利用离散事件和安大略省猪场及省输入数据,开发并验证猪场和省一级的猪流量模拟模型。

IF 0.8 Q3 VETERINARY SCIENCES
Maggie Henry, Wade McDonald, Robert M Friendship, Amy L Greer, Zvonimir Poljak
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引用次数: 0

摘要

传染病事件可导致服务业和农业中断。可能发生的事件不胜枚举,从可报告动物病原体的入侵或出现,到最近记录在案的 COVID-19 大流行造成的中断,不一而足。有必要开发一些模型,以确定病原体和缓解措施对未直接受病原体影响的人群的影响,特别是当这些人群的健康和福利可能因贸易和供应链中断而受到影响时。本研究的主要目的是开发一种猪生产离散事件模拟 (DES) 模型,包括猪肉加工,以应对无重大干扰的情况,该模型的规模可从单个农场扩展到加拿大安大略省全省。次要目标是根据观察到的农场和省一级的统计数据验证所开发的模拟。使用 AnyLogic 建模软件开发了每周离散事件模拟,包括 3 个相互连接的区域(母猪场、养猪场和屠宰场)。通过曼-惠特尼检验,将代表标准行业统计数据的模型输出结果与 6 个单独农场的数据以及安大略省的省级数据进行了比较。对典型情况下的猪生产系统进行了可扩展的离散事件模拟。模型输出结果与各农场和行业统计数据一致。因此,该模型可用于模拟不同层次的猪生产,并可进一步修改以代表其他省份或国际上的猪销售情况。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Development and validation of a farm- and province-level swine flow simulation model using discrete events and Ontario swine farm and provincial input data.

Infectious disease events can cause disruptions in service-based and agricultural industries. The list of possible events is long and varies from the incursion or emergence of a reportable animal pathogen to the recently documented interruptions caused by the COVID-19 pandemic. There is a need to develop models that can determine the impact of pathogens and mitigation measures on populations that are not directly affected by the pathogen in the case of a reportable disease, particularly when the health and welfare of these populations could be affected due to resulting disruptions in trade and supply chains. The primary objective of this study was to develop a discrete-event simulation (DES) model of swine production, including pork processing, for scenarios without major disruptions, which could be scaled from the level of an individual farm to the entire province of Ontario, Canada. The secondary objective was to validate the developed simulation against observed farm- and province-level statistics. A weekly discrete-event simulation consisting of 3 connected areas (a sow farm, a pig farm, and abattoirs) was developed using AnyLogic modelling software. Using Mann-Whitney tests, model outputs representative of the standard industry statistics were compared to data from 6 individual farms separately, as well as to provincial data from Ontario. A scalable discrete-event simulation of the swine production system for typical scenarios was accomplished. The model outputs were consistent with individual farm and industry statistics. As such, the model can be used to simulate swine production at distinct levels and could be further modified to represent swine marketing in other provinces or internationally.

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