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An Improved Genetic Approach to Optimal Supplier Selection and Order Allocation with Customer Flexibility for Multi-Product Manufacturing

机译:改进的遗传方法,以优化供应商选择和订单分配,对多产品制造的灵活性

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摘要

As the global market becomes more competitive, manufacturing industries face relentless pressure caused by a grow- ing tendency of greater varieties of products, shorter manufacturing cycles and more sophisticated customer require- ments. Efficient and effective supplier selection and order allocation decisions are, therefore, important decisions for a manufacturer to ensure stable material flows in a highly competitive supply chain, in particular, when customers are willing to accept products with less desirable product attributes (e.g., color, delivery date) for economic reasons. This paper attempts to solve optimally the challenging problem of supplier selection and order allocation, taking into con- sideration the customer flexibility for a manufacturer producing multi-products to satisfy the customers’ demands in a multi period planning horizon. A new mixed integer programming model is developed to describe the behavior of the supply chain. The objective is to maximize the manufacturer’s total profit subject to various operating constraints of the supply chain. Due to the complexity and non-deterministic polynomial-time (NP)-hard nature of the problem, an improved genetic approach is proposed to solve the problem optimally. This approach differs from a canonical genetic algorithm in three aspects: a new selection method to reduce the chance of premature convergence and two problem- specific repair heuristics to guarantee feasibility of the solutions. The results of applying the proposed approach to solve a set of randomly generated test problems clearly demonstrate its excellent performance. When compared with applying the canonical genetic algorithm to locate optimal solutions, the average improvement in the solution quality amounts to as high as ten percent.
机译:随着全球市场变得更具竞争力,制造业面临无情的压力,由于产品种类更大的产品,较短的制造周期和更复杂的客户要求造成的趋势。因此,有效且有效的供应商选择和订单分配决策是制造商的重要决策,以确保稳定的材料在高竞争激烈的供应链中流动,特别是当客户愿意接受具有不太理想的产品属性的产品(例如,颜色,交货日期为经济原因。本文试图最佳地解决供应商选择和订单分配的具有挑战性问题,并考虑了制造商生产多产品在多时期规划地平线上满足客户需求的客户灵活性。开发了一种新的混合整数编程模型来描述供应链的行为。目标是最大限度地提高制造商的总利润,以供应链的各种运营限制。由于复杂性和非确定性多项式 - 时间(NP) - 问题的性质,提出了一种改进的遗传方法来最佳地解决问题。这种方法与三个方面的规范遗传算法不同:一种新的选择方法,减少过早收敛的机会和两个问题特定的修复启发式,以保证解决方案的可行性。应用提出的方法解决一组随机产生的测试问题的结果清楚地证明了其优异的性能。与应用规范遗传算法定位最佳解决方案相比,溶液质量的平均改善量高达10%。

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