Optimizing lot sizing model for perishable bread products using genetic algorithm

H. M. Asih, R. Leuveano, Dhimas Arief Dharmawan
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Abstract

This research addresses order planning challenges related to perishable products, using bread products as a case study. The problem is how to effi­ci­ently manage the various bread products ordered by diverse customers, which requires distributors to determine the optimal number of products to order from suppliers. This study aims to formulate the problem as a lot-sizing model, considering various factors, including customer demand, in­ven­tory constraints, ordering capacity, return rate, and defect rate, to achieve a near or optimal solution, Therefore determining the optimal order quantity to reduce the total ordering cost becomes a challenge in this study. However, most lot sizing problems are combinatorial and difficult to solve. Thus, this study uses the Genetic Algorithm (GA) as the main method to solve the lot sizing model and determine the optimal number of bread products to order. With GA, experiments have been conducted by combining the values of population, crossover, mutation, and generation parameters to maximize the feasibility value that represents the minimal total cost. The results obtained from the application of GA demonstrate its effectiveness in generating near or optimal solutions while also showing fast computational performance. By utilizing GA, distributors can effectively minimize wastage arising from expired or perishable products while simultaneously meeting customer demand more efficiently. As such, this research makes a significant contri­bution to the development of more effective and intelligent decision-making strategies in the domain of perishable products in bread distribution.
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利用遗传算法优化易腐面包产品的批量大小模型
本研究解决了与易腐产品相关的订单计划挑战,以面包产品为案例研究。问题是如何有效地管理不同客户订购的各种面包产品,这就要求分销商确定向供应商订购的最优产品数量。本研究的目的是将问题形成一个批量模型,考虑客户需求、库存约束、订货容量、退货率、缺品率等多种因素,以达到接近或最优解,因此确定最优订货数量以降低总订货成本成为本研究的挑战。然而,大多数批量问题是组合的,难以解决。因此,本研究采用遗传算法(GA)作为主要方法来求解批量模型,确定面包产品的最优订购数量。在遗传算法中,结合种群、交叉、突变和世代参数值进行实验,以求得代表总成本最小的可行性值。应用结果表明,遗传算法在生成近似解或最优解方面是有效的,并且具有快速的计算性能。通过利用遗传算法,分销商可以有效地减少过期或易腐产品造成的浪费,同时更有效地满足客户需求。因此,本研究为面包配送中易腐产品更有效、更智能的决策策略的制定做出了重要贡献。
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审稿时长
12 weeks
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