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Conservative scales in packing problems

机译:包装问题上的保守量表

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Packing problems (sometimes also called cutting problems) are combinatorial optimization problems concerned with placement of objects (items) in one or several containers. Some packing problems are special cases of several other problems such as resource-constrained scheduling, capacitated vehicle routing, etc. In this paper we consider a bounding technique for one- and higher-dimensional orthogonal packing problems, called conservative scales (CS) (in the scheduling terminology, redundant resources). CS are related to the possible structure of resource consumption: filling of a bin, distribution of the resource to the jobs, etc. In terms of packing, CS are modified item sizes such that the set of feasible packings is not reduced. In fact, every CS represents a valid inequality for a certain binary knapsack polyhedron. CS correspond to dual variables of the set-partitioning model of a special 1D cutting-stock problem. Some CS can be constructed by (data-dependent) dual-feasible functions ((D)DFFs). We discuss the relation of CS to DFFs: CS assume that at most one copy of each object can appear in a combination, whereas DFFs allow several copies. The literature has investigated the so-called extremal maximal DFFs (EMDFFs) which should provide very strong CS. Analogously, we introduce the notions of maximal CS (MCS) and extremal maximal CS (EMCS) and show that EMDFFs do not necessarily produce (E)MCS. We propose fast greedy methods to “maximize” a given CS. Using the fact that EMCS define facets of the binary knapsack polyhedron, we use lifted cover inequalities as EMCS. For higher-dimensional orthogonal packing, we propose a Sequential LP (SLP) method over the set of CS and investigate its convergence. Numerical results are presented.
机译:包装问题(有时也称为切割问题)是与一个或多个容器中的对象(项目)放置有关的组合优化问题。一些打包问题是其他一些问题的特例,例如资源受限的调度,载客量大的车辆路线等。在本文中,我们考虑一维和高维正交打包问题的边界技术,称为保守标度(CS)(在调度术语,冗余资源)。 CS与资源消耗的可能结构有关:装满垃圾箱,将资源分配给工作等。在包装方面,CS被修改为项目大小,因此不会减少可行包装的集合。实际上,每个CS代表特定二进制背包多面体的有效不等式。 CS对应于一维特殊切割问题的集合划分模型的对偶变量。某些CS可以由(与数据相关的)双重可行功能((D)DFF)构造。我们讨论CS与DFF的关系:CS假定每个对象最多可以有一个副本出现在一个组合中,而DFF则允许多个副本。文献已经研究了所谓的极值最大DFF(EMDFF),它应该提供非常强的CS。类似地,我们介绍了最大CS(MCS)和极值最大CS(EMCS)的概念,并表明EMDFF不一定会产生(E)MCS。我们提出了快速的贪婪方法来“最大化”给定的CS。利用EMCS定义二进制背包多面体的面这一事实,我们将提升的覆盖不等式用作EMCS。对于高维正交打包,我们在CS集合上提出了顺序LP(SLP)方法,并研究了其收敛性。给出了数值结果。

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