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Bounding the Search Space of the Population Harvest Cutting Problem with Multiple Size Stock Selection

机译:具有多种规模选股的人口割减问题的搜索空间

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In this paper we deal with a variant of the Multiple Stock Size Cutting Stock Problem (MSSCSP) arising from population harvesting, in which some sets of large pieces of raw material (of different shapes) must be cut following certain patterns to meet customer demands of certain product types. The main extra difficulty of this variant of the MSSCSP lies in the fact that the available patterns are not known a priori. Instead, a given complex algorithm maps a vector of continuous variables called a values vector into a vector of total amounts of products, which we call a global products pattern. Modeling and solving this MSSCSP is not straightforward since the number of value vectors is infinite and the mapping algorithm consumes a significant amount of time, which precludes complete pattern enumeration. For this reason a representative sample of global products patterns must be selected. We propose an approach to bounding the search space of the values vector and an algorithm for performing an exhaustive sampling using such bounds. Our approach has been evaluated with real data provided by an industry partner.
机译:在本文中,我们处理了因人口收获而产生的多尺寸割料问题(MSSCSP)的变体,其中必须按照某些模式切割一些大块的原料(不同形状),以满足客户的需求。某些产品类型。 MSSCSP的此变体的主要额外困难在于以下事实:现有模式并不事先已知。取而代之的是,给定的复杂算法将称为值向量的连续变量向量映射为产品总数的向量,我们称其为全局产品模式。由于值向量的数量是无限的,并且映射算法会消耗大量时间,因此无法进行完整的模式枚举,因此建模和求解此MSSCSP并不简单。因此,必须选择具有代表性的全球产品模式样本。我们提出了一种限制值向量的搜索空间的方法,以及一种使用这种限制执行穷举采样的算法。我们的方法已经由行业合作伙伴提供的真实数据进行了评估。

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