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Minimum-aggregate-concave-cost multicommodity flows in strong-series-parallel networks

机译:强串联-平行网络中最小凹面成本的多商品流

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摘要

This work develops a polynomial-time dynamic-programming algorithm for minimum-aggregate-concave-cost multicommodity flow problems in strong-series-parallel networks. Many important problems from production and inventory management, capacity planning, network design and transportation can be formulated in these terms. Our results include a characterization of extreme flows in strong-series-parallel networks and an algorithm based on this characterization that searches extreme flows efficiently to find an optimal one. The algorithm runs in time proportional to A(N+K), where A, N and K are respectively the numbers of arcs, nodes and commodities in the network, and appears to be the first to solve the problem in polynomial time. When applied to the dynamic economic-order-quantity problem, the algorithm matches the performance of that of Wagner and Whitin (1958). Moreover, our algorithm has broader applications, including the multi-division capacity expansion problem and the generalization of the dynamic economic-order-quantity problem to series-parallel production processes in which subassemblies are assembled into a finished product.
机译:这项工作开发了多项式时间动态规划算法,以解决强串联-并行网络中最小聚集-凹面成本多商品流动问题。用这些术语可以表达来自生产和库存管理,容量计划,网络设计和运输的许多重要问题。我们的结果包括在强串并联网络中对极端流量进行表征,以及基于该特性的算法,该算法可以有效地搜索极端流量以找到最佳流量。该算法按与A(N + K)成比例的时间运行,其中A,N和K分别是网络中的弧,节点和商品的数量,并且似乎是第一个解决多项式时间问题的方法。当应用于动态经济订单量问题时,该算法与Wagner和Whitin(1958)的性能相匹配。而且,我们的算法具有更广泛的应用,包括多部门产能扩展问题和动态经济订单数量问题的推广到串联并行生产过程,在该过程中将子组件组装成成品。

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