry 4.0 brings transformation to all industries, including agriculture. Smart livestock has been replacing traditional livestock as a trend of the agricultural industry in the world. Precision feeding is one of the areas of smart husbandry that combines many modern multidisciplinary technologies which are prominent such as AI, IoT, Big Data, etc. To obtain that for pigs, a precision feeding system needs to be implemented. Components of the system include automatic feeders connected to a computer system to collect and process data on daily feed intake of fishes and animals, and/or from ambient sensors. Perturbations such as heat stress or sanitation issues have a significant impact on the nutritional profile of group housed pigs. However, perturbation is often detected only after it has occurred and is recognized late by the consequences left on the animal. Although the cause of perturbations might be unknown, the effect on the animal can be observed early throughout the data of voluntary feed intake. By the precision feeding system, the data are processed and analysed based on mathematical models following a two-step approach: (1) estimation of target trajectory of cumulative feed intake using linear and quadratic functions, and (2) detection of perturbations based on deviations from the target cumulative feed intake. However, implementing such a system requires huge costs and is often beyond the capabilities of farms, production households and small/medium laboratories. In this paper, we introduce an agent-based modeling approach to simulate precision feeding systems for swine, whose data can be used to early detect multiple perturbations which may have appeared. Experiments were carried out on GAMA simulation platform to demonstrate the efficiency in detecting multiple perturbations of group housed pigs, and also prove the usefulness of simulation of precision feeding systems.
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