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Replenishment Policy Based On Modified Ant Colonyoptimisation And Statistical Analysis Under The pre-order Penetration Point

机译:预定穿透点下基于改进蚁群算法和统计分析的补货策略

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摘要

In the supply chain, most businesses in the pre-order penetration point (pre-OPP) operate under the forecast-driven mode, so that the decisions regarding inventory are made in accordance with the forecast and replenishment planning. This paper considers the stochastic dynamic lot-sizing problem of the two-phased transportation cost, service level constraint, and cash flow under a non-deterministic demand. This problem includes a nonlinear integer programming sub-problem. Therefore, this paper proposes an optimisation replenishment policy method based on modified ant colony optimisation (ACO) and response surface methodology. The main differences between the modified ACO and the traditional ACO lie in the modified update of pheromone intensity and the dynamic mutation operator. The experimental result shows that when the demand is normal distribution, the proposed approach, successfully finds the stationary point of minimum response. Besides, in the test of the algorithm solution quality, the modified ACO is better than the traditional ACO in all scenarios.
机译:在供应链中,大多数处于预购渗透点(pre-OPP)的企业都是在预测驱动模式下运作的,因此有关库存的决策是根据预测和补货计划进行的。考虑了不确定需求下两阶段运输成本,服务水平约束和现金流的随机动态批量问题。此问题包括非线性整数编程子问题。因此,本文提出了一种基于改进蚁群优化(ACO)和响应面方法的优化补货策略方法。修改后的ACO与传统ACO之间的主要区别在于信息素强度和动态突变算子的修改后更新。实验结果表明,当需求为正态分布时,该方法成功地找到了最小响应的平稳点。此外,在算法求解质量的测试中,改进后的ACO在所有情况下均优于传统ACO。

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