基于仿真的易腐食品库存管理优化方法

Ning Xue, Dario Landa Silva, G. Figueredo, I. Triguero
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引用次数: 1

摘要

易腐食品的味道和新鲜度随着时间的推移而急剧下降。有效的库存管理需要了解市场需求以及平衡客户需求和参考产品的保质期。目标是避免粮食生产过剩,因为这会导致浪费和价值损失。此外,产品损耗必须最小化,因为它可能导致客户食言。本研究解决了在客户需求高度变化的环境下,高度易腐食品(如新鲜烹制的菜肴、三明治和保质期从6小时到12小时不等的甜点)的生产计划。在这里考虑的场景中,规划范围比产品的保质期更长。因此,食物需要在不同的时间间隔补充几次。此外,在规划期间,客户需求变化很大。我们将离散事件模拟和粒子群优化(PSO)相结合来解决这个问题。仿真模型关注系统在参数(即补充时间和数量)变化时的行为。采用粒子群算法确定仿真参数的最佳组合。将所提出的方法的有效性应用于与当地食品店相对应的实际场景。实验结果表明,将离散事件模拟与粒子群优化相结合的方法可以有效地解决客户需求变化的高易腐食品库存管理问题。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
A Simulation-based Optimisation Approach for Inventory Management of Highly Perishable Food
The taste and freshness of perishable foods decrease dramatically with time. Effective inventory management requires understanding of market demand as well as balancing customers needs and references with products’ shelf life. The objective is to avoid food overproduction as this leads to waste and value loss. In addition, product depletion has to be minimised, as it can result in customers reneging. This study tackles the production planning of highly perishable foods (such as freshly prepared dishes, sandwiches and desserts with shelf life varying from 6 to 12 hours), in an environment with highly variable customers demand. In the scenario considered here, the planning horizon is longer than the products’ shelf life. Therefore, food needs to be replenished several times at different intervals. Furthermore, customers demand varies significantly during the planning period. We tackle the problem by combining discrete-event simulation and particle swarm optimisation (PSO). The simulation model focuses on the behaviour of the system as parameters (i.e. replenishment time and quantity) change. PSO is employed to determine the best combination of parameter values for the simulations. The effectiveness of the proposed approach is applied to some real-world scenario corresponding to a local food shop. Experimental results show that the proposed methodology combining discrete event simulation and particle swarm optimisation is effective for inventory management of highly perishable foods with variable customers demand.
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