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Improving Data Consistency in Production Control by Adaptation of Data Mining Algorithms

机译:通过改编数据挖掘算法提高生产控制中的数据一致性

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Manufacturing companies are increasingly exposed to volatile market conditions. In this environment, ensuring a reliable adherence to promised delivery dates, allows for a considerable competitive advantage. However, due to dynamically changing production circumstances and high varieties in production programs, manufacturing companies regularly fail in reaching this logistical target. A main prerequisite for mastering this challenge are excellent Production Planning and Control processes. The quality of transactional data of production processes are a commonly ignored root cause for inadequate detailed scheduling plans although a vast volume of these data are used for updating production job statuses and short-term production plans, deriving conclusions for immediate control interventions as well as monitoring production efficiency. Typically, measures for improving data quality involve implementing integrity constraints in databases and setting up data quality processes as well as dedicated organizational structures. Evidently, these classic approaches do not successfully prevent manufacturing companies from dealing with inadequate data quality in their PPC processes. Consequently, this paper presents a model for increasing the quality of data relevant for production processes by adapting data mining algorithms. This new approach allows to estimate probable values for typical data inconsistencies in transactional data of PPC processes. Several adapted algorithms are benchmarked on real-world data sets of German mid-sized manufacturing companies and evaluated towards their power and efficiency.
机译:制造业公司越来越多地处于动荡的市场环境中。在这种环境下,确保可靠地遵守承诺的交货日期可带来巨大的竞争优势。但是,由于生产环境的动态变化和生产程序的多样性,制造公司经常无法达到这一物流目标。应对这一挑战的主要前提是出色的生产计划和控制流程。生产流程交易数据的质量通常是导致详细计划计划不足的根本原因,尽管这些数据中的大量用于更新生产作业状态和短期生产计划,从而得出立即控制干预措施和监控的结论生产效率。通常,用于提高数据质量的措施包括在数据库中实施完整性约束,并建立数据质量过程以及专用的组织结构。显然,这些经典方法无法成功地阻止制造公司在其PPC流程中处理数据质量不足的问题。因此,本文提出了一种通过调整数据挖掘算法来提高与生产过程相关的数据质量的模型。这种新方法允许估算PPC流程的事务数据中典型数据不一致的可能值。几种经过改进的算法以德国中型制造公司的真实数据集为基准,并对其能力和效率进行了评估。

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