禽业羊群收集协调的目标规划方法

IF 1.1 4区 计算机科学 Q4 COMPUTER SCIENCE, INFORMATION SYSTEMS Infor Pub Date : 2022-05-28 DOI:10.1080/03155986.2022.2063598
Kenneth Dolson, H. Sarhadi, A. Saif
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引用次数: 0

摘要

摘要针对某家禽加工企业的集禽活动,提出了确定性和随机目标规划模型。其目的是制定平衡三个目标的每周时间表:确保加工设施的稳定工作量,减少由于体重差异造成的加工缺陷,并在满足后勤限制的同时实现农民的生产目标。提出了两种确定性目标规划模型:一种是考虑农民集体利益的加权模型,另一种是防止任何单个农民的生产目标出现较大偏差的最小-最大模型。此外,建立了两阶段随机规划模型,其中平均群权的预测是不确定的。提出的方法应用于加拿大新斯科舍省的一个实际案例研究。数值结果表明,与加权模型相比,最小-最大模型在不显著增加与生产目标的总偏差的情况下显著降低了与最优性的最大期望偏差。此外,与确定性模型相比,随机模型带来了实质性的改进,从而证明了向两阶段规划过程的过渡是合理的。在减少同一天采集的鸡群之间的平均体重差方面,所提出的随机最小-最大模型也优于目前的人工方法。
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Goal programming approaches for coordinating flock collection in the poultry industry
Abstract We present deterministic and stochastic goal programming models for coordinating of flock collection activities in a poultry processing company. The aim is to develop weekly schedules that balance three goals: ensuring a steady workload in the processing facility, reducing processing defects due to weight differences, and fulfilling production targets of farmers, while satisfying logistical constraints. Two deterministic goal programming models are proposed: a weighted model that considers the collective interests of farmers, and a min-max model that prevents large deviations from the production target for any individual farmer. Furthermore, two-stage stochastic programming models are developed, in which forecasts of the average flock weights are uncertain. The proposed approaches are applied to a real case study in Nova Scotia (Canada). Numerical results show that, compared to the weighted models, the min-max models considerably reduce the maximum expected deviation from optimality without significantly increasing the gross deviation from production targets. Furthermore, the stochastic models led to substantial improvements over the deterministic ones, thus justifying the transition to a two-stage planning procedure. The proposed stochastic min-max model was also shown to outperform the current manual approach in terms of reducing the average weight spread between flocks collected on the same day.
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来源期刊
Infor
Infor 管理科学-计算机:信息系统
CiteScore
2.60
自引率
7.70%
发文量
16
审稿时长
>12 weeks
期刊介绍: INFOR: Information Systems and Operational Research is published and sponsored by the Canadian Operational Research Society. It provides its readers with papers on a powerful combination of subjects: Information Systems and Operational Research. The importance of combining IS and OR in one journal is that both aim to expand quantitative scientific approaches to management. With this integration, the theory, methodology, and practice of OR and IS are thoroughly examined. INFOR is available in print and online.
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