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Enhanced manufacturing storage management using data mining prediction techniques

机译:使用数据挖掘预测技术增强制造存储管理

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Performing an efficient storage management is a key issue for reducing costs in the manufacturing process. And the first step to accomplish this task is to have good estimations of the consumption of every storage component. For making accurate consumption estimations two main approaches are possible: using past utilization values (time series); and/or considering other external factors affecting the spending rates. Time series forecasting is the most common approach due to the fact that not always is clear the causes affecting consumption. Several classical methods have extensively been used, mainly ARIMA models. As an alternative, in this paper it is proposed to use prediction techniques based on the data mining realm. The use of consumption prediction algorithms clearly increases the storage management efficiency. The predictors based on data mining can offer enhanced solutions in many cases.
机译:执行高效的存储管理是降低制造过程中成本的关键问题。并且完成此任务的第一步是对每个存储组件的消耗进行良好的估计。为准确的消耗估计来说,可以使用两种主要方法:使用过去的利用率(时间序列);和/或考虑影响支出率的其他外部因素。时间序列预测是最常见的方法,因为并不总是清楚影响消费的原因。几种古典方法广泛使用,主要是Arima模型。作为替代方案,本文提出了基于数据挖掘领域使用预测技术。消耗预测算法的使用显然提高了存储管理效率。基于数据挖掘的预测器可以在许多情况下提供增强的解决方案。

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