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Utility-based configuration of learning factories using a multidimensional, multiple-choice knapsack problem

机译:基于实用的学习工厂配置,使用多维,多选择背包问题

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The paper presents a structural approach to configure the technical system of a learning factory by considering learning targets and maximizing the utility. Local scope conditions and intended competencies are used to operationalize requirements. The composition of the module-based technical system can be optimized by maximizing its overall utility. Therefore, an exact and efficient optimization algorithm is developed solving a multidimensional multiple-choice knapsack problem combined with a two-dimensional bin packing problem. Restrictions are the available budget and the useable area of the learning factory. As a result, the configured technical system enables optimal target orientation of the learning factory. This procedure is finally applied on the Process Learning Factory CiP.
机译:本文通过考虑学习目标并最大化该实用程序来提供一种结构方法来配置学习工厂的技术系统。本地范围条件和预期的竞争力用于运营需求。通过最大化其整体实用程序,可以优化基于模块的技术系统的组成。因此,开发了一种精确高效的优化算法,求解多维多项选择背包问题与二维箱包装问题相结合。限制是可用的预算和学习工厂的可用区域。结果,配置的技术系统使得学习工厂的最佳目标方向。此过程最终应用于过程学习工厂CIP。

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