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基于混合算法的汽车零部件物流配送路径优化
引用本文:侯秀英,李正红,林森,罗奕辉,邹斌.基于混合算法的汽车零部件物流配送路径优化[J].三明学院学报,2014(4):38-44.
作者姓名:侯秀英  李正红  林森  罗奕辉  邹斌
作者单位:福建农林大学交通与土木工程学院,福建福州350002
基金项目:福建农林大学科技创新(培育)团队资助计划(pytd12006)
摘    要:针对汽车零部件供应物流,建立循环取货配送路径优化模型,将遗传算法与Max-Min蚁群算法融合,采用遗传算法生成初始信息素分布,利用Max-Min蚁群算法求精确解,并通过实例验证。结果表明,混合算法对于解决供应商数量多、带时间窗限制与碳排放限制的配送路径优化问题,可有效降低车辆取货频次和提高车辆装载率。

关 键 词:汽车零部件  循环取货  遗传算法  Max-Min蚁群算法

Optimization of Auto Parts Logistics Distribution Path Based on Hybrid Algorithm
Institution:Based on Hybrid Algorithm HOU Xiu-ying, LI Zheng-hong, LIN Sen, LUO Yi-hui, Z0U Bin
Abstract:According to the supply logistics of automobile parts, milk-run distribution path optimization model is established. The Max-Min genetic algorithm and ant colony algorithm are fused. Genetic algorithm is adopted to give information pheromone distribution; the ant algorithm is used to give the precision of the solution, and is verified by an example. The results show that the hybrid algorithm can effectively reduce the distribute frequency and improve vehicle loading rate for solving the distribution path problem of supplier and limiting the time window and carbon emissions.
Keywords:auto parts  milkrun  genetic algorithm  Max-Min ant colony algorithm
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