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A simulation-optimisation genetic algorithm approach to product allocation in vending machine systems

机译:自动售货机系统产品分配的模拟优化遗传算法方法

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In recent years, vending machines have seen increasing levels of popularity. In a fast-paced world where convenience and accessibility of products is highly sought after the vending industry has provided a suitable solution. Although the economic impact of the vending industry is indisputable, it is not without challenges, especially when it comes to the efficiency of the vending logistics operations.The optimisation of logistic vending machine systems is decidedly complex. Product allocation to columns in a vending machine, replenishment points of products, product thresholds at vending machines, and vehicle routes for inventory replenishments are all essential challenges in vending machine system management and operation. If all facets of the problem were to be addressed, it would require techniques such as forecasting, machine learning, data mining, combinatorial optimization and vehicle routing, among others. In the past, these approaches have been explored individually despite their intrinsic interdependence within the problem. This paper aims to help to fill in this gap and proposes a model for the optimisation of product allocation within a vending machine under the constraint of fixed restocking instances. The optimal product allocation is based on the definition of product profitability which accounts for the net revenue earned after the cost of restock, as opposed to the revenue earned until first stock-out to prevent arbitrary extension of the stock-out period. The whole approach is encompassed in the simulation optimisation framework that utilises a Genetic Algorithm, with fitness evaluated as simulated revenue, to determine the optimal product allocation. The acceptable threshold of missed sales for a machine is also determined as a means to make intelligent restocking decisions. Overall, the proposed approach allows the strengths of mathematically robust optimization algorithms and the implementation of analytic solutions to be combined and applied to realistic scenarios where uncertainty may rule out some high quality analytic solutions. It respects problem intricacies proper to vending and addresses the interdependence between routing and portfolio optimisation.The proposal is application-driven and stems from a collaboration with an industry partner. The model is validated against an authentic data set supplied by the partner. The case study results revealed a network-wide improvement in net revenue of approximately 3.4%, with varied efficacy based on machine popularity. The method of optimisation was found to be significantly more effective for higher performing machines, with median improvements as high as 6%.Our framework based on the optimization-simulation model yields clear benefits to vending logistics operations management. The simulation component provides the decision maker with a more comprehensive view on the actual implementation of the solution. Effectively, the joint use of simulation and optimization methods provides managers with enhanced information to help decide on both: (i) the most beneficial product portfolio, and (ii) the quality of the proposed restocking schedules. Simulation-optimisation based approach is a powerful technique used to address stochastic problems. However, it was yet to be applied specifically to logistic vending machine systems. (C) 2019 Elsevier Ltd. All rights reserved.
机译:近年来,自动售货机已经看到越来越多的人气。在自动售货业提供合适的解决方案之后,在产品的便利性和可达性的快速上的世界中受到了高度追捧。虽然自动售货业的经济影响是无可争议的,但它并非没有挑战,特别是当涉及到自动售货机后勤运营的效率时。物流自动售货机系统的优化明显复杂。产品分配到自动售货机中的柱子,产品的补货点,自动售货机的产品阈值以及用于库存补货的车辆路线是自动售货机系统管理和操作中的所有必要挑战。如果要解决问题的所有方面,则需要技术,例如预测,机器学习,数据挖掘,组合优化和车辆路由等技术。过去,尽管在问题内有内在的相互依赖性,但这些方法已被单独探讨。本文旨在帮助填补该差距,并提出在固定补充实例的约束下进行自动售货机内产品分配的模型。最佳产品分配基于产品盈利能力的定义,该产品盈利能力占汇率成本赚取的净收入,而不是赚取的收入,直到第一库存,以防止储蓄期的任意延期。整个方法包括在仿真优化框架中,利用遗传算法,适用于模拟收入评估,以确定最佳产品分配。对于机器的错过销售的可接受的阈值也被确定为制作智能补充决策的手段。总的来说,所提出的方法允许数学上强大的优化算法的优势和要组合的分析解决方案的实现,并应用于现实方案,其中不确定性可能排除一些高质量的分析解决方案。它尊重对自动售货机合适的问题,并解决了路由和投资组合优化之间的相互依存。该提案是应用驱动的,源于与行业合作伙伴的合作。该模型针对合作伙伴提供的真实数据集进行验证。案例研究结果揭示了净收入的网络广泛改善约为3.4%,基于机器人气的效力多样化。发现优化的方法对于更高的性能而言,具有高达6%的中位数改善。基于优化仿真模型的框架产生了明显的效益,对自动售货机物流运营管理产生了明显的益处。仿真组件为决策者提供了更全面的解决方案的实际实现。有效地,仿真和优化方法的联合使用提供了具有增强信息的管理人员,以帮助决定两者:(i)最有益的产品组合,以及(ii)拟议的补充时间表的质量。基于仿真优化的方法是一种用于解决随机问题的强大技术。但是,它尚未专门应用于物流自动售货机系统。 (c)2019 Elsevier Ltd.保留所有权利。

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