On the influence of state update interval length on the prediction success of decision support system in multi-site production environment

Matthias Becker, H. Szczerbicka
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引用次数: 4

Abstract

Planning in a multi-site, non-mass production environment is a special challenge because of several sources of uncertainty. Unlike in mass production facilities, in our setting the current state at all sites cannot be determined easily and exactly due to the spatial distribution of sites and the low degree of automation. For re-planning in case of failures, the possible alternative actions have to be formalized on the decision making facility, where the possible alternatives will then be determined and evaluated. In this work, we will present the necessary components for an automated evaluation of alternatives and decision support procedure. The main challenges are the formalization of product plans including alternative steps and the non-automated collection or assessment of the distributed system state of all sites. In our experiments we evaluate different state update intervals and the effect on prediction accuracy. It turns out, that even sparse updates show significant improvement on the production time in comparison to only local static decisions.
多站点生产环境下状态更新间隔长度对决策支持系统预测成功的影响
规划在一个多地点,非大规模生产的环境是一个特殊的挑战,因为有几个来源的不确定性。与大规模生产设施不同,在我们的设置中,由于场地的空间分布和自动化程度较低,无法轻松准确地确定所有场地的当前状态。为了在失败的情况下重新规划,可能的替代行动必须在决策制定设施上正式确定,然后在那里确定和评估可能的替代方案。在这项工作中,我们将为备选方案和决策支持过程的自动评估提供必要的组件。主要的挑战是产品计划的形式化,包括可选步骤和对所有站点的分布式系统状态的非自动化收集或评估。在我们的实验中,我们评估了不同的状态更新间隔和对预测精度的影响。事实证明,与仅本地静态决策相比,即使是稀疏更新也能显着改善生产时间。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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